Tesis sobre el tema "Hybrid classifier"
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Vishnampettai, Sridhar Aadhithya. "A Hybrid Classifier Committee Approach for Microarray Sample Classification". University of Akron / OhioLINK, 2011. http://rave.ohiolink.edu/etdc/view?acc_num=akron1312341058.
Texto completoNair, Sujit S. "Coarse Radio Signal Classifier on a Hybrid FPGA/DSP/GPP Platform". Thesis, Virginia Tech, 2009. http://hdl.handle.net/10919/76934.
Texto completoMaster of Science
Zimit, Sani Ibrahim. "Hybrid approach to interpretable multiple classifier system for intelligent clinical decision support". Thesis, University of Reading, 2013. http://ethos.bl.uk/OrderDetails.do?uin=uk.bl.ethos.631699.
Texto completoLou, Wan Chan. "A hybrid model of tree classifier and neural network for university admission recommender system". Thesis, University of Macau, 2008. http://umaclib3.umac.mo/record=b1783609.
Texto completoToubakh, Houari. "Automated on-line early fault diagnosis of wind turbines based on hybrid dynamic classifier". Thesis, Lille 1, 2015. http://www.theses.fr/2015LIL10100/document.
Texto completoThis thesis addresses the problem of automatic detection and isolation of drift-like faults in wind turbines (WTs). The main aim of this thesis is to develop a generic on-line adaptive machine learning and data mining scheme that integrates drift detection and isolation mechanism in order to achieve the simple and multiple drift-like fault diagnosis in WTs, in particular pitch system and power converter. The proposed scheme is based on the decomposition of the wind turbine into several components. Then, a classifier is designed and used to achieve the diagnosis of faults impacting each component. The goal of this decomposition into components is to facilitate the isolation of faults and to increase the robustness of the scheme in the sense that when the classifier related to one component is failed, the classifiers for the other components continue to achieve the diagnosis for faults in their corresponding components. This scheme has also the advantage to take into account the WT hybrid dynamics. Indeed, some WT components (as pitch system and power converter) manifest both discrete and continuous dynamic behaviors. In each discrete mode, or a configuration, different continuous dynamics are defined
Rasheed, Sarbast. "A Multiclassifier Approach to Motor Unit Potential Classification for EMG Signal Decomposition". Thesis, University of Waterloo, 2006. http://hdl.handle.net/10012/934.
Texto completoThis thesis addresses the process of EMG signal decomposition by developing an interactive classification system, which uses multiple classifier fusion techniques in order to achieve improved classification performance. The developed system combines heterogeneous sets of base classifier ensembles of different kinds and employs either a one level classifier fusion scheme or a hybrid classifier fusion approach.
The hybrid classifier fusion approach is applied as a two-stage combination process that uses a new aggregator module which consists of two combiners: the first at the abstract level of classifier fusion and the other at the measurement level of classifier fusion such that it uses both combiners in a complementary manner. Both combiners may be either data independent or the first combiner data independent and the second data dependent. For the purpose of experimentation, we used as first combiner the majority voting scheme, while we used as the second combiner one of the fixed combination rules behaving as a data independent combiner or the fuzzy integral with the lambda-fuzzy measure as an implicit data dependent combiner.
Once the set of motor unit potential trains are generated by the classifier fusion system, the firing pattern consistency statistics for each train are calculated to detect classification errors in an adaptive fashion. This firing pattern analysis allows the algorithm to modify the threshold of assertion required for assignment of a motor unit potential classification individually for each train based on an expectation of erroneous assignments.
The classifier ensembles consist of a set of different versions of the Certainty classifier, a set of classifiers based on the nearest neighbour decision rule: the fuzzy k-NN and the adaptive fuzzy k-NN classifiers, and a set of classifiers that use a correlation measure as an estimation of the degree of similarity between a pattern and a class template: the matched template filter classifiers and its adaptive counterpart. The base classifiers, besides being of different kinds, utilize different types of features and their performances were investigated using both real and simulated EMG signals of different complexities. The feature sets extracted include time-domain data, first- and second-order discrete derivative data, and wavelet-domain data.
Following the so-called overproduce and choose strategy to classifier ensemble combination, the developed system allows the construction of a large set of candidate base classifiers and then chooses, from the base classifiers pool, subsets of specified number of classifiers to form candidate classifier ensembles. The system then selects the classifier ensemble having the maximum degree of agreement by exploiting a diversity measure for designing classifier teams. The kappa statistic is used as the diversity measure to estimate the level of agreement between the base classifier outputs, i. e. , to measure the degree of decision similarity between the base classifiers. This mechanism of choosing the team's classifiers based on assessing the classifier agreement throughout all the trains and the unassigned category is applied during the one level classifier fusion scheme and the first combiner in the hybrid classifier fusion approach. For the second combiner in the hybrid classifier fusion approach, we choose team classifiers also based on kappa statistics but by assessing the classifiers agreement only across the unassigned category and choose those base classifiers having the minimum agreement.
Performance of the developed classifier fusion system, in both of its variants, i. e. , the one level scheme and the hybrid approach was evaluated using synthetic simulated signals of known properties and real signals and then compared it with the performance of the constituent base classifiers. Across the EMG signal data sets used, the hybrid approach had better average classification performance overall, specially in terms of reducing the number of classification errors.
McCool, Christopher Steven. "Hybrid 2D and 3D face verification". Thesis, Queensland University of Technology, 2007. https://eprints.qut.edu.au/16436/1/Christopher_McCool_Thesis.pdf.
Texto completoMcCool, Christopher Steven. "Hybrid 2D and 3D face verification". Queensland University of Technology, 2007. http://eprints.qut.edu.au/16436/.
Texto completoAl-Ani, Ahmed Karim. "An improved pattern classification system using optimal feature selection, classifier combination, and subspace mapping techniques". Thesis, Queensland University of Technology, 2002.
Buscar texto completoAla'raj, Maher A. "A credit scoring model based on classifiers consensus system approach". Thesis, Brunel University, 2016. http://bura.brunel.ac.uk/handle/2438/13669.
Texto completoNasser, Al-Fayadh. "Efficient hybrid classified vector quantisation technique for image compression with application to medical images". Thesis, Liverpool John Moores University, 2008. http://ethos.bl.uk/OrderDetails.do?uin=uk.bl.ethos.485732.
Texto completoEspaña, Boquera Salvador. "Contributions to the joint segmentation and classification of sequences (My two cents on decoding and handwriting recognition)". Doctoral thesis, Universitat Politècnica de València, 2016. http://hdl.handle.net/10251/62215.
Texto completo[ES] Este trabajo se centra en problemas (como reconocimiento automático del habla (ASR) o de escritura manuscrita (HTR)) que cumplen: 1) pueden representarse (quizás aproximadamente) en términos de secuencias unidimensionales, 2) su resolución implica descomponer la secuencia en segmentos que se pueden clasificar en un conjunto finito de unidades. Las tareas de segmentación y de clasificación necesarias están tan intrínsecamente interrelacionadas ("paradoja de Sayre") que deben realizarse conjuntamente. Nos hemos inspirado en lo que algunos autores denominan "La trilogía exitosa", refereido a la sinergia obtenida cuando se tiene: - un buen formalismo, que dé lugar a buenos algoritmos; - un diseño e implementación ingeniosos y eficientes, que saquen provecho de las características del hardware; - no descuidar el "saber hacer" de la tarea, un buen preproceso y el ajuste adecuado de los diversos parámetros. Describimos y estudiamos "modelos generativos en dos etapas" sin reordenamientos (TSGMs), que incluyen no sólo los modelos ocultos de Markov (HMM), sino también modelos segmentales (SMs). Se puede obtener un decodificador de "dos pasos" considerando a la inversa un TSGM introduciendo no determinismo: 1) se genera un grafo acíclico dirigido (DAG) y 2) se utiliza conjuntamente con un modelo de lenguaje (LM). El decodificador de "un paso" es un caso particular. Se formaliza el proceso de decodificación con ecuaciones de lenguajes y semianillos, se propone el uso de redes de transición recurrente (RTNs) como forma normal de gramáticas de contexto libre (CFGs) y se utiliza el paradigma de análisis por composición de manera que el análisis de CFGs resulta una extensión del análisis de FSA. Se proponen algoritmos de composición de transductores que permite el uso de RTNs y que no necesita recurrir a composición de filtros incluso en presencia de transiciones nulas y semianillos no idempotentes. Se propone una extensa revisión de LMs y algunas contribuciones relacionadas con su interfaz, con su representación y con la evaluación de LMs basados en redes neuronales (NNLMs). Se ha realizado una revisión de SMs que incluye SMs basados en combinación de modelos generativos y discriminativos, así como un esquema general de tipos de emisión de tramas y de SMs. Se proponen versiones especializadas del algoritmo de Viterbi para modelos de léxico y que manipulan estados activos sin recurrir a estructuras de tipo diccionario, sacando provecho de la caché. Se ha propuesto una arquitectura "dataflow" para obtener reconocedores a partir de un pequeño conjunto de piezas básicas con un protocolo de serialización de DAGs. Describimos generadores de DAGs que pueden tener en cuenta restricciones sobre la segmentación, utilizar modelos segmentales no limitados a HMMs, hacer uso de los decodificadores especializados propuestos en este trabajo y utilizar un transductor de control que permite el uso de unidades dependientes del contexto. Los decodificadores de DAGs hacen uso de un interfaz bastante general de LMs que ha sido extendido para permitir el uso de RTNs. Se proponen también mejoras para reconocedores "un paso" basados en algoritmos especializados para léxicos y en la interfaz de LMs en modo "bunch", así como su paralelización. La parte experimental está centrada en HTR en diversas modalidades de adquisición (offline, bimodal). Hemos propuesto técnicas novedosas para el preproceso de escritura que evita el uso de heurísticos geométricos. En su lugar, utiliza redes neuronales. Se ha probado con HMMs hibridados con redes neuronales consiguiendo, para la base de datos IAM, algunos de los mejores resultados publicados. También podemos mencionar el uso de información de sobre-segmentación, aproximaciones sin restricción de un léxico, experimentos con datos bimodales o la combinación de HMMs híbridos con reconocedores de tipo holístico.
[CAT] Aquest treball es centra en problemes (com el reconeiximent automàtic de la parla (ASR) o de l'escriptura manuscrita (HTR)) on: 1) les dades es poden representar (almenys aproximadament) mitjançant seqüències unidimensionals, 2) cal descompondre la seqüència en segments que poden pertanyer a un nombre finit de tipus. Sovint, ambdues tasques es relacionen de manera tan estreta que resulta impossible separar-les ("paradoxa de Sayre") i s'han de realitzar de manera conjunta. Ens hem inspirat pel que alguns autors anomenen "trilogia exitosa", referit a la sinèrgia obtinguda quan prenim en compte: - un bon formalisme, que done lloc a bons algorismes; - un diseny i una implementació eficients, amb ingeni, que facen bon us de les particularitats del maquinari; - no perdre de vista el "saber fer", emprar un preprocés adequat i fer bon us dels diversos paràmetres. Descrivim i estudiem "models generatiu amb dues etapes" sense reordenaments (TSGMs), que inclouen no sols inclouen els models ocults de Markov (HMM), sinò també models segmentals (SM). Es pot obtindre un decodificador "en dues etapes" considerant a l'inrevés un TSGM introduint no determinisme: 1) es genera un graf acíclic dirigit (DAG) que 2) és emprat conjuntament amb un model de llenguatge (LM). El decodificador "d'un pas" en és un cas particular. Descrivim i formalitzem del procés de decodificació basada en equacions de llenguatges i en semianells. Proposem emprar xarxes de transició recurrent (RTNs) com forma normal de gramàtiques incontextuals (CFGs) i s'empra el paradigma d'anàlisi sintàctic mitjançant composició de manera que l'anàlisi de CFGs resulta una lleugera extensió de l'anàlisi de FSA. Es proposen algorismes de composició de transductors que poden emprar RTNs i que no necessiten recorrer a la composició amb filtres fins i tot amb transicions nul.les i semianells no idempotents. Es proposa una extensa revisió de LMs i algunes contribucions relacionades amb la seva interfície, amb la seva representació i amb l'avaluació de LMs basats en xarxes neuronals (NNLMs). S'ha realitzat una revisió de SMs que inclou SMs basats en la combinació de models generatius i discriminatius, així com un esquema general de tipus d'emissió de trames i altre de SMs. Es proposen versions especialitzades de l'algorisme de Viterbi per a models de lèxic que permeten emprar estats actius sense haver de recórrer a estructures de dades de tipus diccionari, i que trauen profit de la caché. S'ha proposat una arquitectura de flux de dades o "dataflow" per obtindre diversos reconeixedors a partir d'un xicotet conjunt de peces amb un protocol de serialització de DAGs. Descrivim generadors de DAGs capaços de tindre en compte restriccions sobre la segmentació, emprar models segmentals no limitats a HMMs, fer us dels decodificadors especialitzats proposats en aquest treball i emprar un transductor de control que permet emprar unitats dependents del contexte. Els decodificadors de DAGs fan us d'una interfície de LMs prou general que ha segut extesa per permetre l'ús de RTNs. Es proposen millores per a reconeixedors de tipus "un pas" basats en els algorismes especialitzats per a lèxics i en la interfície de LMs en mode "bunch", així com la seua paral.lelització. La part experimental està centrada en el reconeiximent d'escriptura en diverses modalitats d'adquisició (offline, bimodal). Proposem un preprocés d'escriptura manuscrita evitant l'us d'heurístics geomètrics, en el seu lloc emprem xarxes neuronals. S'han emprat HMMs hibridats amb xarxes neuronals aconseguint, per a la base de dades IAM, alguns dels millors resultats publicats. També podem mencionar l'ús d'informació de sobre-segmentació, aproximacions sense restricció a un lèxic, experiments amb dades bimodals o la combinació de HMMs híbrids amb classificadors holístics.
España Boquera, S. (2016). Contributions to the joint segmentation and classification of sequences (My two cents on decoding and handwriting recognition) [Tesis doctoral no publicada]. Universitat Politècnica de València. https://doi.org/10.4995/Thesis/10251/62215
TESIS
Premiado
Westwood, Jill. "Hybrid creatures : mapping the emerging shape of art therapy education in Australia". Thesis, Goldsmiths College (University of London), 2010. http://research.gold.ac.uk/6318/.
Texto completoKonstantaras, Anthony J. "Development and analysis of hybrid adaptive neuro-fuzzy inference systems for the recognition of weak signals preceding earthquakes". Thesis, University of Central Lancashire, 2004. http://clok.uclan.ac.uk/19072/.
Texto completoWestwood, Jill. "Hybrid creatures : mapping the emerging shape of art therapy education in Australia". Thesis, Goldsmiths College (University of London), 2010. http://handle.uws.edu.au:8081/1959.7/506680.
Texto completoArmstrong, Keith M. "Towards an Ecosophical Praxis of New Media Space design". Thesis, QUT, 2003. https://eprints.qut.edu.au/9073/1/PHDTHESISKMAsmall.pdf.
Texto completoLin, Cheng-Lung y 林政龍. "Internet Traffic Classification based on Hybrid Naive Bayes HMMs Classifier". Thesis, 2008. http://ndltd.ncl.edu.tw/handle/59142288452653192129.
Texto completo國立臺灣科技大學
資訊工程系
96
To deal with the large network infrastructure, we must rely on an automatic network management system. Traditionally, most of the firewall simply use the port number of the packets to identify abnormal network traffic. Furthermore, some of them observe the characteristic in application layer to identify abnormal network traffic such as the payload of a packet. However, the traditional security mechanisms encounter difficulties with the increasing popularity of encrypted protocols. Recently, some related researches which can identify application protocol by some restricted characteristics and behaviors in transition layer of TCP/IP model after encryption. Therefore, we combine and implement two models which are Naive Bayes and Hidden Markov Models (HMMs) as an automatic system and use the limited information of encrypted packets to infer and classify the application protocol behavior. Generally speaking, HMMs are relatively good to estimate the potential relationship with temporal data. Naive Bayes is simple, fast, and effective. It is usually used for dealing multidimension dataset in lots of cases. In this thesis, we propose hybrid Naive Bayes HMMs classifier as a fundamental framework to infer application protocol behavior in encrypted network traffic. The hybrid model uses the temporal property of HMMs to inspect the relation between the packets and employs Naive Bayes to character the statistical signature. In this study, our approach can not only identify network behavior in encrypted network traffic, but also employ the temporal property to raise the accuracy. It can be applied to infer application protocol and detects the abnormal behavior. Comparing to related researches, our method only uses a few features to classify multi-flow protocol and get respectable performance.
He, Chun Lei. "Error analysis of a hybrid multiple classifier system for recognizing unconstrained handwritten numerals". Thesis, 2005. http://spectrum.library.concordia.ca/8493/1/MR10287.pdf.
Texto completoChen, Jyun-Kai y 陳俊愷. "CNN-SVM Hybrid Classifier: Multi-label Classification in K-12 Cross-topic Problem". Thesis, 2017. http://ndltd.ncl.edu.tw/handle/6tk9hq.
Texto completo國立中央大學
資訊工程學系
105
In the tide of modern technology, there are many significant innovations in human life. The development of the Internet has led to the more rapid delivery of information. From the learning side, the new learning style is gradually changing the habit of traditional learning. In the K-12 system, the question-driven learning is an effective way of learning. The students can confirm their learning status through question exercises and understand the knowledge and concepts expressed by the problem. In order to provide the learning information for the learners, a good learning material management and classification has become an important task. To classify the question according to the knowledge points covered by them so that the user can get the appropriate questions convenient. And then achieve a better learning efficiency. In this thesis, we continue studies which the classification system of K-12 learning materials. In addition to planning database for learning materials, and proposed cross-topic classification system. The traditional way of learning is often for each different single point of knowledge to learn. In the original system for such problems have a good classification performance. Some question of the large entrance exam and advanced question have the different concept of cross-topic. Therefore, we extend the original Convolutional Neural Network (CNN) and support vector machine (SVM) hybrid classifier and proposed multi-label classification model for cross-topic questions. Finally, we compare the strategies proposed by classification system studies of K-12 learning materials with our multi-label classification model. The experiment shows that the multi-label classification model can outperform original strategies of classification.
Zhang, Ping. "Reliable recognition of handwritten digits using a cascade ensemble classifier system and hybrid features". Thesis, 2006. http://spectrum.library.concordia.ca/8904/1/NR16288.pdf.
Texto completoTzu-Lin, Ho y 何自琳. "A Hybrid Rough Set Classifier based on Multi-Attributes Selection Method for Identifying Financial Distress of Company". Thesis, 2014. http://ndltd.ncl.edu.tw/handle/85063164060011711706.
Texto completo國立雲林科技大學
資訊管理系
102
After several decades, the prediction of financial distress is an important and challenging issue. Many researchers have constructed models to deal with bankruptcy prediction and financial crisis, including conventional approaches and artificial intelligence (AI) techniques. Financial distress information will influence the investors’ decision, and the investors depend on the analyst’s opinions and their subjective judgments, it will cause investors/decision-makers to make the wrong decision. Therefore, the objectives of this study is to construct a novel model, which can provide the rules of financial situation of company to decision-makers as references. This study employed six attribute selection methods to reduce high dimension data, which contain: (1) Chi square, (2) Information gain, (3) Discriminant analysis, (4) Logistic regression, (5) Support vector machine, and (6) the proposed Join method, then this study utilized rough set classifier to classify financial distress. For verifying proposed model, the TEJ dataset is employed as experimental data, and compare with Decision tree, Multilayer perceptron, Support vector machine in Type I and Type II error and accuracy. The experimental result shows that Logistic regression and Chi square attribute selection method combined rough set classifier outperforms the listing models in Type I and Type II error and accuracy.
Rodic, Daniel. "A Hybrid heuristic-exhaustive search approach for rule extraction". Diss., 2001. http://hdl.handle.net/2263/25095.
Texto completoDissertation (MSc)--University of Pretoria, 2007.
Computer Science
unrestricted
Chen, Tian-Xiang y 陳天祥. "Using the Hybrid of Disparity Map and Multi-Classifier for Road Surface Detection in Outdoor Piloting of Autonomous Land Vehicles". Thesis, 2009. http://ndltd.ncl.edu.tw/handle/aysh4y.
Texto completo國立臺北科技大學
電腦與通訊研究所
97
Similar to the function of human eyes, autonomous land vehicle (ALV) uses camera to acquire road information. In this paper, we adopt disparity map (DM) to detect ALV''s march path and various obstacles if may face to. Then we develop several road surface voters to recognize what kind of road surface the ALV drives on. Finally, according to the information we collected, the best navigation can be achieved. After experimenting with our ALV in an outdoor road without pavement markings, the proposed algorithms really work well.
Chen, Min-Hsien y 陳民弦. "A Hybrid Classifier for Type 2 Diabetes Based on Decision Tree, Probabilistic Model and Artificial Neural Network- An Empirical Study of Taichung Tzu-chi General Hospital". Thesis, 2017. http://ndltd.ncl.edu.tw/handle/83336301293216144685.
Texto completo國立中興大學
資訊管理學系所
105
The National Health Insurance of Taiwan has been gained 70% support from the peoples since 1995. The NHI costs is increasing year by year and keeps shortage of funds from 2007 to 2017, that seems NHI has high utilization rate. Taiwan''s elderly population rate is increasing, and it will account for 20% of total population in 2025. With the increase of the elderly population, the burden of health care costs gets more and more .In 2016, annual top ten causes of death show that Diabetes was within the top 5 during 1995 to 2016. To achieve early prevention, early treatment, and find out related factors of Diabetes for clinical diagnosis, this study uses data mining algorithms to establish prediction model of Type II Diabetes mellitus. The cases of study collected from Taichung Tzu Chi Hospital including those patients with and without diabetes during 2009 to 2016, which have total 1,326 patients .The cases of study were analyzed by Decision tree, Neural networks, and Naive Bayesian algorithms. The result shows that urine albumin-creatinine ratio, age, triglycerides, creatinine, high density cholesterol and gender are important factors in the model. While building a model without glucose AC and HbA1C, the accuracy is 75% and the area under the curve is above 0.78. With glucose AC and Hba1c, the accuracy is 98%, the area under the curve is above 0.97. These models have good prediction ability both in diabetic and non-diabetic subjects. The study combined data mining techniques with medical data building prediction models, provide the knowledge of the real impact factors of disease and the integration of medical information and clinical applications.
Hsu, Hsing-Yun y 許馨勻. "A Hybrid Artificial Neural Network and Decision Tree Based Classifier to Vital Signs of Cardiopulmonary Resuscitation and Intensive Care Unit Patients in Taichung Tzu Chi Hospital". Thesis, 2016. http://ndltd.ncl.edu.tw/handle/34222358377480042639.
Texto completo國立中興大學
資訊管理學系所
104
After admitted to the hospital, many patients need CPR or being transferred to ICU for observation with deteriorating conditions due to various reasons. The seven vital signs including body temperature, respiration, pulse, systolic blood pressure, diastolic blood pressure, degree of blood oxygen saturation and pain index are the most basic signals of the physical conditions and are the best indicating indexes that can reflect whether the body functions normally at the first moment. The visual checks are used as the main judgement basis in most of the hospitals currently. Because that the medical staff are not able to take care of patients all day with all attentions, so that the conditions of the patients often turn deteriorated due to the negligence of busy medical staff. Since the technology is so advanced nowadays, that will be helpful in reducing the deteriorating risk of patients effectively with the help of the information technology to assist medical staff to prejudge and to be alerted instantly. This study focuses on the last vital sign index right before deterioration to investigate the best combinations of reflecting abnormal changes of the body functions. The vital signs data of those patients that were treated with CPR and transferred to the ICU from the general wards during the hospitalization between January 1, 2013 and May 30, 2015 in Taichung Tzu Chi Hospital are used for analysis. Meanwhile the data mining methods (decision tree: CART, ID3, C4.5, CHAID and neural network) are applied to analyze the rules of abnormal vital signs. This study is divided into three specific aims: first, to verify the best data mining algorithms for vital signs data analysis with the empirical results; second, to find out the abnormal signs that cause patients to be treated with CPR or transferred to ICU with the output results of the empirical analysis, to explore the most frequently occurring abnormal combinations and hopefully to assist the physicians and the nurses to make effective and accurate clinical judgements; third, to investigate whether the MEWS is effective in early alerting the changes of patient’s conditions with the decision tree CHAID analysis. With the decision tree analysis, there are three findings as the followings: high respiration rate and low diastolic blood pressure are detected when body temperature is abnormal; high systolic blood pressure and low diastolic blood pressure are found when pulse is abnormal; and, low diastolic blood pressure and high body temperature as well as high pulse are accompanied with abnormal respiration rates. These classifications mentioned above are commonly found in patients who are treated with CPR. For those patients who need to be transferred to ICU, low heartbeat rate and high diastolic pressure are detected when systolic blood pressure is abnormal, and, low body temperature and high systolic blood pressure correlate with abnormal diastolic blood pressure. The correct rates of neural network are higher than decision tree mostly from the analyzed empirical results with analysis software such as WEKA and STATISTICA. It is found that the neural network is good for vital signs data. With the findings by decision tree CHAID analysis—MEWS, the analyzed data of this study are not useful for condition warnings with MEWS scores. Since most of the analyzed scores are less than 5, the false alarm rate may increase when the score is set too low. Whereas, those patients who really need cares may be neglected if the score is set too high. The study suggests that the previous standards followed are valid and may predict the conditions more precisely with adjustments. Therefore, we integrate the clinical standards adopted by Taichung Tzu Chi Hospital, MEWS score criteria, the decision tree and MEWS analyses used in this study to setup different judgement criteria for different patients who may be transferred to ICU and treated with CPR with the modified MEWS score criteria.
Tzu-ChienLien y 連子建. "Feature selection methods with hybrid discretizationfor naive Bayesian classifiers". Thesis, 2012. http://ndltd.ncl.edu.tw/handle/95105249459952662675.
Texto completo國立成功大學
資訊管理研究所
100
Naïve Bayesian classifier is widely used for classification problems, because of its computational efficiency and competitive accuracy. Discretization is one of the major approaches for processing continuous attributes for naïve Bayesian classifier. Hybrid discretization sets the method for discretizing each continuous attribute individually. A previous study found that hybrid discretization is a better approach to improve the performance of the naïve Bayesian classifier than unified discretization. Selective naïve Bayes, abbreviated as SNB, is an important feature selection method for naïve Bayesian classifiers. It improves the efficiency and the accuracy by reducing redundant and irrelevant attributes. The object of this study is to develop methods composed of hybrid discretization and feature selection, and three methods for this purposed are proposed. Method one that is the most efficient executes hybrid discretization after feature selection. Methods two and three generally perform hybrid discretization first followed by feature selection. Method two transforms continuous attributes without considering discrete attributes, while method three determines the best discretization methods for each continuous attribute by searching all possibilities. The experimental results shows that in general, the three methods with hybrid discretization and feature selection all have better performance than the method with unified discretization and feature selection, and method three is the best.
Chuan-YuTsai y 蔡荃宇. "Hybrid discretization methods for naive Bayesian classifiers with priors". Thesis, 2013. http://ndltd.ncl.edu.tw/handle/57897752508508533512.
Texto completo國立成功大學
資訊管理研究所
101
Classification is a kind of method to deal with the data in the realm of Data Mining. Among all classifier, naïve Bayesian classifier takes the advantage of fast processing along with the simple theory. The nature of the naïve Bayesian classifier is suitable for dealing with data having discrete attribute, however, practically data is likely to be continuous, thus, the selection of proper method of discretization is the key to raise the accuracy of classification. Hybrid discretization method is capable of using proper discretization method for every continuous attribute adaptively, which leads to a higher accuracy of classification. Prior distribution can offer the essential knowledge of parameter chosen among the process of classification, with the help, big promotion of accuracy in classification is likely to be achieved based on the fact that the classification is closer to the concept data. Since the announcement of the hybrid discretization is just recent before long, there is no any experiment showing the result in the combination use of hybrid discretization and prior distribution. Out of the reason, the attempt of this research is to conduct an experiment on the use of combination of hybrid discretization and prior distribution, in the hope of promoting the accuracy of classification by using naïve Bayesian classifier. I propose three modes of combination in this research; HDNB1 is conservative among others since it casts the discretization on continuous attribute before carry out the process of prior. HDNB2 and HDNB3 have the same steps on combined hybrid discretization and prior distribution. HDNB2 takes each attribute by order of its importance into consideration, while the process of discretization in the HDNB3 regards all the attributes.
Wang, I.-Shu y 王怡書. "The construction of multiple-class data based on hybrid classifiers". Thesis, 2010. http://ndltd.ncl.edu.tw/handle/15289623995260957870.
Texto completo國立勤益科技大學
工業工程與管理系
98
This paper utilizes Information Gain to extract important features, and compares the performances among combined decision tree (C5) and artificial neural network(ANN)、hybrid support vector machine(SVM) and C5、hybrid bayesian network(BN) and C5. Three hybrid classifiers are developed in this study and the highest accuracy is 94.05% in the multiple–class E.coli dataset. In order to explain this research is widely applicable and is not limited to particular field, we again verify this research architecture on Parkinson dataset and the accuracy is up to 95.38%.
Cheng, Shang-Wen y 鄭尚文. "Mode choice models with hybrid decision rules - classified by traveller''s attributes". Thesis, 1996. http://ndltd.ncl.edu.tw/handle/38559191928194626441.
Texto completo國立成功大學
交通管理(科學)學系
84
Understanding the process of decision-making by which an individual chooses amode is important for researchers in constructing disaggregate behaviormodels. Most of the existed researches assumed that all individuals use thesame decision rule,or seperated them by an attribute and, futher, explainedone''s decision rule by this attribute.In this study,we try to use two kinds ofchoice model:compensatory model and non- compensatory model to make a researchabout one''s choice behavior.Using two classified rules:outer-classificationand inner-classification,this study develops a multi-attribute decision tree,and according to the classified result of this decision tree,we can explainone''s decision rule(compensatory or non-compensatory) under different kinds ofsocial background and travel circumstance.Using the intercity travel data of Taiwan in 1996, this study built the hybridchoice models including compensatory and non-compensatory decision rules. Multinomial logit (MNL) model and Elimination by aspects (EBA) model were usedto construct these two kinds of decision rule models in this study, and thepredictive strength and percent correctly predicted were used asmeasurements. The empirical results found the following conclusions:1.Classified models have better statistic performance than non-classifiedmodels. 2.Non-coessential groups will use different decision rules.Travellerswho are younger, with lower income, on non-bussiness trip,or not in a hurrytend to use compensatory decision rule.Contrastly, travellers who are older,with higher income, on bussiness trip , or in a hurry tend to usenon-compensatory decision rule. 3.Non-coessetial groups differ in modalchoice.Most of travellers who tend to use compensatory decision rule choosetrain or bus.Contrastly, travellers who tend to use non-compensatory decisionrule choose airplane mostly. 4.As to the viewpoint of modal attributes, travellers are different from each other.Cost and convenience are moreimportant to those who tend to use compensatory decision rule.In contrast,travellers who tend to use non- compensatory decision rule consider timespent preferentially.
Yang, Kuo-Hua y 楊國樺. "Intrusion Detection Systems based on Hybrid Hidden Markov Models and Naïve Bayes Classifiers". Thesis, 2006. http://ndltd.ncl.edu.tw/handle/gwdh9v.
Texto completo國立臺灣科技大學
資訊工程系
94
Under the internet and attacks modes are complicated environment day by day now, the general network management adopts the firewall as the guarantee measure of the information safety. Generally speaking, Hidden Markov Models detected intrusion detection for more, because it is mostly sequence datasets, especially the anomaly detection systems that we can set up a normal behavior models and the datasets collection of the normal behavior model come from it is system call that generated by users. General on the other hand the Hidden Markov Models model is relatively good to producing the pure behavior of measuring the symbol under every state, so our using simple Hidden Markov Models. In a lot of cases, the Na¨ıve Bayes Classifiers are for dealing multidimension datasets, there are simple , fast , and effective characteristics. Among this page thesis, we propose methods combine with Hiddne Markov Models and Na¨ıve Bayes Classifiers. Finally, in the part of the experiment, our system will use KDD Cup 99 datasets. After assessing, our system has better detection rate toward U2R and R2L connections than KDD Cup 99 winner.
Chia-YuYao y 姚佳佑. "Parameter setting methods of hybrid priors for naïveBayesian classifiers with multinomial model in gene sequence data". Thesis, 2015. http://ndltd.ncl.edu.tw/handle/89805330184983862274.
Texto completo國立成功大學
資訊管理研究所
103
Due to the development of metagenomics and sequencing, analysts pay more attention to the effectiveness of classification algorithms in processing high dimensional gene sequence data. Naïve Bayesian classifiers are a popular tool for classifying high dimensional gene sequence data because of its computational efficiency and easy implementation. Setting proper parameters for priors have been shown to be an effective way for improving the performance of the naïve Bayesian classifier with multinomial models, called multinomial naïve Bayesian classifiers, in gene sequence classification. Since the number of class values in a gene sequence data set is huge, and the number of instances for many class values is less than ten, the possibility of improving the classification accuracy of gene sequence data is generally limited. In this study, the covariance matrices for features are first calculated from available gene sequence data. Then several ways are proposed to set and search the parameters of Dirichlet priors for the naïve Bayesian classifiers with multinomial model. The experimental results on two gene sequence sets demonstrate that our proposed methods can improve the prediction accuracy of the multinomial naïve Bayesian classifier in acceptable computational time. The generalized Dirichlet priors are then introduced for the class values with low accuracy and large number of instances. The experimental results on the same gene sequence sets show that the improvement on prediction accuracy is limited because the number of class values is huge and the number of instances in many class values is small.
Jun-JiePeng y 彭俊傑. "Hybrid Energy Efficient Dynamic Bandwidth Allocation with Modified Two-Stage Control Mechanism to Satisfy Classified Delay Constraints in TDM-PONs". Thesis, 2015. http://ndltd.ncl.edu.tw/handle/21996397725709672860.
Texto completoUttam, Kumar *. "Algorithms For Geospatial Analysis Using Multi-Resolution Remote Sensing Data". Thesis, 2012. http://etd.iisc.ernet.in/handle/2005/2280.
Texto completo(7480409), RISHIKESH MAHESH BAGWE. "MODELING AND ENERGY MANAGEMENT OF HYBRID ELECTRIC VEHICLES". Thesis, 2019.
Buscar texto completo(10702884), Mohammed Naziru Issahaq. "HYBRID CUTTING EXTRUSION OF COMMERCIALLY PURE ALUMINUM ALLOYS". Thesis, 2021.
Buscar texto completoCommercial sheets, strips and wires are currently produced from aluminum alloys by multi-step deformation processing involving rolling and drawing. These processes typically require 10 to 20 steps of deformation, since the plastic strain or reduction that can be imposed in a single step is limited by material workability and process mechanics. In this work, a fundamentally different, single-step approach is demonstrated for producing these aluminum products using machining-based deformation that also enables higher material workability in the formed product. Two process routes are proposed: 1) chip formation by Free Machining (FM), and 2) constrained chip formation by Hybrid Cutting Extrusion (HCE).
Using the very soft and highly ductile commercially pure aluminum alloys as representative systems, various material flow transitions in response to the concentrated shear deformation are observed in FM including plastic instabilities. The flow instabilities usually manifested as folds of varying amplitudes on the unconstrained surface of the chips, are features that limit the desirability of the chip and potential use for strip applications. To suppress these instabilities, two strategies both involving deformation geometry design are outlined: 1) By using large positive rake angle, the flow can be transformed to be more laminar and thus reduces to a substantial amount, the flow instabilities. This also makes it possible for light rolling/drawing reductions to be adopted to smoothen the residual surface folds to improve the strip finish. 2) By using a constraining tool coupled with the cutting tool in what is referred to as HCE, the initial instability that leads to plastic buckling of the material is suppressed, thereby making the flow laminar and thus improve the quality of the strips.
Key property attributes of the chips produced by the shear-based deformation processes such as improved mechanical properties and in the case of HCE, superior surface finish compared to conventional processes of rolling/drawing are highlighted. Implications for commercial manufacture of sheet, strip and wire products are discussed.
(9786557), Maureen Chapman. "An exploration of leadership of registered nurses in clinical settings". Thesis, 2017. https://figshare.com/articles/thesis/An_exploration_of_leadership_of_registered_nurses_in_clinical_settings/13444769.
Texto completo(7036457), Yansong Chen. "THE OPTIMIZATION OF THE ELECTRICAL SYSTEM VOLTAGE RANGE OF MILD HYBRID ELECTRIC VEHICLE". Thesis, 2020.
Buscar texto completoThe optimization of the electrical system voltage range of a mild hybrid electric vehicle is examined in this research study. The objective is to evaluate and propose the optimized vehicle voltage level for the mild hybrid electric vehicle from both technical and economic aspects. The approach is to evaluate the fuel economy improvement from the mild hybrid electric vehicle of various voltage level for the cost benefit study. The evaluation is conducted from the vehicle system level with discussions of components selection for system optimization. Autonomie, a simulation tool widely used by academic and automotive industry, is used for the vehicle simulation and fuel economy evaluation. The cost analysis is based on the system cost factoring in the component cost based forecasted production volume.
The driver for this study is to propose an optimized voltage for the mild hybrid electric vehicle for the vehicle manufacturers and suppliers to standardize the implementation to meet the fuel economy and emission requirements and vehicle power demand. The standardization of the vehicle voltage level can improve design and development efficiency, reusability and reduce cost in developing non-standard voltage levels of the mild hybrid vehicle. The synergy in standardized voltage level for the mild hybrid vehicle can accelerate technology implementation toward mass production to meet regulatory emission and fuel economy requirements.
(7241471), Michael J. Dziekan. "DESIGN OF A HYBRID HYDROGEN-ON-DEMAND AND PRIMARY BATTERY ELECTRIC VEHICLE". Thesis, 2021.
Buscar texto completoIn recent years lithium-ion battery electric vehicles and stored hydrogen electric vehicles have been developed to address the ever-present threat of climate change and global warming. These technologies have failed to achieve profitability at costs consumers are willing to bear when purchasing a vehicle. IFBattery, Inc. has developed a unique primary battery chemistry which simultaneously produces both electricity and hydrogen-on-demand while being both low cost and without carbon emissions. In order to determine the feasibility of the IFBattery chemistry for mobile applications, a prototype golf cart was constructed as the first public application of IFBattery technology. The legacy lead acid batteries of the prototype golf cart were replaced with an IFBattery chemistry tuned to primarily produce hydrogen-on-demand with supplemental electricity. Hydrogen produced by the IFBattery was purified and then fed into a hydrogen fuel cell where electricity was produced to power the vehicle. Electricity from the IFBattery was converted to the common voltage of the golf cart and also used to power the vehicle. Validation testing of the IFBattery powered golf cart demonstrated favorable results as an alternative to both lithium-ion battery and stored hydrogen technologies, and displayed potential for future applications.
(7043354), Himal Agrawal. "Manufacturing and Testing of Composite Hybrid Leaf Spring for Automotive Applications". Thesis, 2019.
Buscar texto completo(9833834), Steven Senini. "The application of hybrid active filter technology to unbalanced traction loads". Thesis, 1999. https://figshare.com/articles/thesis/The_application_of_hybrid_active_filter_technology_to_unbalanced_traction_loads/13424726.
Texto completo(11153853), Tyler A. Swedes. "Electrification of Diesel-Based Powertrains for Heavy Vehicles". Thesis, 2021.
Buscar texto completo(6872132), Doosan Back. "APPLICATIONS OF MICROHEATER/RESISTANCE TEMPERATURE DETECTOR AND ELECTRICAL/OPTICAL CHARACTERIZATION OF METALLIC NANOWIRES WITH GRAPHENE HYBRID NETWORKS". Thesis, 2020.
Buscar texto completo(10701090), Andrew J. Fairbanks. "Novel Composites for Nonlinear Transmission Line Applications". Thesis, 2021.
Buscar texto completoNonlinear transmission lines (NLTLs) provide a solid state alternative to conventional vacuum based high power microwave (HPM) sources. The three most common NLTL implementations are the lumped element, split ring resonator (SRR), and the nonlinear bulk material based NLTLs. The nonlinear bulk material implementation provides the highest power output of the three configurations, though they are limited to pulse voltages less than 50 kV; higher voltages are possible when an additional insulator is used, typically SF6 or dielectric oil, between the nonlinear material and the outer conductor. The additional insulator poses a risk of leaking if structural integrity of the outer conductor is compromised. The desire to provide a fieldable NLTL based HPM system makes the possibility of a leak problematic. The work reported here develops a composite based NLTL system that can withstand voltages higher than 50 kV and not pose a risk of catastrophic failure due to a leak while also decreasing the size and weight of the device and increasing the output power.
Composites with barium strontium titanate (BST) or nickel zinc ferrite (NZF) spherical inclusions mixed in a silicone matrix were manufactured at volume fractions ranging from 5% to 25%. The dielectric and magnetic parameters were measured from 1-4 GHz using a coaxial airline. The relative permittivity increased from 2.74±0.01 for the polydimethylsiloxane (PDMS) host material to 7.45±0.33 after combining PDMS with a 25% volume fraction of BST inclusions. The relative permittivity of BST and NZF composites was relatively constant across all measured frequencies. The relative permeability of the composites increased from 1.001±0.001 for PDMS to 1.43±0.04 for a 25% NZF composite at 1 GHz. The relative permeability of the 25% NZF composite decreased from 1.43±0.05 at 1 GHz to 1.17±0.01 at 4 GHz. The NZF samples also exhibited low dielectric and magnetic loss tangents from 0.005±0.01 to 0.091±0.015 and 0.037±0.001 to 0.20±0.038, respectively, for all volume fractions, although the dielectric loss tangent did increase with volume fraction. For BST composites, all volume fraction changes of at least 5% yielded statistically significant changes in permittivity; no changes in BST volume fraction yielded statistically significant changes in permeability. For NZF composites, the change in permittivity was statistically significant when the volume fraction varied by more than 5% and the change in permeability was statistically significant for variations in volume fraction greater than 10%. The DC electrical breakdown strength of NZF composites decreased exponentially with increasing volume fraction of NZF, while BST composites exhibited no statistically significant variation with volume fraction.
For composites containing both BST and NZF, increasing the volume fraction of either inclusion increased the permittivity with a stronger dependence on BST volume fraction. Increasing NZF volume fraction increased the magnetic permeability, while changing BST volume fraction had no effect on the composite permeability. The DC dielectric breakdown voltage decreased exponentially with increased NZF volume fraction. Adding as little as 5% BST to an NZF composite more than doubled the breakdown threshold compared to a composite containing NZF alone. For example, adding 10% BST to a 15% NZF composite increased the breakdown strength by over 800%. The combination of tunability of permittivity and permeability by managing BST and NZF volume fractions with the increased dielectric breakdown strength by introducing BST make this a promising approach for designing high power nonlinear transmission lines with input pulses of hundreds of kilovolts.
Coaxial nonlinear transmission lines are produced using composites with NZF inclusions and BST inclusions and driven by a Blumlein pulse generator with a 10 ns pulse duration and 1.5 ns risetime. Applying a 30 kV pulse using the Blumlein pulse generator resulted in frequencies ranging from 1.1 to 1.3 GHz with an output power over 20 kW from the nonlinear transmission line. The output frequencies increased with increasing volume fraction of BST, but the high power oscillations characteristic of an NLTL did not occur. Simulations using LT Spice demonstrated that an NLTL driven with a Blumlein modulator did not induce high power oscillations while driving the same NLTL with a pulse forming network did.
Finally, a composite-based NLTL could be driven directly by a high voltage power supply without a power modulator to produce oscillations both during and after the formed pulse upon reaching a critical threshold. The output frequency of the NLTLs is 1 GHz after the pulse and ranged from 950 MHz to 2.2 GHz during the pulse. These results demonstrate that the NLTL may be used as both a pulse forming line and high power microwave source, providing a novel way to reduce device size and weight, while the use of composites could provide additional flexibility in pulse output tuning.
(10723164), Suki N. Zhang. "Electronic Application of Two Dimensional Materials". Thesis, 2021.
Buscar texto completo(8782580), Di Wang. "Mechanical behaviors of bio-inspired composite materials with functionally graded reinforcement orientation and architectural motifs". Thesis, 2020.
Buscar texto completoNaturally-occurring biological materials with stiff mineralized reinforcement embedded in a ductile matrix are commonly known to achieve excellent balance between stiffness, strength and ductility. Interestingly, nature offers a broad diversity of architectural motifs, exemplify the multitude of ways in which exceptional mechanical properties can be achieved. Such diversity is the source of bio-inspiration and its translation to synthetic material systems. In particular, the helicoid and the “brick and mortar” architectured materials are two key architectural motifs we are going to study and to synthesize new bio-inspired materials.
Due to geometry mismatch(misorientation) and incompatibilities of mechanical properties between fiber and matrix materials, it is acknowledged that misoriented stiff fibers would rotate in compliant matrix beneath uniaxial deformation. However, the role of fiber reorientation inside the flexible matrix of helicoid composites on their mechanical behaviors have not yet been extensively investigated. In the present project, fiber reorientation values of single misoriented laminae, mono-balanced laminates and helicoid architectures under uniaxial tensile are calculated and compared. In the present work, we introduce a Discontinuous Fiber Helicoid (DFH) composite inspired by both the helicoid microstructure in the cuticle of mantis shrimp and the nacreous architecture of the red abalone shell. We employ 3D printed specimens, analytical models and finite element models to analyze and quantify in-plane fiber reorientation in helicoid architectures with different geometrical features. We also introduce additional architectures, i.e., single unidirectional lamina and mono-balanced architectures, for comparison purposes. Compared with associated mono-balanced architectures, helicoid architectures exhibit less fiber reorientation values and lower values of strain stiffening. The explanation for this difference is addressed in terms of the measured in-plane deformation, due to uniaxial tensile of the laminae, correlated to lamina misorientation with respect to the loading direction and lay-up sequence.
In addition to fiber, rod-like, reinforced laminate, platelet reinforced composite materials, “brick and mortar” architectures, are going to be discussed as well, since it can provide in-plane isotropic behavior on elastic modulus that helicoid architecture can offer as well, but with different geometries of reinforcement. Previous “brick and mortar” models available in the literature have provided insightful information on how these structures promote certain mechanisms that lead to significant improvement in toughness without sacrificing strength. In this work, we present a detailed comparative analysis that looks at the three-dimensional geometries of the platelet-like and rod-like structures. However, most of these previous analyses have been focused on two-dimensional representations. We 3D print and test rod-like and tablet-like architectures and analyze the results employing a computational and analytical micromechanical model under a dimensional analysis framework. In particular, we focus on the stiffness, strength and toughness of the resulting structures. It is revealed that besides volume fraction and aspect ratio of reinforcement, the effective shear and tension area in the matrix governs the mechanical behavior as well. In turns, this leads to the conclusion that rod-like microstructures exhibit better performance than tablet-like microstructures when the architecture is subjected to uniaxial load. However, rod-like microstructures tend to be much weaker and brittle in the transverse direction. On the other hand, tablet-like architectures tend to be a much better choice for situations where biaxial load is expected.
Through varying the geometry of reinforcement and changing the orientation of reinforcement, different architectural motifs can promote in-plane mechanical properties, such as strain stiffening under uniaxial tensile, strength and toughness under biaxial tensile loading. On the other hand, the various out-of-plane orientation of the reinforcement leads to functionally graded effective indentation stiffness. The external layer of nacre shell is composed of calcite prisms with graded orientation from surface to interior. This orientation gradient leads to functionally graded Young’s modulus, which is confirmed to have higher fracture resistance than homogenous materials under mode I fracture loading act.
Similar as graded prism orientation in calcite layer of nacre, the helicoid architecture found in nature exhibits gradients on geometrical parameters as well. The pitch distance of helicoid architecture is found to be functionally graded through the thickness of biological materials, including the dactyl club of mantis shrimp and the fish scale of coelacanth. This can be partially explained by the long-term evolution and selection of living organisms to create high performance biological materials from limited physical, chemical and geometrical elements. This naturally “design” procedure can provide us a spectrum of design motifs on architectural materials.
In the present work, linear gradient on pitch distance of helicoid architectures, denoted by functionally graded helicoid (FGH), is chose to be the initial pathway to understand the functionality of graded pitch distance, associated with changing pitch angle. Three-point bending on short beam and low-velocity impact tests are employed in FEA to analyze the mechanical properties of composite materials simultaneously. Both static(three-point bending) and dynamic(low-velocity impact) tests reveal that FGH with pitch angle increasing from surface to interior can provide multiple superior properties at the same time, such as peak load and toughness, while the helicoid architectures with constant pitch angle can only provide one competitive property at one time. Specifically, helicoid architectures with smaller pitch angle, such as 15-degree, show higher values on toughness, but less competitive peak load under static three-point bending loading condition, while helicoid architectures with middle pitch angle, larger than or equal to 22.5-degree and smaller than 45-degree, exhibit less value of toughness, but higher peak load. The explanation on this trend and the benefits of FGH is addressed by analyzing the transverse shear stresses distribution through the thickness in FEA, combined with analytical prediction. In low-velocity impact tests, the projected delamination area of helicoid architectures is observed to increase when the pitch angle is decreasing. Besides, laminates with specific pitch angles, such as 45-degree, classical quasi-isotropic laminate, 60-degree, specific angle ply, and 90-degree, cross-ply, are designed to compare with helicoid architectures and FGH.
(5929505), Eduardo Barocio. "FUSION BONDING OF FIBER REINFORCED SEMI-CRYSTALLINE POLYMERS IN EXTRUSION DEPOSITION ADDITIVE MANUFACTURING". Thesis, 2020.
Buscar texto completoExtrusion deposition additive manufacturing (EDAM) has enabled upscaling the dimensions of the objects that can be additively manufactured from the desktop scale to the size of a full vehicle. The EDAM process consists of depositing beads of molten material in a layer-by-layer manner, thereby giving rise to temperature gradients during part manufacturing. To investigate the phenomena involved in EDAM, the Composites Additive Manufacturing Research Instrument (CAMRI) was developed as part of this project. CAMRI provided unparalleled flexibility for conducting controlled experiments with carbon fiber reinforced semi-crystalline polymers and served as a validation platform for the work presented in this dissertation.
Since the EDAM process is highly non-isothermal, modeling heat transfer in EDAM is of paramount importance for predicting interlayer bonding and evolution of internal stresses during part manufacturing. Hence, local heat transfer mechanisms were characterized and implemented in a framework for EDAM process simulations. These include local convection conditions, heat losses in material compaction as well as heat of crystallization or melting. Numerical predictions of the temperature evolution during the printing process of a part were in great agreement with experimental measurements by only calibrating the radiation ambient temperature.
In the absence of fibers reinforcing the interface between adjacent layers, the bond developed through the polymer is the primary mechanisms governing the interlayer fracture properties in printed parts. Hence, a fusion bonding model was extended to predict the evolution of interlayer fracture properties in EDAM with semi-crystalline polymer composites. The fusion bonding model was characterized and implemented in the framework for EDAM process simulation. Experimental verification of numerical predictions obtained with the fusion bonding model for interlayer fracture properties is provided. Finally, this fusion bonding model bridges the gap between processing conditions and interlayer fracture properties which is extremely valuable for predicting regions with frail interlayer bond within a part.Ganchev, Todor. "Αναγνώριση ομιλητή". 2005. http://nemertes.lis.upatras.gr/jspui/handle/10889/308.
Texto completoThis dissertation dials with speaker recognition in real-world conditions. The main accent falls on: (1) evaluation of various speech feature extraction approaches, (2) reduction of the impact of environmental interferences on the speaker recognition performance, and (3) studying alternative to the present state-of-the-art classification techniques. Specifically, within (1), a novel wavelet packet-based speech features extraction scheme fine-tuned for speaker recognition is proposed. It is derived in an objective manner with respect to the speaker recognition performance, in contrast to the state-of-the-art MFCC scheme, which is based on approximation of human auditory perception. Next, within (2), an advanced noise-robust feature extraction scheme based on MFCC is offered for improving the speaker recognition performance in real-world environments. In brief, a model-based noise reduction technique adapted for the specifics of the speaker verification task is incorporated directly into the MFCC computation scheme. This approach demonstrated significant advantage in real-world fast-varying environments. Finally, within (3), two novel classifiers referred to as Locally Recurrent Probabilistic Neural Network (LR PNN), and Generalized Locally Recurrent Probabilistic Neural Network (GLR PNN) are introduced. They are hybrids between Recurrent Neural Network (RNN) and Probabilistic Neural Network (PNN) and combine the virtues of the generative and discriminative classification approaches. Moreover, these novel neural networks are sensitive to temporal and special correlations among consecutive inputs, and therefore, are capable to exploit the inter-frame correlations among speech features derived for successive speech frames. In the experimentations, it was demonstrated that the LR PNN and GLR PNN architectures provide benefit in terms of performance, when compared to the original PNN.
(11036556), Yen-yu Chen. "2D MATERIALS FOR GAS-SENSING APPLICATIONS". Thesis, 2021.
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Two-dimensional (2D) transition-metal dichalcogenides (TMDCs) and transition metal carbides/nitrides (MXenes), have been recently receiving attention for gas sensing applications due to their high specific area and rich surface functionalities. However, using pristine 2D materials for gas-sensing applications presents some drawbacks, including high operation temperatures, low gas response, and poor selectivity, limiting their practical sensing applications. Moreover, one of the long-standing challenges of MXenes is their poor stability against hydration and oxidation in a humid environment, which negatively influences their long- term storage and applications. Many studies have reported that the sensitivity and selectivity of 2D materials can be improved by surface functionalization and hybridization with other materials.
In this work, the effects of surface functionalization and/or hybridization of these two materials classes (TMDCs and MXenes) on their gas sensing performance have been investigated. In one of the lines of research, 2D MoS2 nanoflakes were functionalized with Au nanoparticles as a sensing material, providing a performance enhancement towards sensing of volatile organic compounds (VOCs) at room temperature. Next, a nanocomposite film composed of exfoliated MoS2, single-walled carbon nanotubes, and Cu(I)−tris(mercaptoimidazolyl)borate complexes was the sensing material used for the design of a chemiresistive sensor for the selective detection of ethylene (C2H4). Moreover, the hybridization of MXene (Ti3C2Tx) and TMDC (WSe2) as gas-sensing materials was also proposed. The Ti3C2Tx/WSe2 hybrid sensor reveals high sensitivity, good selectivity, low noise level, and ultrafast response/recovery times for the detection of various VOCs. Lastly, we demonstrated a surface functionalization strategy for Ti3C2Tx with fluoroalkylsilane (FOTS) molecules, providing a superhydrophobic surface, mechanical/environmental stability, and excellent sensing performance. The strategies presented here can be an effective solution for not only improving materials' stability, but also enhancing sensor performance, shedding light on the development of next-generation field-deployable sensors.
(6532391), Nicolas Guarin-Zapata. "Modeling and Analysis of Wave and Damaging Phenomena in Biological and Bioinspired Materials". Thesis, 2021.
Buscar texto completoThere is a current interest in exploring novel microstructural architectures that take advantage of the response of independent phases. Current guidelines in materials design are not just based on changing the properties of the different phases but also on modifying its base architecture. Hence, the mechanical behavior of composite materials can be adjusted by designing microstructures that alternate stiff and flexible constituents, combined with well-designed architectures. One source of inspiration to achieve these designs is Nature, where biologically mineralized composites can be taken as an example for the design of next-generation structural materials due to their low density, high-strength, and toughness currently unmatched by engineering technologies.
The present work focuses on the modeling of biologically inspired composites, where the source of inspiration is the dactyl club of the Stomatopod. Particularly, we built computational models for different regions of the dactyl club, namely: periodic and impact regions. Thus, this research aimed to analyze the effect of microstructure present in the impact and periodic regions in the impact resistance associated with the materials present in the appendage of stomatopods. The main contributions of this work are twofold. First, we built a model that helped to study wave propagation in the periodic region. This helped to identify possible bandgaps and their influence on the wave propagation through the material. Later on, we extended what we learned from this material to study the bandgap tuning in bioinspired composites. Second, we helped to unveil new microstructural features in the impact region of the dactyl club. Specifically, the sinusoidally helicoidal composite and bicontinuous particulate layer. For these, structural features we developed finite element models to understand their mechanical behavior.
The results in this work help to elucidate some new microstructures and present some guidelines in the design of architectured materials. By combining the current synthesis and advanced manufacturing methods with design elements from these biological structures we can realize potential blueprints for a new generation of advanced materials with a broad range of applications. Some of the possible applications include impact- and vibration-resistant coatings for buildings, body armors, aircraft, and automobiles, as well as in abrasion- and impact-resistant wind turbines.
(7026707), Siddharth Saksena. "Integrated Flood Modeling for Improved Understanding of River-Floodplain Hydrodynamics: Moving beyond Traditional Flood Mapping". Thesis, 2019.
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