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Auswahl der wissenschaftlichen Literatur zum Thema „Energy-Efficient Localization“
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Zeitschriftenartikel zum Thema "Energy-Efficient Localization"
Jurdak, Raja, Peter Corke, Alban Cotillon, Dhinesh Dharman, Chris Crossman und Guillaume Salagnac. „Energy-efficient localization“. ACM Transactions on Sensor Networks 9, Nr. 2 (März 2013): 1–33. http://dx.doi.org/10.1145/2422966.2422980.
Der volle Inhalt der QuelleLiu, Haifeng, Feng Xia, Zhuo Yang und Yang Cao. „An energy-efficient localization strategy for smartphones“. Computer Science and Information Systems 8, Nr. 4 (2011): 1117–28. http://dx.doi.org/10.2298/csis110430065l.
Der volle Inhalt der QuelleChoi, Taehwa, Yohan Chon und Hojung Cha. „Energy-efficient WiFi scanning for localization“. Pervasive and Mobile Computing 37 (Juni 2017): 124–38. http://dx.doi.org/10.1016/j.pmcj.2016.07.005.
Der volle Inhalt der QuelleAbdellatif, Mohamed. „GreenLoc: Energy Efficient Wifi-Based Indoor Localization“. Qatar Foundation Annual Research Forum Proceedings, Nr. 2011 (November 2011): CSP20. http://dx.doi.org/10.5339/qfarf.2011.csp20.
Der volle Inhalt der QuelleAbu-Mahfouz, Adnan M., und Gerhard P. Hancke. „ALWadHA Localization Algorithm: Yet More Energy Efficient“. IEEE Access 5 (2017): 6661–67. http://dx.doi.org/10.1109/access.2017.2687619.
Der volle Inhalt der QuelleTaheri, Mostafa, und Seyed Ahmad Motamedi. „Energy-efficient cooperative localization in mobile WSN“. IEEJ Transactions on Electrical and Electronic Engineering 12, Nr. 1 (22.11.2016): 71–79. http://dx.doi.org/10.1002/tee.22346.
Der volle Inhalt der QuelleWang, Wendong, Teng Xi, Edith Ngai und Zheng Song. „Energy-Efficient Collaborative Outdoor Localization for Participatory Sensing“. Sensors 16, Nr. 6 (25.05.2016): 762. http://dx.doi.org/10.3390/s16060762.
Der volle Inhalt der QuelleBui, ThiOanh, Pingping Xu, Wenxiang Zhu, Guilu Wu und Nanlan Jiang. „Energy-Efficient Localization Game for Wireless Sensor Networks“. IEEE Communications Letters 21, Nr. 11 (November 2017): 2468–71. http://dx.doi.org/10.1109/lcomm.2017.2731966.
Der volle Inhalt der QuelleAly, Heba, Anas Basalamah und Moustafa Youssef. „Accurate and Energy-Efficient GPS-Less Outdoor Localization“. ACM Transactions on Spatial Algorithms and Systems 3, Nr. 2 (29.08.2017): 1–31. http://dx.doi.org/10.1145/3085575.
Der volle Inhalt der QuellePanda, Tanuja. „Energy Efficient Anchor-Based Localization Algorithm for WSN“. IOSR Journal of Computer Engineering 1, Nr. 3 (2012): 13–20. http://dx.doi.org/10.9790/0661-0131320.
Der volle Inhalt der QuelleDissertationen zum Thema "Energy-Efficient Localization"
Vecchia, Davide. „Energy-efficient, Large-scale Ultra-wideband Communication and Localization“. Doctoral thesis, Università degli studi di Trento, 2022. http://hdl.handle.net/11572/349081.
Der volle Inhalt der QuelleRobles, Jorge Juan [Verfasser]. „Energy-Efficient Indoor Localization Based on Wireless Sensor Networks / Jorge Juan Robles“. München : Verlag Dr. Hut, 2015. http://d-nb.info/1075408962/34.
Der volle Inhalt der QuelleOztarak, Hakan. „An Energy-efficient And Reactive Remote Surveillance Framework Using Wireless Multimedia Sensor Networks“. Phd thesis, METU, 2012. http://etd.lib.metu.edu.tr/upload/12614328/index.pdf.
Der volle Inhalt der Quelle2) Classification and identification of objects
and 3) Reactive behavior at the base-station. For each component, novel lightweight, storage-efficient and real-time algorithms both at the computation and communication level are designed, implemented and tested under a variety of conditions. The results have indicated the feasibility of this framework working with limited energy but having high object localization/classification accuracies. The results of this research will facilitate the design and development of very large-scale remote border surveillance systems and improve the systems effectiveness in dealing with the intrusions with reduced human involvement and labor costs.
Shah, Ghalib Asadullah. „Energy-efficient Real-time Coordination And Routing Framework For Wireless Sensor And Actor Networks“. Phd thesis, METU, 2007. http://etd.lib.metu.edu.tr/upload/12608239/index.pdf.
Der volle Inhalt der Quelle(1) timing-based sensors localization (TSL) algorithm to localize the sensor nodes relative to actors, (2) real-time coordination and routing protocols and (3) energy conservation. The distributed real-time coordination and routing is implemented in addressing and greedy modes routing. A cluster-based real-time coordination and routing (RCR) protocol operates in addressing mode. The greedy mode routing approach (Routing by Adaptive Targeting, RAT) is a stateless shortest path routing. In dense deployment, it performs well in terms of delay and energy consumption as compared to RCR. To keep the traffic volume under control, the framework incorporates a novel real-time data aggregation (RDA) approach in RCR such that the packets deadlines are not affected. RDA is adaptive to the traffic conditions and provides fairness among the farther and nearer cluster-heads. Finally, framework incorporates a power management scheme that eliminates data redundancy by exploiting the spatial correlation of sensor nodes. Simulation results prove that the framework provides the real-time guarantees up to 95 % of the packets with lesser energy consumption of up to 33 % achieved using MEAC as compared to LEACH and SEP. The packet delivery ratio is also 60 % higher than that of semi-automated architecture. Furthermore the action accuracy is supported by TSL which restricts the localization errors less than 1 meter by tuning it according to the expected velocity of nodes and required accuracy.
Jouni, Zalfa. „Analog spike-based neuromorphic computing for low-power smart IoT applications“. Electronic Thesis or Diss., université Paris-Saclay, 2024. http://www.theses.fr/2024UPAST114.
Der volle Inhalt der QuelleAs the Internet of Things (IoT) expands with more connected devices and complex communications, the demand for precise, energy-efficient localization technologies has intensified. Traditional machine learning and artificial intelligence (AI) techniques provide high accuracy in radio-frequency (RF) localization but often at the cost of greater complexity and power usage. To address these challenges, this thesis explores the potential of neuromorphic computing, inspired by brain functionality, to enable energy-efficient AI-based RF localization. It introduces an end-to-end analog spike-based neuromorphic system (RF NeuroAS), with a simplified version fully implemented in BiCMOS 55 nm technology. RF NeuroAS is designed to identify source positions within a 360-degree range on a two-dimensional plane, maintaining high resolution (10 or 1 degree) even in noisy conditions. The core of this system, an analog-based spiking neural network (A-SNN), was trained and tested on a simulated dataset (SimLocRF) from MATLAB and an experimental dataset (MeasLocRF) from anechoic chamber measurements, both developed in this thesis.The learning algorithms for A-SNN were developed through two approaches: software-based deep learning (DL) and bio-plausible spike-timing-dependent plasticity (STDP). RF NeuroAS achieves a localization accuracy of 97.1% with SimLocRF and 90.7% with MeasLoc at a 10-degree resolution, maintaining high performance with low power consumption in the nanowatt range. The simplified RF NeuroAS consumes just over 1.1 nW and operates within a 30 dB dynamic range. A-SNN learning, via DL and STDP, demonstrated performance on XOR and MNIST problems. DL depends on the non-linearity of post-layout transfer functions of A-SNN's neurons and synapses, while STDP depends on the random noise in analog neuron circuits. These findings highlight advancements in energy-efficient IoT through neuromorphic computing, promising low-power smart edge IoT breakthroughs inspired by brain mechanisms
Lin, Wen-Chieh, und 林文傑. „Energy Efficient Localization Schemes in Wireless Sensor Networks“. Thesis, 2009. http://ndltd.ncl.edu.tw/handle/94697077125583010580.
Der volle Inhalt der Quelle逢甲大學
資訊工程所
97
In wireless sensor networks, localization play an important role in data gathering, data reporting and object tracking. However if each sensor equips with GPS receiver, it is high cost and not energy efficient. Besides, sensors also unable to obtain the GPS signal in the indoor environment due to the shielding effect. In general, there are several anchors deployed in wireless sensor networks and the anchors broadcast beacons with their locations to help sensor nodes to estimate their locations; another way is that the mobile anchor moves along the planned path and broadcasts location information to improve localization accuracy and reduce cost. However, the path of a mobile anchor has obvious effect on accuracy, overhead and convergence time. This thesis focuses on path planning of a mobile anchor. By modifying Hilbert curve, it proposes several appropriate paths for different applications, such as time concern, intrusion detection, the low density environment, and the large scale networks. Simulation results show the proposed paths can reduce the energy consumption and time during localization and keep the accuracy.
Lin, Tsung-Han, und 林宗翰. „Energy-Efficient Boundary Detection for RF-Based Indoor Localization Systems“. Thesis, 2008. http://ndltd.ncl.edu.tw/handle/96629098938075670811.
Der volle Inhalt der Quelle國立臺灣大學
電機工程學研究所
96
Boundary detection is a form of location-aware services that aims at detecting targets crossing certain critical regions. Typically, a lower location sampling rate contributes to a lower level of energy consumption but, in the meantime, delays the detection of boundary crossing events. Opting to enable energy-efficient boundary detection services, we propose a mobility-aware mechanism that adapts the location sampling rate to the target mobility. Results from our simulations and live experiments confirm that the proposed adaptive sampling mechanism is effective. In particular, when experimented with realistic errors measured from a live RF-based localization system, the energy consumption can be reduced significantly to 20%.
Lin, Tsung-Han. „Energy-Efficient Boundary Detection for RF-Based Indoor Localization Systems“. 2008. http://www.cetd.com.tw/ec/thesisdetail.aspx?etdun=U0001-1807200814365200.
Der volle Inhalt der QuelleYou, Chuang-Wen, und 游創文. „Enabling Energy-Efficient Localization Services on Sensor Network Positioning Systems“. Thesis, 2008. http://ndltd.ncl.edu.tw/handle/40648502526364542762.
Der volle Inhalt der Quelle臺灣大學
資訊工程學研究所
96
One of the most important performance objectives for a localization system is positional accuracy. It is fundamental and essential to general location-aware services. Energy efficiency and positional accuracy, however, are often contradictive goals. We propose to decrease energy consumption without sacrificing significant accuracy by developing an energy-aware localization that adapts the sampling rate to target''s mobility level and current estimation error. As an energy-aware adaptive localization system, our system actively adapts its sampling rate to conserve energy without sacrificing significant accuracy according to target''s mobility level which is estimated with the help of an additional sensor. Moreover, in order to be more adhering to application''s requirements, we improve the radio interferometric positioning (RIP) method to estimate positional error more accurately. Because the positional error is highly related to not only user mobility level but also current estimation error, we designed an estimation error model to estimate the estimation error of the RIP algorithm and applied it in the design of our energy-efficient localization system. Furthermore, building upon this estimation error model, we devise an adaptive RIP method that selects the optimal sender-pair combination (SPC) according to the locations of targets relative to anchor nodes. Promising to satisfy an application''s requirements on positional accuracy, our system actively tries to adapt its sampling rate to reduce its energy consumption. In this thesis, energy-aware adaptive localization systems based on different sensor network localization systems, i.e. Zigbee-based fingerprinting positioning system or adaptive RIP system, are designed, implemented, and evaluated.
Cheng, Li-Wen, und 鄭理文. „Energy-Efficient Indoor Localization and Tracking for Internet of Things“. Thesis, 2018. http://ndltd.ncl.edu.tw/handle/mjasxg.
Der volle Inhalt der Quelle國立臺灣大學
電信工程學研究所
106
With the rapid rise of Internet of Things (IoT), it is convenient to connect the physical world to the Internet through wireless communication. IoT is composed of many sensors and wireless networks. IoT has been applied to a lot of applications such as environmental sensing, factory automation, healthcare monitoring, etc. In the hospital, nurses and doctors are interested in the health status of patients and, of course, the location of them. In the factory, the managers want to monitor not only the robot operations but also the locations of them. Among these various applications, knowing the locations of the sensors and users is great importance. Although Global Positioning System (GPS) is a popular localization technology, it does not work in most of indoor environments. A common method for locating and tracking objects in indoor environments is to use known positions of anchors with the radio frequency (RF) signal. In short, objects to be located or tracked transmit beacons and then anchors estimate the distances based on the signal strength of beacons. A well-known problem of using the RF signal is its large variation as the received signal strength is often influenced by the multipath and shadowing. Some other signal signals such as ultrasound and the laser can be used to obtain better distance measurement but doing so incurs additional hardware and installation cost. Regardless of the signal used to measure the distance, two other challenges need to be resolved in order to enable localization/tracking in a real environment. First, tracked objects are usually battery powered due to mobility. Thus, the power of it is limited and must be well managed. How to save the energy while maintaining tracking accuracy then becomes an important issue. Second, the distance info usually goes through a large and potentially multi-hop networks for process at a local or cloud server in many practical usage scenarios. Therefore, end-to-end reliability of transporting a very large number of distance messages in a short period of time is also a critical design issue. In this thesis, we focus on these two challenges and propose a feasible locating/tracking solution. We adopt a duty-cycling mechanism that takes MCU wake-up interval (MWI) and Maximum Beacon Transmission Interval (MBTI) into consideration. G-sensor is also used to make tradeoff between energy consumption and tracking accuracy. For end-to-end reliability, we take network congestion into account. By using directional and prioritized forwarding, distance messages can be delivered on time. The proposed solution is implemented to evaluate its performance. In our test bed in the NTU BL building, a total of 48 anchors are installed while up to 12 tags are deployed. An end-to-end delivery rate of 85% can be reached in case with 8 tags. The rates even increase to 96% in case with 1 tag. In addition, the average tracking error is 1.1 meters when the tags are static and is 5.1 meters when the tags are motion. The lifetime of mobile tags is almost two years with a 300 mAH battery. The results show the feasibility of our solution in real-world environments.
Buchteile zum Thema "Energy-Efficient Localization"
Sutagundar, A. V., S. S. Shirabur und V. S. Bennur. „Energy Efficient Localization in Wireless Sensor Networks“. In Lecture Notes in Electrical Engineering, 139–46. Cham: Springer International Publishing, 2014. http://dx.doi.org/10.1007/978-3-319-03692-2_11.
Der volle Inhalt der QuelleConstandache, Ionut, Shravan Gaonkar, Matt Sayler, Romit Roy Choudhury und Landon Cox. „Energy-Efficient Localization via Personal Mobility Profiling“. In Lecture Notes of the Institute for Computer Sciences, Social Informatics and Telecommunications Engineering, 203–22. Berlin, Heidelberg: Springer Berlin Heidelberg, 2010. http://dx.doi.org/10.1007/978-3-642-12607-9_14.
Der volle Inhalt der QuelleLiu, Minmin, Baoqi Huang, Qing Miao und Bing Jia. „An Energy-Efficient DV-Hop Localization Algorithm“. In Algorithms and Architectures for Parallel Processing, 175–86. Cham: Springer International Publishing, 2018. http://dx.doi.org/10.1007/978-3-030-05054-2_13.
Der volle Inhalt der QuelleGu, Yu, Wei Zhang, HengChang Liu, Baohua Zhao und Yugui Qu. „Energy-Efficient Target Localization Based on a Prediction Model“. In Embedded and Ubiquitous Computing – EUC 2005 Workshops, 1178–90. Berlin, Heidelberg: Springer Berlin Heidelberg, 2005. http://dx.doi.org/10.1007/11596042_120.
Der volle Inhalt der QuelleShikoska, Ustijana Rechkoska, und Danco Davcev. „An Energy-Efficient Approach for Time-Space Localization in Wireless Sensor Networks“. In Advances in Intelligent and Soft Computing, 107–18. Berlin, Heidelberg: Springer Berlin Heidelberg, 2012. http://dx.doi.org/10.1007/978-3-642-28664-3_10.
Der volle Inhalt der QuelleKumar, Sunil, Prateek Raj Gautam, Swati Verma und Arvind Kumar. „An Energy-Efficient Localization Scheme Using Beacon Nodes for Wireless Sensor Networks“. In Lecture Notes in Electrical Engineering, 145–55. Singapore: Springer Singapore, 2020. http://dx.doi.org/10.1007/978-981-15-6840-4_12.
Der volle Inhalt der QuelleHao, Kun, Haifeng Shen, Yonglei Liu und Beibei Wang. „An Energy-Efficient Localization-Based Geographic Routing Protocol for Underwater Wireless Sensor Networks“. In Lecture Notes of the Institute for Computer Sciences, Social Informatics and Telecommunications Engineering, 365–73. Cham: Springer International Publishing, 2018. http://dx.doi.org/10.1007/978-3-319-90802-1_32.
Der volle Inhalt der QuelleBhairavi, R., und Gnanou Florence Sudha. „Energy Efficient Advancement-Based Dive and Rise Localization for Underwater Acoustic Sensor Networks“. In Inventive Computation and Information Technologies, 241–55. Singapore: Springer Singapore, 2022. http://dx.doi.org/10.1007/978-981-16-6723-7_18.
Der volle Inhalt der QuelleKalina, Jan, und Patrik Janáček. „Robustness Aspects of Optimized Centroids“. In Studies in Classification, Data Analysis, and Knowledge Organization, 193–201. Cham: Springer International Publishing, 2023. http://dx.doi.org/10.1007/978-3-031-09034-9_22.
Der volle Inhalt der QuelleSandnes, Frode Eika. „An Energy Efficient Localization Strategy for Outdoor Objects Based on Intelligent Light-Intensity Sampling“. In Ubiquitous Intelligence and Computing, 192–204. Berlin, Heidelberg: Springer Berlin Heidelberg, 2010. http://dx.doi.org/10.1007/978-3-642-16355-5_17.
Der volle Inhalt der QuelleKonferenzberichte zum Thema "Energy-Efficient Localization"
Cheng, Wei, Jindan Zhu, Prasant Mohapatra und Jie Wang. „Time and energy efficient localization“. In 2014 Eleventh Annual IEEE International Conference on Sensing, Communication, and Networking (SECON). IEEE, 2014. http://dx.doi.org/10.1109/sahcn.2014.6990330.
Der volle Inhalt der QuelleDai, We nhan, Yuan Shen und Moe Z. Win. „Energy efficient cooperative network localization“. In ICC 2014 - 2014 IEEE International Conference on Communications. IEEE, 2014. http://dx.doi.org/10.1109/icc.2014.6884108.
Der volle Inhalt der QuelleJurdak, Raja, Peter Corke, Dhinesh Dharman, Guillaume Salagnac, Chris Crossman, Philip Valencia und Greg-Bishop Hurley. „Energy-efficient localization for virtual fencing“. In the 9th ACM/IEEE International Conference. New York, New York, USA: ACM Press, 2010. http://dx.doi.org/10.1145/1791212.1791268.
Der volle Inhalt der QuelleYou, Xudong, Zefang Lv, Yuzhen Ding, Wei Su und Liang Xiao. „Reinforcement Learning Based Energy Efficient Underwater Localization“. In 2020 International Conference on Wireless Communications and Signal Processing (WCSP). IEEE, 2020. http://dx.doi.org/10.1109/wcsp49889.2020.9299789.
Der volle Inhalt der QuelleWang, Yufeng, Yuanting Bu, Qun Jin und Athanasios V. Vasilakos. „Energy-Efficient Localization and Tracking on Smartphones“. In CFI '16: The 11th International Conference on Future Internet Technologies. New York, NY, USA: ACM, 2016. http://dx.doi.org/10.1145/2935663.2935675.
Der volle Inhalt der QuelleConstandache, I., S. Gaonkar, M. Sayler, R. R. Choudhury und L. Cox. „EnLoc: Energy-Efficient Localization for Mobile Phones“. In 2009 Proceedings IEEE INFOCOM. IEEE, 2009. http://dx.doi.org/10.1109/infcom.2009.5062218.
Der volle Inhalt der QuelleDhumal, Sujata, und B. S. Shetty. „Energy Efficient Coverage and Sensor Localization for Scheduling“. In 2019 International Conference on Communication and Electronics Systems (ICCES). IEEE, 2019. http://dx.doi.org/10.1109/icces45898.2019.9002075.
Der volle Inhalt der QuelleYou, Chuang-wen, Yi-chao Chen, Ji-rung Chiang, Polly Huang, Hao-hua Chu und Seng-yong Lau. „Sensor-Enhanced Mobility Prediction for Energy-Efficient Localization“. In 2006 3rd Annual IEEE Communications Society on Sensor and Ad Hoc Communications and Networks. IEEE, 2006. http://dx.doi.org/10.1109/sahcn.2006.288513.
Der volle Inhalt der QuelleXi, Teng, Wendong Wang, Edith C. H. Ngai, Zheng Song, Ye Tian und Xiangyang Gong. „Energy-Efficient Collaborative Localization for Participatory Sensing System“. In GLOBECOM 2015 - 2015 IEEE Global Communications Conference. IEEE, 2014. http://dx.doi.org/10.1109/glocom.2014.7416983.
Der volle Inhalt der QuelleXi, Teng, Wendong Wang, Edith C. H. Ngai, Zheng Song, Ye Tian und Xiangyang Gong. „Energy-Efficient Collaborative Localization for Participatory Sensing System“. In GLOBECOM 2015 - 2015 IEEE Global Communications Conference. IEEE, 2015. http://dx.doi.org/10.1109/glocom.2015.7416983.
Der volle Inhalt der QuelleBerichte der Organisationen zum Thema "Energy-Efficient Localization"
Oliynyk, Kateryna, und Matteo Ciantia. Application of a finite deformation multiplicative plasticity model with non-local hardening to the simulation of CPTu tests in a structured soil. University of Dundee, Dezember 2021. http://dx.doi.org/10.20933/100001230.
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