Academic literature on the topic 'Estimation de l’Incertitude'
Create a spot-on reference in APA, MLA, Chicago, Harvard, and other styles
Consult the lists of relevant articles, books, theses, conference reports, and other scholarly sources on the topic 'Estimation de l’Incertitude.'
Next to every source in the list of references, there is an 'Add to bibliography' button. Press on it, and we will generate automatically the bibliographic reference to the chosen work in the citation style you need: APA, MLA, Harvard, Chicago, Vancouver, etc.
You can also download the full text of the academic publication as pdf and read online its abstract whenever available in the metadata.
Journal articles on the topic "Estimation de l’Incertitude"
Hubert, Ph, E. Rozet, B. Boulanger, W. Dewé, M. Laurentie, N. Dubois, C. Charlier, and M. Feinberg. "HARMONISATION DES STRATÉGIES DE VALIDATION ET ESTIMATION DE L’INCERTITUDE ASSOCIÉE DANS LE CADRE DE L’ACCRÉDITATION DES LABORATOIRES D’ESSAIS." Acta Clinica Belgica 61, sup1 (January 2006): 52–54. http://dx.doi.org/10.1179/acb.2006.071.
Full textPinet, Camille, Suspense Averti IFO, Benoit Mertens, Gabriel Jaffrain, Christophe Sannier, and Stoffenne BINSANGOU1. "ANALYSE ET CONSOLIDATION DES RESULTATS SUR LES ESTIMATIONS DE SUPERFICIE DU COUVERT FORESTIER ET DE SES CHANGEMENTS ENTRE 2000 ET 2016 EN REPUBLIQUE DU CONGO." Revue Française de Photogrammétrie et de Télédétection 223 (August 25, 2021): 104–17. http://dx.doi.org/10.52638/rfpt.2021.587.
Full textMenger, Pierre-Michel. "L’évaluation de l’oeuvre d’art dans son horizon temporel." Articles, no. 16 (April 19, 2011): 75–87. http://dx.doi.org/10.7202/1002129ar.
Full textVAILLEAU, Georges-Pierre. "Estimation de l’incertitude de mesure des étalons de filetage." Mesures mécaniques et dimensionnelles, December 2007. http://dx.doi.org/10.51257/a-v2-r1288.
Full textBEZOMBES, Lucie, Agnès BARILLIER, Véronique GOURAUD, and Thomas SPIEGELBERGER. "Améliorer les estimations de gains de biodiversité apportés par les mesures compensatoires : un retour d’expérience des actions de restauration menées sur l’île de Kembs." Naturae, no. 7 (April 27, 2022). http://dx.doi.org/10.5852/naturae2022a7.
Full textQuentin, Moundounga Mavouroulou, Ngomanada Alfred, and Lepengue Nicaise Alexis. "Estimation de la Biomasse des Arbres et Incertitudes Associées (Revue Bibliographique)." European Scientific Journal ESJ 11 (November 28, 2022). http://dx.doi.org/10.19044/esipreprint.11.2022.p656.
Full textCORNET, Yves, and Jean-Jacques DERWAEL. "The map of De Gerlache Strait in Antarctica. Uncertainty analysis of the astronomical coordinates surveyed during the Belgica expedition in January and February 1898." Bulletin de la Société Géographique de Liège, 2023, 5–30. http://dx.doi.org/10.25518/0770-7576.7073.
Full textMalata, Alain, and Christian Pinshi. "Analyse et prospective de la réponse de politique en RD Congo face à l’incertitude de la Covid-19." Revue congolaise des sciences humaines et sociales, July 15, 2022. http://dx.doi.org/10.59189/crsh102234.
Full textDissertations / Theses on the topic "Estimation de l’Incertitude"
Pinson, Pierre Patrick. "Estimation de l’incertitude des prédictions de production eolienne." Paris, ENMP, 2006. http://www.theses.fr/2006ENMP1432.
Full textWind power experiences a tremendous development of its installed capacities in Europe. Though, the intermittence of wind generation causes difficulties in the management of power systems. Also, in the context of the deregulation of electricity markets, wind energy is penalized by its intermittent nature. It is recognized today that the forecasting of wind power for horizons up to 2/3-day ahead eases the integration of wind generation. Wind power forecasts are traditionally provided in the form of point predictions, which correspond to the most-likely power production for a given horizon. That sole information is not sufficient for developing optimal management or trading strategies. Therefore, we investigate on possible ways for estimating the uncertainty of wind power forecasts. The characteristics of the prediction uncertainty are described by a thorough study of the performance of some of the state-of-the-art approaches, and by underlining the influence of some variables e. G. Level of predicted power on distributions of prediction errors. Then, a generic method for the estimation of prediction intervals is introduced. This statistical method is non-parametric and utilizes fuzzy logic concepts for integrating expertise on the prediction uncertainty characteristics. By estimating several prediction intervals at once, one obtains predictive distributions of wind power output. The proposed method is evaluated in terms of its reliability, sharpness and resolution. In parallel, we explore the potential use of ensemble predictions for skill forecasting. Wind power ensemble forecasts are obtained either by converting meteorological ensembles (from ECMWF and NCEP) to power or by applying a poor man’s temporal approach. A proposal for the definition of prediction risk indices is given, reflecting the disagreement between ensemble members over a set of successive look-ahead times. Such prediction risk indices may comprise a more comprehensive signal on the expected level of uncertainty in an operational environment. A probabilistic relation between classes of risk indices and the level of forecast error is shown. In a final part, the trading application is considered for demonstrating the value of uncertainty estimation when predicting wind generation. It is explained how to integrate that uncertainty information in a decision-making process accounting for the sensitivity of end-users to regulation costs. The benefits of having a probabilistic view of wind power forecasting are clearly shown
Dadalto, Câmara Gomes Eduardo. "Improving artificial intelligence reliability through out-of-distribution and misclassification detection." Electronic Thesis or Diss., université Paris-Saclay, 2024. http://www.theses.fr/2024UPASG018.
Full textThis thesis explores the intersection of machine learning (ML) and safety, aiming to address challenges associated with the deployment of intelligent systems in real-world scenarios. Despite significant progress in ML, concerns related to privacy, fairness, and trustworthiness have emerged, prompting the need for enhancing the reliability of AI systems. The central focus of the thesis is to enable ML algorithms to detect deviations from normal behavior, thereby contributing to the overall safety of intelligent systems.The thesis begins by establishing the foundational concepts of out-of-distribution (OOD) detection and misclassification detection in Chapter 1, providing essential background literature and explaining key principles. The introduction emphasizes the importance of addressing issues related to unintended and harmful behavior in ML, particularly when AI systems produce unexpected outcomes due to various factors such as mismatches in data distributions.In Chapter 2, the thesis introduces a novel OOD detection method based on the Fisher-Rao geodesic distance between probability distributions. This approach unifies the formulation of detection scores for both network logits and feature spaces, contributing to improved robustness and reliability in identifying samples outside the training distribution.Chapter 3 presents an unsupervised OOD detection method that analyzes neural trajectories without requiring supervision or hyperparameter tuning. This method aims to identify atypical sample trajectories through various layers, enhancing the adaptability of ML models to diverse scenarios.Chapter 4 focuses on consolidating and enhancing OOD detection by combining multiple detectors effectively. It presents a universal method for ensembling existing detectors, transforming the problem into a multi-variate hypothesis test and leveraging meta-analysis tools. This approach improves data shift detection, making it a valuable tool for real-time model performance monitoring in dynamic and evolving environments.In Chapter 5, the thesis addresses misclassification detection and uncertainty estimation through a data-driven approach, introducing a practical closed-form solution. The method quantifies uncertainty relative to an observer, distinguishing between confident and uncertain predictions even in the face of challenging or unfamiliar data. This contributes to a more nuanced understanding of the model's confidence and helps flag predictions requiring human intervention.The thesis concludes by discussing future perspectives and directions for improving safety in ML and AI, emphasizing the ongoing evolution of AI systems towards greater transparency, robustness, and trustworthiness. The collective work presented in the thesis represents a significant step forward in advancing AI safety, contributing to the development of more reliable and trustworthy machine learning models that can operate effectively in diverse and dynamic real-world scenarios
Book chapters on the topic "Estimation de l’Incertitude"
"Chapitre 2. Estimation de l’incertitude de mesure d’un poids." In Incertitudes de mesures, 33–76. EDP Sciences, 2020. http://dx.doi.org/10.1051/978-2-7598-0832-8-004.
Full text"Chapitre 2. Estimation de l’incertitude de mesure d’un poids." In Incertitudes de mesures, 33–76. EDP Sciences, 2020. http://dx.doi.org/10.1051/978-2-7598-0832-8.c004.
Full textConference papers on the topic "Estimation de l’Incertitude"
Coquet, Pascal. "La derive dans l’évaluation de l’incertitude." In 19th International Congress of Metrology (CIM2019), edited by Sandrine Gazal. Les Ulis, France: EDP Sciences, 2019. http://dx.doi.org/10.1051/metrology/201912003.
Full textBlanquart, Bertrand, Laetitia Grimaldi, Edith Borne, Pierre Roumieu, and Paul-Henri Faure. "Estimation de l’incertitude sur le calcul de la débitance des vanes d’un barrage." In 16th International Congress of Metrology, edited by J. R. Filtz, B. Larquier, P. Claudel, and J. O. Favreau. Les Ulis, France: EDP Sciences, 2013. http://dx.doi.org/10.1051/metrology/201302004.
Full text