In particle filtering-based prognostic methods, state and observation equations are used in which one or more parameters are uncertain. These parameters are estimated with collected monitoring data. The choices of the initial value ranges and distributions of the unknown parameters in the state and observation equations influence the performance of the particle filtering approaches, in terms of convergence, speed, and stability of prognostic results. For new products with little or even no degradation process data, uniform distributions over experience-based value ranges are the most common choice for parameters initialization. In this paper, the failure times' data collected during reliability tests executed before volume production are us...
International audienceBayesian estimation techniques are being applied with success in component fau...
Prognostic approaches based on particle filtering employ phys-ical models in order to estimate the r...
Prognostics is the ability to predict the remaining useful life of a specific system, or component,...
In particle filtering-based prognostic methods, state and observation equations are used in which on...
International audienceThis work addresses the problem of predicting the Remaining Useful Life (RUL) ...
This paper presents a novel prognostic method that allows a proper characterization of the uncertai...
International audiencePrognostics is an engineering discipline aiming at predicting the Remaining Us...
While increasing digitalization enables multiple advantages for a reliable operation of technical sy...
One of the key motivating factors for using particle filters for prognostics is the ability to inclu...
Abstract—Batteries play a critical role for the reliability of battery-powered systems. The prognost...
International audiencePrognosis and Health Management is a powerful approach in the quest to improve...
Prognostics and Health Management (PHM) using a proper condition-based maintenance (CBM) deployment ...
International audienceThis paper presents some improvements of Particle Filtering based prognosis to...
Artículo de publicación ISIWe present the implementation of a particle-filteringbased prognostic fr...
International audienceBayesian estimation techniques are being applied with success in component fau...
Prognostic approaches based on particle filtering employ phys-ical models in order to estimate the r...
Prognostics is the ability to predict the remaining useful life of a specific system, or component,...
In particle filtering-based prognostic methods, state and observation equations are used in which on...
International audienceThis work addresses the problem of predicting the Remaining Useful Life (RUL) ...
This paper presents a novel prognostic method that allows a proper characterization of the uncertai...
International audiencePrognostics is an engineering discipline aiming at predicting the Remaining Us...
While increasing digitalization enables multiple advantages for a reliable operation of technical sy...
One of the key motivating factors for using particle filters for prognostics is the ability to inclu...
Abstract—Batteries play a critical role for the reliability of battery-powered systems. The prognost...
International audiencePrognosis and Health Management is a powerful approach in the quest to improve...
Prognostics and Health Management (PHM) using a proper condition-based maintenance (CBM) deployment ...
International audienceThis paper presents some improvements of Particle Filtering based prognosis to...
Artículo de publicación ISIWe present the implementation of a particle-filteringbased prognostic fr...
International audienceBayesian estimation techniques are being applied with success in component fau...
Prognostic approaches based on particle filtering employ phys-ical models in order to estimate the r...
Prognostics is the ability to predict the remaining useful life of a specific system, or component,...