International audienceThis work addresses the problem of predicting the Remaining Useful Life (RUL) of components for which a mathematical model describing the component degradation is available, but the values of the model parameters are not known and the observations of degradation trajectories in similar components are unavailable. The proposed approach solves this problem by using a Particle Filtering (PF) technique combined with a Kernel Smoothing (KS) method. This PF-KS method can simultaneously estimate the degradation state and the unknown parameters in the degradation model, while significantly overcoming the problem of particle impoverishment. Based on the updated degradation model (where the unknown parameters are replaced by the...
Artículo de publicación ISIThis paper presents the implementation of a particlefiltering- based pro...
While increasing digitalization enables multiple advantages for a reliable operation of technical sy...
Prognostics is the ability to predict the remaining useful life of a specific system, or component,...
International audienceThis work addresses the problem of predicting the Remaining Useful Life (RUL) ...
International audienceIn particle filtering-based prognostic methods, state and observation equation...
Abstract—Batteries play a critical role for the reliability of battery-powered systems. The prognost...
Prognostic approaches based on particle filtering employ phys-ical models in order to estimate the r...
The prognosis of time-to-failure for a battery can avoid the failure caused by battery performance l...
International audienceBayesian estimation techniques are being applied with success in component fau...
International audiencePrognostics is an engineering discipline aiming at predicting the Remaining Us...
This paper focuses on predicting the End of Life and End of Discharge of Lithium ion batteries using...
One of the key motivating factors for using particle filters for prognostics is the ability to inclu...
Establishing a capacity degradation model accurately and predicting the remaining useful life of lit...
Artículo de publicación ISIThis paper presents the implementation of a particlefiltering- based pro...
While increasing digitalization enables multiple advantages for a reliable operation of technical sy...
Prognostics is the ability to predict the remaining useful life of a specific system, or component,...
International audienceThis work addresses the problem of predicting the Remaining Useful Life (RUL) ...
International audienceIn particle filtering-based prognostic methods, state and observation equation...
Abstract—Batteries play a critical role for the reliability of battery-powered systems. The prognost...
Prognostic approaches based on particle filtering employ phys-ical models in order to estimate the r...
The prognosis of time-to-failure for a battery can avoid the failure caused by battery performance l...
International audienceBayesian estimation techniques are being applied with success in component fau...
International audiencePrognostics is an engineering discipline aiming at predicting the Remaining Us...
This paper focuses on predicting the End of Life and End of Discharge of Lithium ion batteries using...
One of the key motivating factors for using particle filters for prognostics is the ability to inclu...
Establishing a capacity degradation model accurately and predicting the remaining useful life of lit...
Artículo de publicación ISIThis paper presents the implementation of a particlefiltering- based pro...
While increasing digitalization enables multiple advantages for a reliable operation of technical sy...
Prognostics is the ability to predict the remaining useful life of a specific system, or component,...