Artículo de publicación ISIWe present the implementation of a particle-filteringbased prognostic framework that utilizes statistical characterization of use profiles to (i) estimate the state-of-charge (SOC), and (ii) predict the discharge time of energy storage devices (lithium-ion batteries). The proposed approach uses a novel empirical statespace model, inspired by battery phenomenology, and particle-filtering algorithms to estimate SOC and other unknown model parameters in real-time. The adaptation mechanism used during the filtering stage improves the convergence of the state estimate, and provides adequate initial conditions for the prognosis stage. SOC prognosis is implemented using a particle-filtering-based framework tha...
Lithium-ion batteries are currently amongst the leading technologies for electrical energy storage. ...
Lithium-Ion rechargeable batteries are widespread power sources with applications to consumer electr...
The prognosis of time-to-failure for a battery can avoid the failure caused by battery performance l...
Artículo de publicación ISIWe present the implementation of a particle-filteringbased prognostic fr...
This paper focuses on predicting the End of Life and End of Discharge of Lithium ion batteries using...
Artículo de publicación ISIThis paper presents the implementation of a particlefiltering- based pro...
The aim of this study is that of presenting a new diagnostic and prognostic method aimed at automati...
This paper presents a novel prognostic method that allows a proper characterization of the uncertai...
Abstract—Batteries play a critical role for the reliability of battery-powered systems. The prognost...
Nowadays, electric vehicles such as cars and bicycles are increasing their popularity due to the ris...
The paper presents a new approach for state estimation of lithium–iron phosphate batteries. Lithium-...
We present the implementation of a particle-filtering-based framework that estimates the State-of-He...
Due to an ever-growing role of lithium-ion batteries in industry, particularly automotive industry, ...
In order for the battery management system (BMS) in an electric vehicle to function properly, accura...
An intelligent online prognostic approach is proposed for predicting the remaining useful life (RUL)...
Lithium-ion batteries are currently amongst the leading technologies for electrical energy storage. ...
Lithium-Ion rechargeable batteries are widespread power sources with applications to consumer electr...
The prognosis of time-to-failure for a battery can avoid the failure caused by battery performance l...
Artículo de publicación ISIWe present the implementation of a particle-filteringbased prognostic fr...
This paper focuses on predicting the End of Life and End of Discharge of Lithium ion batteries using...
Artículo de publicación ISIThis paper presents the implementation of a particlefiltering- based pro...
The aim of this study is that of presenting a new diagnostic and prognostic method aimed at automati...
This paper presents a novel prognostic method that allows a proper characterization of the uncertai...
Abstract—Batteries play a critical role for the reliability of battery-powered systems. The prognost...
Nowadays, electric vehicles such as cars and bicycles are increasing their popularity due to the ris...
The paper presents a new approach for state estimation of lithium–iron phosphate batteries. Lithium-...
We present the implementation of a particle-filtering-based framework that estimates the State-of-He...
Due to an ever-growing role of lithium-ion batteries in industry, particularly automotive industry, ...
In order for the battery management system (BMS) in an electric vehicle to function properly, accura...
An intelligent online prognostic approach is proposed for predicting the remaining useful life (RUL)...
Lithium-ion batteries are currently amongst the leading technologies for electrical energy storage. ...
Lithium-Ion rechargeable batteries are widespread power sources with applications to consumer electr...
The prognosis of time-to-failure for a battery can avoid the failure caused by battery performance l...