In this study, we present a Bayesian Networks (BNs) approach for the electric vehicle (EV) battery degradation modeling. Battery aging is caused by factors that carry heavy uncertainty, such as battery usage depending on driver behavior, temperature profile depending on location and thermal management system, etc. with all these variations complicating the battery aging modeling with traditional frameworks. That is why we propose that the modeling should be carried out in a Bayesian Network framework that is capable of incorporating uncertainty and causality. The battery aging model is developed in the Bayesian framework and set of training and test data are used to validate the model. Results show that the BN model has a promising performa...
The widespread adoption of EVs is limited by their reliance on batteries with presently low energy a...
Capacity decline is the focus of traditional battery health estimation as it is a significant extern...
The batteries of many consumer products are both a substantial portion of the product's cost and com...
In this study, we present a Bayesian Networks (BNs) approach for the electric vehicle (EV) battery d...
This article proposes a hierarchical Bayesian model for probabilistic estimation of the electric veh...
Batteries continue to infiltrate in innovative applications with the technological advancements led ...
Accurately predicting the future health of batteries is necessary to ensure reliable operation, mini...
Accurate capacity fade prediction of Li-ion batteries is essential to reduce the time spent by manuf...
This paper presents an efficient method for estimating capacity-fade uncertainty in lithium-ion batt...
Since emission issues have sounded the alarm bell, energy security and environmental protection issu...
International audienceThis paper describes the statistical analysis of recorded data parameters of e...
The widespread use of electric vehicles (EVs) is viewed as a turning point for lower emissions of co...
With the growing EV market, predictive maintenance of batteries is one of the key challenges faced b...
Abstract Li-ion batteries are the main power source used in electric propulsion applications (e.g., ...
In this paper a simplified hierarchical Bayesian network (BN) is developed to estimate residential e...
The widespread adoption of EVs is limited by their reliance on batteries with presently low energy a...
Capacity decline is the focus of traditional battery health estimation as it is a significant extern...
The batteries of many consumer products are both a substantial portion of the product's cost and com...
In this study, we present a Bayesian Networks (BNs) approach for the electric vehicle (EV) battery d...
This article proposes a hierarchical Bayesian model for probabilistic estimation of the electric veh...
Batteries continue to infiltrate in innovative applications with the technological advancements led ...
Accurately predicting the future health of batteries is necessary to ensure reliable operation, mini...
Accurate capacity fade prediction of Li-ion batteries is essential to reduce the time spent by manuf...
This paper presents an efficient method for estimating capacity-fade uncertainty in lithium-ion batt...
Since emission issues have sounded the alarm bell, energy security and environmental protection issu...
International audienceThis paper describes the statistical analysis of recorded data parameters of e...
The widespread use of electric vehicles (EVs) is viewed as a turning point for lower emissions of co...
With the growing EV market, predictive maintenance of batteries is one of the key challenges faced b...
Abstract Li-ion batteries are the main power source used in electric propulsion applications (e.g., ...
In this paper a simplified hierarchical Bayesian network (BN) is developed to estimate residential e...
The widespread adoption of EVs is limited by their reliance on batteries with presently low energy a...
Capacity decline is the focus of traditional battery health estimation as it is a significant extern...
The batteries of many consumer products are both a substantial portion of the product's cost and com...