This article presents the development of machine-learning-enabled data-driven models for effective capacity predictions for lithium-ion (Li-ion) batteries under different cyclic conditions. To achieve this, a model structure is first proposed with the considerations of battery aging tendency and the corresponding operational temperature and depth-of-discharge. Then based on a systematic understanding of the covariance functions within the Gaussian process regression (GPR), two related data-driven models are developed. Specifically, by modifying the isotropic squared exponential kernel with an automatic relevance determination structure, "Model A" could extract the highly relevant input features for capacity predictions. Through coupling the...
Predicting the performance of Li-ion batteries over lifetime is necessary for design and optimal ope...
Accurately predicting the future health of batteries is necessary to ensure reliable operation, mini...
Capacity degradation of lithium-ion batteries under long-term cyclic aging is modeled via a flexible...
This article presents the development of machine-learning-enabled data-driven models for effective c...
Lithium-ion batteries are increasingly ubiquitous in modern society but the degradation of lithium-i...
To ensure smooth and reliable operations of battery systems, reliable prognosis with accurate predic...
Prediction of battery calendar ageing is a key but challenging issue in the development of durable e...
Prognostics of batteries involve state estimation and remaining useful life (RUL) prediction. Variou...
Lithium-ion battery state of health (SOH) accurate prediction is of great significance to ensure the...
Accurate battery capacity prediction is important to ensure reliable battery operation and reduce th...
Battery calendar aging prediction is of extreme importance for developing durable electric vehicles....
Remaining useful life (RUL) prediction of batteries is important for the health management and safet...
The paper deals with the subject of the prediction of useful energy during the cycling of a lithium-...
The ability to accurately predict lithium-ion battery life-time already at an early stage of battery...
Accurate on-board capacity estimation is of critical importance in lithium-ion battery applications....
Predicting the performance of Li-ion batteries over lifetime is necessary for design and optimal ope...
Accurately predicting the future health of batteries is necessary to ensure reliable operation, mini...
Capacity degradation of lithium-ion batteries under long-term cyclic aging is modeled via a flexible...
This article presents the development of machine-learning-enabled data-driven models for effective c...
Lithium-ion batteries are increasingly ubiquitous in modern society but the degradation of lithium-i...
To ensure smooth and reliable operations of battery systems, reliable prognosis with accurate predic...
Prediction of battery calendar ageing is a key but challenging issue in the development of durable e...
Prognostics of batteries involve state estimation and remaining useful life (RUL) prediction. Variou...
Lithium-ion battery state of health (SOH) accurate prediction is of great significance to ensure the...
Accurate battery capacity prediction is important to ensure reliable battery operation and reduce th...
Battery calendar aging prediction is of extreme importance for developing durable electric vehicles....
Remaining useful life (RUL) prediction of batteries is important for the health management and safet...
The paper deals with the subject of the prediction of useful energy during the cycling of a lithium-...
The ability to accurately predict lithium-ion battery life-time already at an early stage of battery...
Accurate on-board capacity estimation is of critical importance in lithium-ion battery applications....
Predicting the performance of Li-ion batteries over lifetime is necessary for design and optimal ope...
Accurately predicting the future health of batteries is necessary to ensure reliable operation, mini...
Capacity degradation of lithium-ion batteries under long-term cyclic aging is modeled via a flexible...