The state-of-health (SOH) estimation of lithium-ion batteries (LIBs) is of great importance to the safety of systems. In this article, a novel ensemble learning method is proposed to accurately estimate the SOH of LIBs. A feature defined as the duration of the same charging voltage range (DSCVR) is extracted as the key health indicator for the LIB. The Pearson correlation analysis is performed to select four optimal indicators that are used as inputs of the prediction model. A random learning algorithm named extreme learning machine (ELM) is applied to extract the mapping knowledge relationship between the health indicators and the SOH due to its fast learning speed and efficient tuning mechanism. Moreover, an ensemble learning structure is...
Lithium-ion batteries play a crucial role in vehicle electrification to meet the goals of reducing f...
Because lithium-ion batteries are widely used for various purposes, it is important to estimate thei...
Data-Driven approaches for State of Charge (SOC) prediction have been developed considerably in rece...
The application of machine learning-based state of health (SOH) prediction is hindered by large dema...
In this study, a machine learning method is proposed for online diagnosis of battery state of health...
This article reports a new state of health (SOH) estimation method for lithium-ion batteries using m...
To ensure the secure and stable operation of lithium-ion batteries, the state of health (SOH) and th...
The prediction of SOH for Lithium-ion battery systems determines the safety of Electric vehicles and...
Summary: Accurate state of health (SOH) prediction is significant to guarantee operation safety and ...
The remaining useful life (RUL) is the key element of fault diagnosis, prediction and health managem...
Precise estimation of state of health (SOH) are of great importance for proper operation of lithium-...
This article proposes an adaptive state of health (SOH) estimation method for lithium-ion batteries ...
With the development of cloud and edge computing, deep learning based on big data has been widely ut...
Accurate state of health (SOH) estimation is critical to the operation, maintenance, and replacement...
Lithium-ion batteries are ubiquitous in modern day applications ranging from portable electronics to...
Lithium-ion batteries play a crucial role in vehicle electrification to meet the goals of reducing f...
Because lithium-ion batteries are widely used for various purposes, it is important to estimate thei...
Data-Driven approaches for State of Charge (SOC) prediction have been developed considerably in rece...
The application of machine learning-based state of health (SOH) prediction is hindered by large dema...
In this study, a machine learning method is proposed for online diagnosis of battery state of health...
This article reports a new state of health (SOH) estimation method for lithium-ion batteries using m...
To ensure the secure and stable operation of lithium-ion batteries, the state of health (SOH) and th...
The prediction of SOH for Lithium-ion battery systems determines the safety of Electric vehicles and...
Summary: Accurate state of health (SOH) prediction is significant to guarantee operation safety and ...
The remaining useful life (RUL) is the key element of fault diagnosis, prediction and health managem...
Precise estimation of state of health (SOH) are of great importance for proper operation of lithium-...
This article proposes an adaptive state of health (SOH) estimation method for lithium-ion batteries ...
With the development of cloud and edge computing, deep learning based on big data has been widely ut...
Accurate state of health (SOH) estimation is critical to the operation, maintenance, and replacement...
Lithium-ion batteries are ubiquitous in modern day applications ranging from portable electronics to...
Lithium-ion batteries play a crucial role in vehicle electrification to meet the goals of reducing f...
Because lithium-ion batteries are widely used for various purposes, it is important to estimate thei...
Data-Driven approaches for State of Charge (SOC) prediction have been developed considerably in rece...