This study investigates accurate state of charge estimation algorithms for lithium-ion batteries based on the long short-term memory recurrent neural network and transfer learning. The long short-term memory network with the five typical layer topology is firstly constructed to learn the dependency of state of charge on measured variables. The transfer learning algorithm with fine-tuning strategy is then exploited to regulate the parameters of fully connected layer and share the knowledge of other layers. By this manner, the information from the source data can be applied to predict state of charge of other batteries with less training data. Additionally, a rolling learning method is developed to update the model parameters when the battery...
All-electric ships (AES) are considered an effective solution for reducing greenhouse gas emissions ...
Capacity prediction of lithium-ion batteries represents an important function of battery management ...
2019 IEEE. This paper presents an enhanced machine learning based state of charge (SOC) estimation m...
This study investigates accurate state of charge estimation algorithms for lithium-ion batteries bas...
The application of machine learning-based state of health (SOH) prediction is hindered by large dema...
This paper presents a practical usability investigation of recurrent neural networks (RNNs) to deter...
Lithiumion (Li-ion) batteries have become increasingly useful within the automotive industry and mod...
Accurate state of charge estimation is essential to improve operation safety and service life of lit...
Accurate state of health (SOH) estimation is critical to the operation, maintenance, and replacement...
Accurate state of charge (SOC) estimation of lithium-ion batteries by the battery management system ...
The precise estimation of the state of charge (SOC) is fundamental to the reliable operation of lith...
The rise of renewable energy and electric vehicles has led to enormous growth and development in the...
Accurate estimation of the state of charge (SOC) of lithium-ion battery packs remains challenging du...
The state of charge and state of health estimations are two of the most crucial functions of a batte...
Because lithium-ion batteries are widely used for various purposes, it is important to estimate thei...
All-electric ships (AES) are considered an effective solution for reducing greenhouse gas emissions ...
Capacity prediction of lithium-ion batteries represents an important function of battery management ...
2019 IEEE. This paper presents an enhanced machine learning based state of charge (SOC) estimation m...
This study investigates accurate state of charge estimation algorithms for lithium-ion batteries bas...
The application of machine learning-based state of health (SOH) prediction is hindered by large dema...
This paper presents a practical usability investigation of recurrent neural networks (RNNs) to deter...
Lithiumion (Li-ion) batteries have become increasingly useful within the automotive industry and mod...
Accurate state of charge estimation is essential to improve operation safety and service life of lit...
Accurate state of health (SOH) estimation is critical to the operation, maintenance, and replacement...
Accurate state of charge (SOC) estimation of lithium-ion batteries by the battery management system ...
The precise estimation of the state of charge (SOC) is fundamental to the reliable operation of lith...
The rise of renewable energy and electric vehicles has led to enormous growth and development in the...
Accurate estimation of the state of charge (SOC) of lithium-ion battery packs remains challenging du...
The state of charge and state of health estimations are two of the most crucial functions of a batte...
Because lithium-ion batteries are widely used for various purposes, it is important to estimate thei...
All-electric ships (AES) are considered an effective solution for reducing greenhouse gas emissions ...
Capacity prediction of lithium-ion batteries represents an important function of battery management ...
2019 IEEE. This paper presents an enhanced machine learning based state of charge (SOC) estimation m...