2023
DOI: 10.3390/app13148498
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A Transferable Prediction Approach for the Remaining Useful Life of Lithium-Ion Batteries Based on Small Samples

Abstract: Predicting the remaining useful life (RUL) of batteries can help users optimize battery management strategies for better usage planning. However, the RUL prediction accuracy of lithium-ion batteries will face challenges due to fewer data samples available for the new type of battery. This paper proposed a transferable prediction approach for the RUL of lithium-ion batteries based on small samples to reduce time in preparing battery aging data and improve prediction accuracy. This approach, based on improvement… Show more

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“…In this section, the MMD-based feature transfer learning algorithm, the instance-based transfer learning algorithm, and the parameter-based transfer learning algorithm are compared on the same GateCNN-BiLSTM model to verify the effectiveness of the MMD feature transfer learning algorithm. For the instance-based transfer learning method, the classic TrAdaBoost algorithm [53] is selected. The main idea of this method is to select samples similar to the target domain from the source domain, re-weight them, and then add the weighted samples to the target domain training set to assist in the training of the target domain model.…”
Section: Single-source Domain Migration Methods Based On Domain Adapt...mentioning
confidence: 99%
“…In this section, the MMD-based feature transfer learning algorithm, the instance-based transfer learning algorithm, and the parameter-based transfer learning algorithm are compared on the same GateCNN-BiLSTM model to verify the effectiveness of the MMD feature transfer learning algorithm. For the instance-based transfer learning method, the classic TrAdaBoost algorithm [53] is selected. The main idea of this method is to select samples similar to the target domain from the source domain, re-weight them, and then add the weighted samples to the target domain training set to assist in the training of the target domain model.…”
Section: Single-source Domain Migration Methods Based On Domain Adapt...mentioning
confidence: 99%