Publication | Open Access
Accurate Capacity Prediction and Evaluation with Advanced SSA-CNN-BiLSTM Framework for Lithium-Ion Batteries
22
Citations
25
References
2024
Year
Sparrow Search AlgorithmEngineeringMachine LearningEnergy EfficiencyRecurrent Neural NetworkAccurate Capacity PredictionData ScienceEmbedded Machine LearningEnergy Storage DeviceMemory EffectAdvanced Ssa-cnn-bilstm FrameworkElectrical EngineeringPredictive AnalyticsLithium-ion BatteriesLithium-ion BatteryComputer EngineeringEnergy StorageEnergy Storage SystemDeep LearningNeural Architecture SearchEnergy PredictionElectric BatteryEnergy ManagementBattery ConfigurationBatteries
Lithium-ion batteries (LIBs) have been widely used for electric vehicles owing to their high energy density, light weight, and no memory effect. However, their health management problems remain unsolved in actual application. Therefore, this paper focuses on battery capacity as the key health indicator and proposes a data-driven method for capacity prediction. Specifically, this method mainly utilizes Convolutional Neural Network (CNN) for automatic feature extraction from raw data and combines it with the Bidirectional Long Short-Term Memory (BiLSTM) algorithm to realize the capacity prediction of LIBs. In addition, the sparrow search algorithm (SSA) is used to optimize the hyper-parameters of the neural network to further improve the prediction performance of original network structures. Ultimately, experiments with a public dataset of batteries are carried out to verify and evaluate the effectiveness of capacity prediction under two temperature conditions. The results show that the SSA-CNN-BiLSTM framework for capacity prediction of LIBs has higher accuracy compared with other original network structures during the multi-battery cycle experiments.
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