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Estimation of lithium-ion battery health state using MHATTCN network with multi-health indicators inputs

Fengming Zhao, De-Xin Gao, Yuan-Ming Cheng, Yang Qing

2024Scientific Reports11 citationsDOIOpen Access PDF

Abstract

Accurately predicting the state of health (SOH) of lithium-ion batteries is fundamental in estimating their remaining lifespan. Various parameters such as voltage, current, and temperature significantly influence the battery's SOH. However, existing data-driven methods necessitate substantial data from the target domain for training, which hampers the assessment of lithium-ion battery health at the initial stage. To address these challenges, this paper introduces the multi-head attention-time convolution network (MHAT-TCN), amalgamating multi-head attention learning with random block dropout techniques. Additionally, it employs grey relational analysis (GRA) to select health indicators (HIs) highly correlated with battery capacity, thereby enhancing the accuracy of the model training. Employing leave-one-out crossvalidation (LOOCV), the MHAT-TCN network is pre-trained using data from batteries of the same model to facilitate comprehensive prediction of the target battery throughout its operational period. Results demonstrate that the MHAT-TCN network trained on HIs outperforms other models, enabling precise predictions across the entire operational period.

Topics & Concepts

Computer scienceState of healthBattery (electricity)Dropout (neural networks)Lithium-ion batteryArtificial intelligenceMachine learningData miningPower (physics)Quantum mechanicsPhysicsAdvanced Battery Technologies ResearchAdvancements in Battery MaterialsElectric Vehicles and Infrastructure
Estimation of lithium-ion battery health state using MHATTCN network with multi-health indicators inputs | Litcius