open access publication

Article, 2023

Battery impedance spectrum prediction from partial charging voltage curve by machine learning

Journal of Energy Chemistry, ISSN 2095-4956, Volume 79, Pages 211-221, 10.1016/j.jechem.2023.01.004

Contributors

Guo, Jia 0000-0002-3882-9266 [1] Che, Yunhong 0000-0002-7350-0001 (Corresponding author) [1] Pedersen, Kjeld 0000-0002-6835-1566 [1] Stroe, Daniel-Ioan 0000-0002-2938-8921 [1]

Affiliations

  1. [1] Aalborg University
  2. [NORA names: AAU Aalborg University; University; Denmark; Europe, EU; Nordic; OECD]

Abstract

Electrochemical impedance spectroscopy (EIS) is an effective technique for Lithium-ion battery state of health diagnosis, and the impedance spectrum prediction by battery charging curve is expected to enable battery impedance testing during vehicle operation. However, the mechanistic relationship between charging curves and impedance spectrum remains unclear, which hinders the development as well as optimization of EIS-based prediction techniques. In this paper, we predicted the impedance spectrum by the battery charging voltage curve and optimized the input based on electrochemical mechanistic analysis and machine learning. The internal electrochemical relationships between the charging curve, incremental capacity curve, and the impedance spectrum are explored, which improves the physical interpretability for this prediction and helps define the proper partial voltage range for the input for machine learning models. Different machine learning algorithms have been adopted for the verification of the proposed framework based on the sequence-to-sequence predictions. In addition, the predictions with different partial voltage ranges, at different state of charge, and with different training data ratio are evaluated to prove the proposed method have high generalization and robustness. The experimental results show that the proper partial voltage range has high accuracy and converges to the findings of the electrochemical analysis. The predicted errors for impedance spectrum are less than 1.9 mΩ with the proper partial voltage range selected by the corelative analysis of the electrochemical reactions inside the batteries. Even with the voltage range reduced to 3.65–3.75 V, the predictions are still reliable with most RMSEs less than 4 mΩ.

Keywords

Mo, RMSE, accuracy, algorithm, analysis, battery, battery charging curves, capacity curves, charge, charging curves, corelation analysis, curves, data ratio, development, diagnosis, effective technique, electrochemical analysis, electrochemical impedance spectroscopy, electrochemical reactions, electrochemical relationships, error, experimental results, findings, framework, generalization, health diagnosis, impedance, impedance spectra, impedance spectroscopy, impedance tests, incremental capacity curves, input, interpretation, learning, learning algorithms, learning models, lithium-ion, lithium-ion battery state, machine, machine learning, machine learning algorithms, machine learning models, mechanistic analysis, method, model, operation, optimization, physical interpretation, prediction, prediction techniques, range, ratio, reaction, relationship, results, robustness, sequence-to-sequence prediction, spectra, spectroscopy, spectrum prediction, state, state of charge, state of health diagnosis, technique, test, training, training data ratio, vehicle, vehicle operation, verification, voltage, voltage curves, voltage range

Funders

  • China Scholarship Council

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