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基于Informer神经网络的锂离子电池容量退化轨迹预测

唐梓巍 师玉璞 张雨禅 周奕博 杜慧玲

储能科学与技术2024,Vol.13Issue(5):1658-1666,9.
储能科学与技术2024,Vol.13Issue(5):1658-1666,9.DOI:10.19799/j.cnki.2095-4239.2023.0812

基于Informer神经网络的锂离子电池容量退化轨迹预测

Prediction of lithium-ion battery capacity degradation trajectory based on Informer

唐梓巍 1师玉璞 1张雨禅 1周奕博 1杜慧玲1

作者信息

  • 1. 西安科技大学材料科学与工程学院,陕西 西安 710054
  • 折叠

摘要

Abstract

Accurate prediction of lithium-ion battery capacity degradation trajectories enhances the efficiency of battery materials research.Aiming to resolve the challenges associated with the Transformer network in the prediction of lithium-ion battery capacity degradation trajectory,this study adopts the sliding window strategy and constructs a lithium-ion battery capacity degradation trajectory prediction method based on Informer,a time series forecasting model.First,the sliding window is used to divide and re-splice the dataset;this facilitates the neural network to exploit the correlation within the dataset;subsequently,the global timestamp applicable to lithium-ion battery data is designed according to the periodic time series capturing ability of Informer;finally,the model output is realized through the multistep rolling prediction method by using the first 10%of the battery capacity data to alleviate the error accumulation in the prediction,subsequently obtaining the complete prediction trajectory.The accuracy and training efficiency of the established model are verified using the lithium-ion battery dataset provided by the University of Maryland.Different error evaluation and time overhead metrics are selected in the training process;additionally,the generalizability of the model is verified using the lithium-ion battery dataset provided by NASA.Comparing the prediction results of the model in this study with that of the multilayer perceptron neural network,recurrent neural network,and Transformer network model,the following is observed:the degraded trajectories obtained in this study are best fitted to the real trajectories;the training time overhead is small;and,the average absolute and root mean square errors of the prediction results are controlled at 2.57%and 3.5%,thus verifying the validity of the proposed prediction method.

关键词

锂离子电池/容量退化轨迹/长时间序列预测/滑动窗口策略/Informer网络

Key words

lithium-ion battery/capacity degradation trajectory/long-term time series forcasting/sliding window strategy/Informer network

分类

信息技术与安全科学

引用本文复制引用

唐梓巍,师玉璞,张雨禅,周奕博,杜慧玲..基于Informer神经网络的锂离子电池容量退化轨迹预测[J].储能科学与技术,2024,13(5):1658-1666,9.

基金项目

陕西省科技厅陕煤联合基金重大专项(2021JLM-28). (2021JLM-28)

储能科学与技术

OA北大核心CSTPCD

2095-4239

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