基于人工智能的电池健康状态(SoH)预测,通过分析电池数据特征

Sungsan Choi, Hyeonwoo Jang, Hohyeon Han, Sangmin Park, Myeong-in Choi, Sehyun Park
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引用次数: 1

摘要

电池应用于各种场合,包括便携式设备和储能设备。但是,由于电池老化,损坏或严重时,会发生爆炸事故。因此,对电池稳定性和寿命的研究仍在继续。然而,由于各种变量的影响,电池SoH的预测是困难的。基于数据的人工智能预测可以解决这个问题。本文对NASA提供的锂离子电池剩余寿命预测数据集进行分析,提取寿命特征,并通过人工智能技术进行SoH预测。采用支持向量机(SVM)和长短期记忆(LSTM)作为人工智能算法。因此,对于具有时间机制的NASA电池数据,每个数据集提取3个特征,SVM的RMSE结果低于LSTM,具有较高的精度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Artificial Intelligence-based Battery State-of-Health (SoH) Prediction through battery data characteristics analysis
Batteries are used in various places, including portable devices and energy storage devices. However, due to aging batteries, it is broken or in severe cases, an explosion accident is occurring. Therefore, research on the stability and life of batteries continues. However, prediction of battery SoH is difficult due to various variables. Data-based artificial intelligence prediction can be made to solve this problem. This paper analyzed the battery data set provided by NASA to predict the remaining life of a lithium-ion battery, extracted the life characteristics, and predicted the SoH through artificial intelligence technology. Support Vector Machine (SVM) and Long Short-Terms Memory (LSTM) were used as artificial intelligence algorithms. As a result, for NASA battery data with temporal mechanism, 3 characteristics were extracted for each data set, and the RMSE of SVM showed lower results than LSTM, showing relatively high accuracy.
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