Rapid diagnosis of power battery faults in new energy vehicles based on improved boosting algorithm and big data

Q2 Energy Energy Informatics Pub Date : 2024-12-18 DOI:10.1186/s42162-024-00439-8
Jiali Wang, Jia Chen
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Abstract

In recent years, the new energy vehicle industry has developed rapidly. A fast diagnostic method based on Boosting and big data is proposed to address the low accuracy and efficiency of fault diagnosis in new energy vehicle power batteries. Boosting is a machine learning technique that combines multiple weak learners into a strong learner. Big data refers to large-scale, complex datasets that exceed traditional data processing capabilities. Firstly, analyze and preprocess the big data uploaded by the battery. Subsequently, the importance of indicators in the data was analyzed using the Random Forest algorithm (RF). Finally, three improved Boosting algorithms were proposed, namely Light Gradient Boosting Machine (LightGBM), eXtreme Gradient Boosting Tree (XGBoost), and Gradient Boosting Decision Tree (CatBoost). The experimental results indicate that the LightGBM model effectively detects anomalies in battery big data. The accuracy values of XGBoost, CatBoost, and LightGBM are 97.84%, 98.57%, and 99.16%, respectively. The recall rates of XGBoost, CatBoost, and LightGBM models are all 1. The F1 values of GBoost, CatBoost, and LightGBM are 0.873, 0.983, and 0.985, respectively. The power battery is the core component of new energy vehicles, and its safety performance directly affects the operational safety of the vehicle. Timely identification and diagnosis of battery faults can effectively reduce potential accidents such as battery overheating and short circuits. Research can achieve real-time monitoring and timely reminders of potential faults. By early detection of issues such as battery overheating and voltage imbalance, this method can effectively reduce the risk of serious safety accidents and improve the overall operational reliability of new energy vehicles during driving.

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基于改进助推算法和大数据的新能源汽车动力电池故障快速诊断
近年来,新能源汽车产业发展迅速。针对新能源汽车动力电池故障诊断准确率低、效率低的问题,提出了一种基于Boosting和大数据的快速诊断方法。boost是一种机器学习技术,它将多个弱学习器组合成一个强学习器。大数据是指超出传统数据处理能力的大规模、复杂的数据集。首先,对电池上传的大数据进行分析预处理。随后,利用随机森林算法(Random Forest algorithm, RF)对数据中指标的重要性进行分析。最后,提出了三种改进的增强算法,即光梯度增强机(LightGBM)、极限梯度增强树(XGBoost)和梯度增强决策树(CatBoost)。实验结果表明,LightGBM模型能够有效地检测电池大数据中的异常。XGBoost、CatBoost和LightGBM的准确率分别为97.84%、98.57%和99.16%。XGBoost、CatBoost、LightGBM型号召回率均为1。GBoost、CatBoost和LightGBM的F1值分别为0.873、0.983和0.985。动力电池是新能源汽车的核心部件,其安全性能直接影响到车辆的运行安全。及时识别和诊断电池故障,可以有效减少电池过热、短路等潜在事故。研究可以实现对潜在故障的实时监控和及时提醒。该方法通过早期发现电池过热、电压不平衡等问题,可以有效降低严重安全事故的风险,提高新能源汽车在行驶过程中的整体运行可靠性。
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来源期刊
Energy Informatics
Energy Informatics Computer Science-Computer Networks and Communications
CiteScore
5.50
自引率
0.00%
发文量
34
审稿时长
5 weeks
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