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Novel battery state-of-health online estimation method using multiple health indicators and an extreme learning machine

机译:使用多个健康指标和极限学习机的新型电池健康状态在线估计方法

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摘要

Battery health monitoring and management is critically important for electric vehicle performance and economy. This paper presents a multiple health indicators-based and machine learning-enabled state-of-health estimator for prognostics and health management. The multiple online health indicators without the influence of different loading profiles are used as effective signatures of the health estimator for effective quantification of capacity degradation. An extreme learning machine is introduced to capture the underlying correlation between the extracted health indicators and capacity degradation to improve the speed and accuracy of machine learning for online estimation. The proposed estimator is also compared to the traditional BP neural network. The associated results indicate that the maximum estimation error of the proposed health management strategy is less than 2.5%, and it has better performance and faster speed than the BP neural network. (C) 2018 Elsevier Ltd. All rights reserved.
机译:电池健康状况的监测和管理对于电动汽车的性能和经济性至关重要。本文提出了用于预测和健康管理的,基于多个健康指标且支持机器学习的健康状况估计器。不受不同负载配置文件影响的多个在线健康指标被用作健康估算器的有效特征,以有效量化容量下降。引入了一种极限学习机来捕获所提取的健康指标与容量退化之间的潜在相关性,从而提高用于在线估计的机器学习的速度和准确性。提出的估计器也与传统的BP神经网络进行了比较。相关结果表明,所提出的健康管理策略的最大估计误差小于2.5%,并且比BP神经网络具有更好的性能和更快的速度。 (C)2018 Elsevier Ltd.保留所有权利。

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