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Health diagnosis and remaining useful life prognostics of lithium-ion batteries using data-driven methods

机译:使用数据驱动方法进行锂离子电池的健康诊断和剩余使用寿命预测

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摘要

The accurate estimation of state of health (SOH) and a reliable prediction of the remaining useful life (RUL) of Lithium-ion (Li-ion) batteries in hybrid and electrical vehicles are indispensable for safe and lifetime-optimized operation. The SOH is indicated by internal battery parameters like the actual capacity value. Furthermore, this value changes within the battery lifetime, so it has to be monitored on-board the vehicle. In this contribution, a new data-driven approach for embedding diagnosis and prognostics of battery health in alternative power trains is proposed. For the estimation of SOH and RUL, the support vector machine (SVM) as a well-known machine learning method is used. As the estimation of SOH and RUL is highly influenced by environmental and load conditions, the SVM is combined with a new method for training and testing data processing based on load collectives. For this approach, an intensive measurement investigation was carried out on Li-ion power-cells aged to different degrees ensuring a large amount of data.
机译:对于安全和生命周期优化的操作而言,准确地估计健康状态(SOH)和可靠地预测混合动力和电动车辆中锂离子(Li-ion)电池的剩余使用寿命(RUL)是必不可少的。 SOH由内部电池参数(例如实际容量值)指示。此外,该值在电池寿命内会发生变化,因此必须在车辆上对其进行监控。在此贡献中,提出了一种新的数据驱动方法,用于在备用动力总成中嵌入电池健康状况的诊断和预测。为了估计SOH和RUL,使用了支持向量机(SVM)作为众所周知的机器学习方法。由于SOH和RUL的估算受环境和负载条件的影响很大,因此SVM与基于负载集合的训练和测试数据处理的新方法结合在一起。对于这种方法,对老化程度不同的锂离子动力电池进行了深入的测量研究,以确保大量数据。

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