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A support vector regression-based prognostic method for li-ion batteries working in variable operating states

机译:一种基于支持向量的基于回归的可变操作状态下的锂离子电池的预测方法

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Prognostics of failures is very important for health management of Li-ion batteries and has received increasing attention from both researchers and practitioners in recent years. In practice, a Li-ion battery system often works under variable operating states, which is usually caused by the evolving environment or the different operational conditions. Thus, for remaining useful cycles (RUC) prognostics in this situation, it is important to estimate the current operating state of the system. This paper proposes a support vector regression (SVR) based data-driven approach using the possibilistic clustering classification and particle filtering to estimate the system state and select SVR parameters according to the system state. Experiments data provided by NASA Ames Prognostics Center of Excellence are introduced to testify the superiority of the proposed method.
机译:失败的预测对于锂离子电池的健康管理非常重要,并且近年来从研究人员和从业者获得了越来越多的关注。在实践中,锂离子电池系统经常在可变操作状态下工作,通常由不断发展的环境或不同的操作条件引起。因此,为了剩余有用的循环(RUC)预后在这种情况下,重要的是估计系统的当前运行状态。本文提出了一种基于支持向量回归(SVR)的数据驱动方法,使用可能性聚类分类和粒子过滤来估计系统状态并根据系统状态选择SVR参数。 NASA AMES的实验数据推出了预后卓越中心,以证明所提出的方法的优越性。

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