基于多核相关向量机的锂离子电池容量实时估计

Yang Zhang, Hang Yao, Jianjun Qi, P. Jiang, B. Guo
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引用次数: 1

摘要

由于锂离子电池具有许多优良的特性,在便携式电子产品、电动汽车、航空航天和军事设备中越来越受欢迎。锂离子电池的预测和健康管理具有重要意义。本文提出了一种基于间接健康指标的锂离子电池实时容量估计的动态权值多核相关向量机混合模型(DW-MMKRVM)。DW-MMKRVM中各子模型的权重在连续在线数据采集和模型训练过程中不断更新。实验表明,该方法可以产生更稳健和准确的容量估计,这对锂离子电池的预测和健康管理至关重要。对比结果还表明,增加子模型的DW-MMKRVM可以提高估计精度。
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Real-Time Capacity Estimation of Lithium-ion Batteries Using a Novel Ensemble of Multi-Kernel Relevance Vector Machines
Lithium-ion batteries have been growing in popularity for portable electronics, electric vehicles, aerospace and military devices due to many excellent characteristics. The prognostics and health management of lithium-ion batteries are significant. In this paper, a novel mixture model of multi-kernel relevance vector machines with dynamic weights (DW-MMKRVM) is proposed to estimate the real-time capacity of lithium-ion batteries based on indirect health indicators. Weights of each sub-model in DW-MMKRVM keep updating during sequential, online data collection and model training. Experiments illustrate the proposed approach can produce more robust and accurate capacity estimation, which is critical for prognostics and health management of lithium-ion batteries. Comparison results also show that the proposed DW-MMKRVM with more sub-models can increase the estimation accuracy.
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