An Entropy-based Approach for Modeling Lithium-Ion Battery Capacity Fade

Alireza Namdari, Z. Li
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引用次数: 8

Abstract

Batteries are key components of many electronic devices including instrumentations, vehicles, embedded systems, and medical devices. The malfunction of batteries may cause failure in operations of the entire system. Thus, the health management of the batteries, such as the determination of the operating conditions and replacement intervals, is essential in order to ensure the normal functioning and operations of the entire system. The battery health indicators built on effective health monitoring can be integrated into a prognostic model such that the batteries will be operating within the design limits to meet expected performance and safety requirements. Entropy, which originated as a concept in physics and thermodynamics, has been widely used to measure the regularities and uncover the uncertainties of stochastic processes. Different entropy measures have been introduced since Shannon presented the first definition of entropy, including Permutation entropy, Renyi entropy, Tsallis entropy, Approximate entropy, and Sample entropy. In this study, we assess various entropy measures of short voltage sequences of multiple lithium-ion batteries under different testing conditions. Then a Support Vector Machine (SVM) is employed to model the relationship between the battery capacities and various entropy measures of battery voltages. Numerical results reveal that the entropy measures are effective estimators of battery capacity loss and the proposed SVM-Entropy-based model is capable of predicting the battery capacity fade with high accuracies.
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基于熵的锂离子电池容量衰减建模方法
电池是许多电子设备的关键部件,包括仪器、车辆、嵌入式系统和医疗设备。如果电池出现故障,可能会导致整个系统无法正常运行。因此,电池的健康管理,如确定运行条件和更换间隔,对于确保整个系统的正常功能和运行至关重要。建立在有效健康监测基础上的电池健康指标可以集成到预测模型中,从而使电池在设计限制内运行,以满足预期的性能和安全要求。熵是物理学和热力学中的一个概念,被广泛用于测量随机过程的规律性和揭示其不确定性。自香农提出熵的第一个定义以来,已经引入了不同的熵度量,包括置换熵、Renyi熵、Tsallis熵、近似熵和样本熵。在本研究中,我们评估了不同测试条件下多个锂离子电池短电压序列的各种熵测度。然后利用支持向量机(SVM)对电池容量与电池电压的各种熵测度之间的关系进行建模。数值结果表明,熵测度是电池容量损耗的有效估计方法,基于svm熵的模型能够较准确地预测电池容量衰减。
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