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Information-Theoretic Measures and Sequential Monte Carlo Methods for Detection of Regeneration Phenomena in the Degradation of Lithium-Ion Battery Cells

机译:信息理论方法和顺序蒙特卡罗方法检测锂离子电池降解中的再生现象

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摘要

This paper analyses and compares the performance of a number of approaches implemented for the detection of capacity regeneration phenomena (measured in ampere-hours) in the degradation trend of energy storage devices, particularly Lithium-Ion battery cells. All implemented approaches are based on a combination of information-theoretic measures and sequential Monte Carlo methods for state estimation in nonlinear, non-Gaussian dynamic systems. Properties of information measures are conveniently used to quantify the impact of process measurements on the posterior probability density function of the state, assuming that sub-optimal Bayesian estimation algorithms (such as classic or risk-sensitive particle filters) are to be used to obtain an empirical representation of the system uncertainty. The proposed anomaly detection strategies are tested and evaluated both in terms of (i) detection time (early detection) and (ii) false alarm rates. Verification of detection schemes is performed using simulated data for battery State-Of-Health accelerated degradation tests, to ensure absolute knowledge on the time instant where a regeneration phenomenon occurs.
机译:本文分析并比较了用于检测能量存储设备(尤其是锂离子电池)退化趋势中的容量再生现象(以安培小时为单位)的多种方法的性能。所有实现的方法都基于信息理论方法和顺序蒙特卡洛方法的组合,用于非线性非高斯动态系统中的状态估计。信息量度的属性可方便地用于量化过程量度对状态的后验概率密度函数的影响,假设要使用次优贝叶斯估计算法(例如经典或对风险敏感的粒子过滤器)来获得系统不确定性的经验表示。根据(i)检测时间(早期检测)和(ii)虚警率,对提出的异常检测策略进行了测试和评估。检测方案的验证是使用模拟数据进行的电池运行状况加速退化测试,以确保绝对了解发生再生现象的时间。

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