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Using Fuzzy Preference Orderings in θ-Dominance with Application to Health Monitoring of Li-Ion Batteries

机译:在θ优势中使用模糊偏好排序及其在锂离子电池健康监测中的应用

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摘要

A Genetic Fuzzy Model of the State of Health of a Li-Ion battery is developed where both outputs of the system and its first derivative with respect to the stored charge are approximated. This approximation is a viable diagnosis technique to detect cell degradation in modern Li-Ion battery technologies. The model is fitted to data by means of a specialization of the theta-Dominance Evolutionary Algorithm, that alters the prioritization of the individuals in the selection stage. An specific operator is used which complements Pareto Non-Dominance levels with a partial order at each level thus models that are potentially better have a reproductive advantage. An empirical study is performed where the results of different multi and many-objectives genetic algorithms are assessed for this problem.
机译:建立了锂离子电池健康状态的遗传模糊模型,其中系统的输出及其相对于存储电荷的一阶导数都近似了。这种近似是一种可行的诊断技术,可以检测现代锂离子电池技术中的电池退化。该模型通过theta-Dominance进化算法的特殊化拟合到数据,该算法在选择阶段更改了个人的优先级。使用一个特定的运算符,该运算符在每个级别以部分顺序补充帕累托非主导级别,因此可能更好的模型具有繁殖优势。进行了一项实证研究,其中针对该问题评估了不同的多目标和多目标遗传算法的结果。

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