基于混合智能系统的磷酸铁锂动力电池故障检测系统

Log. J. IGPL Pub Date : 2020-01-24 DOI:10.1093/jigpal/jzz072
J. Casteleiro-Roca, Héctor Quintián-Pardo, J. Calvo-Rolle, J. A. M. Pérez, F. Castelo, E. Corchado
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引用次数: 14

摘要

如今,电池在许多不同的应用中发挥着重要作用,如储能、电动汽车、消费电子等。所有类型的电池都有一个共同的因素,即它们的复杂性,独立于其性质。通常,电池具有电化学性质。为了检查电池的性能,需要完成几种不同的测试,通常,根据技术的不同,它们的工作方式是可以预测的。本研究描述了一种混合智能系统,该系统用于完成对磷酸铁锂- lifepo4动力电池类型的故障检测,这种电池通常用于电动汽车应用。该方法是基于电压和电流特定值的电池温度行为。考虑到基于LiFePO4单元的实际系统的操作范围,使用了大量的操作点来实现数据集。作为第一步,通过聚类获得了不同的行为区。然后,对每个聚类使用不同的回归技术。采用多项式回归、人工神经网络和支持向量回归相结合的方法开发了混合智能模型。智能系统在运行范围内给出了很好的结果,检测出验证过程中测试的所有故障。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Lithium iron phosphate power cell fault detection system based on hybrid intelligent system
Nowadays, batteries play an important role in a lot of different applications like energy storage, electro-mobility, consumer electronic and so on. All the battery types have a common factor that is their complexity, independently of its nature. Usually, the batteries have an electrochemical nature. Several different test are accomplished to check the batteries performance, and commonly, it is predictable how they work depending of their technology. The present research describes the hybrid intelligent system created to accomplish fault detection over a Lithium Iron Phosphate—LiFePO4 power cell type, commonly used in electro-mobility applications. The approach is based on the cell temperatures behaviour for voltage and current specific values. Taken into account the operating range of a real system based on a LiFePO4 cell, a large set of points of operation have been used to achieve the dataset. The different behaviour zones have been obtained by clustering as a first step. Then, different regression techniques have been used over each cluster. Polynomial regression, artificial neural networks and support vector regression were the combined techniques to develop the hybrid intelligent model proposed. The intelligent system gives very good results over the operating range, detecting all the faults tested during the validation.
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