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A Quantized Stochastic Modeling Approach for Fault Diagnosis of Lithium-ion Batteries

机译:锂离子电池故障诊断的量化随机建模方法

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Safety and reliability are still key concerns for the Lithium-ion (Li-ion) battery systems in spite of their current popularity as energy storage solutions for transportation and other applications. To improve the overall reliability of the Li-ion batteries, the Battery Management Systems (BMS) should have the capabilities to detect different types of faults. Some of these faults can lead to catastrophic scenarios if they are not diagnosed early. In this paper, a stochastic approach of quantized systems is proposed for fault detection in Li-ion batteries. The scheme uses a quantized stochastic model derived from the equivalent circuit model of the battery to predict the most probable future states/outputs from the measured inputs and quantized outputs. Fault detection is achieved via comparison of the expected event and the actual event. To illustrate the effectiveness of the approach, the model parameters for commercial Li-ion battery cell have been extracted from experiments, and then faults are injected in simulation studies.
机译:尽管锂离子电池系统作为运输和其他应用中的能量存储解决方案目前很受欢迎,但是安全性和可靠性仍然是锂离子电池系统的关键问题。为了提高锂离子电池的整体可靠性,电池管理系统(BMS)应该具有检测不同类型故障的能力。如果不及早诊断,其中一些故障可能会导致灾难性的情况。本文提出了一种用于锂离子电池故障检测的量化系统随机方法。该方案使用从电池等效电路模型得出的量化随机模型,从测量的输入和量化的输出预测最可能的未来状态/输出。通过比较预期事件和实际事件来实现故障检测。为了说明该方法的有效性,从实验中提取了商用锂离子电池单元的模型参数,然后在仿真研究中注入了故障。

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