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Model-Based Stochastic Fault Detection and Diagnosis of Lithium-Ion Batteries

机译:基于模型的锂离子电池随机故障检测与诊断

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The Lithium-ion battery (Li-ion) has become the dominant energy storage solution in many applications, such as hybrid electric and electric vehicles, due to its higher energy density and longer life cycle. For these applications, the battery should perform reliably and pose no safety threats. However, the performance of Li-ion batteries can be affected by abnormal thermal behaviors, defined as faults. It is essential to develop a reliable thermal management system to accurately predict and monitor thermal behavior of a Li-ion battery. Using the first-principle models of batteries, this work presents a stochastic fault detection and diagnosis (FDD) algorithm to identify two particular faults in Li-ion battery cells, using easily measured quantities such as temperatures. In addition, models used for FDD are typically derived from the underlying physical phenomena. To make a model tractable and useful, it is common to make simplifications during the development of the model, which may consequently introduce a mismatch between models and battery cells. Further, FDD algorithms can be affected by uncertainty, which may originate from either intrinsic time varying phenomena or model calibration with noisy data. A two-step FDD algorithm is developed in this work to correct a model of Li-ion battery cells and to identify faulty operations in a normal operating condition. An iterative optimization problem is proposed to correct the model by incorporating the errors between the measured quantities and model predictions, which is followed by an optimization-based FDD to provide a probabilistic description of the occurrence of possible faults, while taking the uncertainty into account. The two-step stochastic FDD algorithm is shown to be efficient in terms of the fault detection rate for both individual and simultaneous faults in Li-ion batteries, as compared to Monte Carlo (MC) simulations.
机译:锂离子电池(Li-ion)具有更高的能量密度和更长的使用寿命,因此已成为许多应用(例如混合动力电动汽车和电动汽车)中主要的储能解决方案。对于这些应用,电池应性能可靠,并且不会对安全构成威胁。但是,锂离子电池的性能可能会受到异常热行为(称为故障)的影响。开发可靠的热管理系统以准确预测和监视锂离子电池的热行为至关重要。使用电池的第一性原理模型,这项工作提出了一种随机故障检测和诊断(FDD)算法,可以使用易于测量的数量(例如温度)来识别锂离子电池单元中的两个特定故障。此外,用于FDD的模型通常是从​​潜在的物理现象中得出的。为了使模型易于处理和有用,通常在模型开发过程中进行简化,从而可能导致模型与电池之间的不匹配。此外,FDD算法可能会受到不确定性的影响,不确定性可能源于固有的时变现象或带有噪声数据的模型校准。在这项工作中开发了两步FDD算法,以校正锂离子电池单元的模型并识别正常工作条件下的故障操作。提出了一个迭代优化问题,通过在测量量和模型预测之间合并误差来校正模型,然后进行基于优化的FDD,以提供对可能故障发生的概率描述,同时考虑不确定性。与蒙特卡罗(MC)仿真相比,两步随机FDD算法在锂离子电池中单个和同时故障的故障检测率方面均表现出较高的效率。

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