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Lithium polymer battery modelling and fault detection design

机译:锂聚合物电池建模与故障检测设计

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摘要

The accurate battery model and parameters identification are used to produce a reliable Battery Management System (BMS). In this research, the battery model using the equivalent circuit Thevenin model is proposed after considering its complexity, model accuracy, and robustness. Parameters identification is done by using pulse test data that contains current and Vd (the difference between Open Circuit Voltage (OCV) and terminal voltage) data that represent the battery characteristics. Recursive Least Square (RLS) algorithm is used to estimate the parameter recursively in order to lighten the computation process. The fault detection is also simulated using Matlab Simulink as a design of effective and efficient BMS to protect the battery from damage or failure. The results show that the battery modelling with the equivalent circuit Thevenin model can represent battery dynamic well. Parameters identification with the RLS algorithm shows accurate results with RMSE of 0,0021. The validation result also shows that the parameters obtained are accurate with the error of 0,0104%. The fault detection simulation also shows accurate detection toward any fault operation of the battery. It can detect faults in some parameters such as SOC fault, OCV fault, and overvoltage.
机译:准确的电池模型和参数标识可用于生成可靠的电池管理系统(BMS)。在这项研究中,考虑到其复杂性,模型准确性和鲁棒性,提出了使用等效电路戴维宁模型的电池模型。通过使用包含电流和代表电池特性的Vd(开路电压(OCV)和端电压之间的差)数据的脉冲测试数据来完成参数识别。递推最小二乘(RLS)算法用于递归估计参数,以减轻计算过程。故障检测也使用Matlab Simulink进行了仿真,作为一种有效的BMS设计,可以保护电池免受损坏或故障。结果表明,采用戴维南等效电路的电池模型可以很好地表现电池动态。使用RLS算法进行的参数识别显示出准确的结果,RMSE为0.00021。验证结果还表明,所获得的参数准确,误差为0104%。故障检测仿真还显示了对电池任何故障操作的准确检测。它可以检测某些参数中的故障,例如SOC故障,OCV故障和过电压。

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