Voltage Sensor Fault Detection in Li-ion Battery Energy Storage Systems

Namireddy Praveen Reddy, Yuxuan Cai, R. Skjetne, Dimitrios Papageorgiou
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Abstract

Safe and optimal operation of battery energy storage systems requires correct measurement of voltage, current, and temperature. Therefore, fast and correct detection of sensor faults is of great importance. In this paper, model-based and non-model-based voltage sensor fault detection methods are developed for a comprehensive comparison. The residual is generated from the difference of measured voltage and estimated voltage. In the model-based method, the voltage is estimated using an extended Kalman filter (EKF). In the non-model-based method, the voltage is predicted using a recurrent neural network (RNN) with long short-term memory (LSTM). For both methods, a scalar generalized likelihood ratio (GLR) detector is developed to detect changes in the sequence of residual signal data and compared with a systematically computed threshold. The parameters threshold (h) and window-size (M) used in the GLR detector, are computed based on the probability of false alarm (Pf ) and probability of correct detection (Pd). The GLR detector demonstrates the ability to effectively detect the voltage sensor fault with a maximum delay of 500 ms for the model-based residual and 200 ms for the non-model-based method.
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锂离子电池储能系统电压传感器故障检测
电池储能系统的安全、优化运行需要正确测量电压、电流和温度。因此,快速、正确地检测传感器故障是非常重要的。本文对基于模型和非基于模型的电压传感器故障检测方法进行了综合比较。残差是由测量电压和估计电压的差值产生的。在基于模型的方法中,使用扩展卡尔曼滤波器(EKF)估计电压。在非基于模型的方法中,使用具有长短期记忆(LSTM)的递归神经网络(RNN)预测电压。对于这两种方法,开发了一个标量广义似然比(GLR)检测器来检测剩余信号数据序列的变化,并与系统计算的阈值进行比较。GLR检测器中使用的参数threshold (h)和window-size (M)是基于虚警概率(Pf)和正确检测概率(Pd)计算的。GLR检测器能够有效地检测电压传感器故障,基于模型的残差方法的最大延迟为500 ms,非基于模型的方法的最大延迟为200 ms。
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