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Complementary Cooperation Algorithm Based on DEKF Combined With Pattern Recognition for SOC/Capacity Estimation and SOH Prediction

机译:基于DEKF与模式识别相结合的SOC /容量估计和SOH预测的互补协作算法。

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摘要

Differences in electrochemical characteristics among Li-ion batteries result in erroneous state-of-charge (SOC)/capacity estimation and state-of-health (SOH) prediction when using the existing dual extended Kalman filter (DEKF) algorithm. This paper presents a complementary cooperation algorithm based on DEKF combined with pattern recognition as an application Hamming neural network to the identification of suitable battery model parameters for improved SOC/capacity estimation and SOH prediction. Two kinds of pattern such as discharging/charging voltage pattern (DCVP) and capacity pattern (CP) were measured, together with the battery parameters, as representative patterns. Through statistical analysis, the Hamming network is applied for identification of the representative DCVP and CP that most closely matche that of the arbitrary battery to be measured. The model parameters of the representative battery are then applied for SOC/capacity estimation and SOH prediction of the arbitrary battery using the DEKF. This avoids the need for repeated parameter measurement.
机译:当使用现有的双扩展卡尔曼滤波器(DEKF)算法时,锂离子电池之间电化学特性的差异会导致错误的荷电状态(SOC)/容量估计和健康状态(SOH)预测。本文提出了一种基于DEKF结合模式识别的互补合作算法,并将其作为汉明神经网络的应用,用于识别合适的电池模型参数,以改善SOC /容量估计和SOH预测。测量了两种模式,例如放电/充电电压模式(DCVP)和容量模式(CP),以及电池参数,作为代表模式。通过统计分析,汉明网络可用于识别最接近要测量的任意电池的代表性DCVP和CP。然后将代表性电池的模型参数应用于使用DEKF的任意电池的SOC /容量估计和SOH预测。这避免了重复参数测量的需要。

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