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Improved recurrent NARX neural network model for state of charge estimation of lithium-ion battery using pso algorithm

机译:改进的递归NARX神经网络模型用于pso算法估算锂离子电池的充电状态

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This paper aims to develop an accurate estimation technique for computing state of charge (SOC) of a lithium-ion battery using recurrent neural network algorithm. Nonlinear autoregressive with exogenous input (NARX) model is a well-known subclass of the recurrent neural network which has proven to be very effective and computationally rich for controlling dynamic system and predicting time series. However, the accuracy of recurrent NARX neural network depends on the amount of input and output order as well as a number of neurons in a hidden layer. Therefore, this study presents an improved recurrent NARX neural network based SOC estimation with particle swarm optimization (PSO) algorithm for finding the best value of input delays, feedback delays and a number of neurons in a hidden layer. The proposed model uses three most significant factor such as current, voltage and temperature without considering battery model. The model robustness is checked at low temperature (0°C), medium temperature (25°C), and high temperature (45°C). The US06 drive cycle is selected for model training and testing. The effectiveness of the proposed approach is compared with the back-propagation neural network (BPNN) optimized by PSO based on the SOC error, root mean square error (RMSE) and mean absolute error (MAE) and average execution time (AET). The results prove that the proposed model has higher estimation speed and achieves higher accuracy in reducing RMSE and MAE by 53% and 50% than BPNN based PSO model at 25°C.
机译:本文旨在开发一种使用递归神经网络算法计算锂离子电池充电状态(SOC)的精确估算技术。带有输入的非线性自回归模型(NARX)是递归神经网络的一个著名子类,它已被证明对于控制动态系统和预测时间序列非常有效且计算量丰富。但是,递归NARX神经网络的准确性取决于输入和输出顺序的数量以及隐藏层中神经元的数量。因此,本研究提出了一种基于粒子群优化(PSO)算法的改进的基于循环NARX神经网络的SOC估计,用于在隐藏层中找到输入延迟,反馈延迟和多个神经元的最佳值。提出的模型使用了三个最重要的因素,例如电流,电压和温度,而没有考虑电池模型。在低温(0°C),中温(25°C)和高温(45°C)下检查模型的稳健性。选择US06行驶周期进行模型训练和测试。将该方法的有效性与通过PSO基于SOC误差,均方根误差(RMSE)和平均绝对误差(MAE)和平均执行时间(AET)优化的反向传播神经网络(BPNN)进行了比较。结果证明,与基于BPNN的PSO模型在25°C时相比,该模型具有更快的估计速度,并且在将RMSE和MAE降低53 \%和50 \%方面具有更高的精度。

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