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An adaptive neural network prediction for nonlinear parabolic distributed parameter system based on block-wise moving window technique

机译:基于分块移动窗口技术的非线性抛物线分布参数系统的自适应神经网络预测

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摘要

This paper proposes an efficient adaptive artificial neural network (ANN) model for nonlinear parabolic distributed parameter systems (DPSs) with changes in operating condition. To obtain the complex spatiotemporal dynamics of DPS, the ANN model is updated via applying block-wise recursive formula. The improved group search optimization (IGSO) approach is proposed to optimize the connection weights and thresholds of the ANN to solve the problem of falling into the local optima. Meanwhile, when the number of the new data does not reach the threshold of the block-wise, the ANN does not need to update. And, the predictive output consists of the ANN model predictive output and the compensated output obtained from the real time predictive errors by recursive least squares method. The proposed method can effectively capture the slowly changing of process dynamics and decrease the computational cost. Simulations are presented to demonstrate the accuracy and effectiveness of the proposed methods.
机译:本文针对工作条件变化的非线性抛物线分布参数系统(DPS)提出了一种有效的自适应人工神经网络(ANN)模型。为了获得DPS的复杂时空动力学,通过应用逐块递归公式来更新ANN模型。提出了一种改进的群组搜索优化(IGSO)方法来优化神经网络的连接权重和阈值,以解决陷入局部最优的问题。同时,当新数据的数量未达到逐块阈值时,ANN不需要更新。并且,预测输出由ANN模型预测输出和通过递推最小二乘法从实时预测误差获得的补偿输出组成。所提出的方法可以有效地捕获过程动力学的缓慢变化并降低计算成本。仿真结果证明了所提方法的准确性和有效性。

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