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AN OPTIMIZED RECURSIVE LEARNING ALGORITHM FOR THREE-LAYER FEEDFORWARD NEURAL NETWORKS FOR MIMO NONLINEAR SYSTEM IDENTIFICATIONS

机译:MIMO非线性系统识别的三层前向神经网络的最优递归学习算法

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摘要

Back-propagation with gradient method is the most popular learning algorithm for feed-forward neural networks. However, it is critical to determine a proper fixed learning rate for the algorithm. In this paper, an optimized recursive algorithm is presented for online learning based on matrix operation and optimization methods analytically, which can avoid the trouble to select a proper learning rate for the gradient method. The proof of weak convergence of the proposed algorithm also is given. Although this approach is proposed for three-layer, feed-forward neural networks, it could be extended to multiple layer feed-forward neural networks. The effectiveness of the proposed algorithms applied to the identification of behavior of a two-input and two-output non-linear dynamic system is demonstrated by simulation experiments.
机译:梯度法的反向传播是前馈神经网络最流行的学习算法。但是,为算法确定适当的固定学习率至关重要。提出了一种基于矩阵运算和优化方法的在线学习优化递归算法,避免了为梯度法选择合适的学习率的麻烦。给出了该算法弱收敛的证明。尽管此方法是针对三层前馈神经网络提出的,但它可以扩展到多层前馈神经网络。仿真实验证明了该算法在两输入两输出非线性动力学系统行为识别中的有效性。

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