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Legendre neural networks with multi input multi output system equations

机译:具有多输入多输出系统方程的Legendre神经网络

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This paper investigates a new methodology and structure for the neural network (NN) to enhance nonlinear multi-input multi-output (MIMO) signal processing. The new methodology depends on Legendre series expansion for the input pattern vectors. The proposed structure employs a flat single layer of neurons with linear transfer functions. This eliminates the hidden layers, the sigmoid non-linear transfer functions and back-propagation commonly employed in the conventional NN. The orthogonality offered by Legendre series improves the convergence properties of the proposed Legendre neural network (LNN). The nonlinearity of Legendre series plays the rule of the sigmoid non-linear transfer functions in the conventional NN. The linear transfer functions adopted provide the proposed LNN with the great advantage of providing solid and explicit formulae relating the input and target pattern vectors for any MIMO system at any field. A fast and uniform multi input/output LMS Newton type adaptive algorithm has been explored for training the proposed LNN in an incremental mode. The employment and improved performance of the proposed LNN in the field of modelling/simulation are illustrated through simulation experiments.
机译:本文研究了神经网络(NN)的新方法和结构,以增强非线性多输入多输出(MIMO)信号处理。新方法取决于输入模式向量的Legendre系列扩展。所提出的结构采用平坦的单层神经元,具有线性转移功能。这消除了隐藏的层,矩形非线性传递函数和通常用于传统NN中的反向传播。 Legendre系列提供的正交性提高了所提出的Legendre神经网络(LNN)的收敛性。 Legendre系列的非线性在常规NN中播放了Sigmoid非线性传递函数的规则。采用的线性传递函数提供了所提出的LNN,其具有提供有关任何领域任何MIMO系统的输入和目标图案向量的固体和显式公式。已经探索了一种快速且均匀的多输入/输出LMS牛顿型自适应算法,用于以增量模式训练所提出的LNN。通过仿真实验说明了建模/模拟领域所提出的LNN的就业和改进的性能。

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