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首页> 外文期刊>Electronics and Communications in Japan. Part 2, Electronics >A Proposal of Neural Network Architecture for Nonlinear System Modeling
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A Proposal of Neural Network Architecture for Nonlinear System Modeling

机译:非线性系统建模的神经网络架构的建议

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摘要

This paper proposes new neural network architecture for nonlinear system modeling. The traditional modeling methods with neural network have the following problems: (1) difficulty in analyzing the internal representation, namely, the obtained values of the coupling weights, (2) no reproducibility due to the random scheme for weight initialization, (3) insufficient generalization ability for the input space in which no training sample exists. In order to overcome these deficiencies, the proposed method presents the following approaches. The first is the design of a sigmoid function with localized derivative. The second is a deterministic scheme for weight initialization. The third is an updating rule for weight parameters. Simulations were conducted based on several nonlinear systems with two inputs and one output. These results indicated small initial error, small modeling error, smooth convergence, and improvement of the difficulty in analyzing the internal representation.
机译:本文提出了一种新的用于非线性系统建模的神经网络架构。传统的基于神经网络的建模方法存在以下问题:(1)内部表示分析困难,即获得的耦合权重值;(2)由于权重初始化的随机方案而无法再现;(3)不足没有训练样本的输入空间的泛化能力。为了克服这些缺陷,所提出的方法提出了以下方法。首先是具有局部导数的S形函数的设计。第二个是权重初始化的确定性方案。第三是权重参数的更新规则。基于具有两个输入和一个输出的几个非线性系统进行了仿真。这些结果表明较小的初始误差,较小的建模误差,平滑的收敛性以及内部分析表示难度的提高。

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