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Neural Networks Associated with the “Black Box” Models of Non-Linear Dynamic Systems

机译:与非线性动态系统“黑匣子”模型相关的神经网络

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The approximation of non-linear dynamic system operators by way of describing the input-output relationship with the help of mathematical models is considered. A neural network is one of famous mathematical models. The types of neural networks are represented as the universal approximators of nonlinear operators. The classification of recurrent neural networks according to the feedback location is described. The recurrent Hammerstein network is used as a mathematical model of a non-linear compensator for digital communication channels. The source of non-linear signal distortion in communication channels is a power amplifier. It is found that the model of a non-linear compensator in the form of the recurrent Hammerstein network exceeds the two-layer perceptron network in the accuracy of signal processing and the Volterra polynomial in the simplicity of hardware implementation.
机译:考虑了借助于数学模型描述输入-输出关系的非线性动态系统算子的近似。神经网络是著名的数学模型之一。神经网络的类型表示为非线性算子的通用逼近器。描述了根据反馈位置对递归神经网络的分类。递归的Hammerstein网络被用作数字通信信道的非线性补偿器的数学模型。通信通道中非线性信号失真的来源是功率放大器。已经发现,以递归Hammerstein网络形式存在的非线性补偿器模型在信号处理的准确性和Volterra多项式在简化硬件实现方面都超过了两层感知器网络。

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