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Optimal Design on FIR Digital Filters Using the Parallel Algorithm of Neural Networks

机译:利用神经网络并行算法对FIR数字滤波器的最佳设计

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This paper introduces in detail the optimal design approach of high-order FIR digital filter and differentiator using the algorithm of neural networks. The main idea is to minimize the sum of the square errors between the amplitude response of the ideal FIR digital filter or digital differentiator and that of the designed by training the weight vector of neural networks, then obtaining the impulse response of FIR digital filter or differentiator. The convergence theorem of the neural-network algorithm is presented and proved, and the optimal design approach is introduced by examples of high-order FIR digital filter and digital differentiator. The results show that the high-order FIR digital filter or digital differentiator designed by training the weights of neural networks has a very high precision and very fast convergence speed, and initial weights are stochastic. Therefore, the presented optimum design method in the paper is significantly effective.
机译:本文详细介绍了使用神经网络算法的高阶FIR数字滤波器和鉴定器的最佳设计方法。主要思想是最小化理想的FIR数字滤波器或数字差分器的幅度响应之间的平方误差和通过训练神经网络的权重向量的振幅响应,然后获得FIR数字滤波器或差分器的脉冲响应。提出和证明了神经网络算法的收敛定理,并且通过高阶FIR数字滤波器和数字差异器的示例介绍了最佳设计方法。结果表明,通过训练神经网络的重量设计的高阶FIR数字滤波器或数字差分器具有非常高的精度和非常快速的收敛速度,并且初始重量是随机性的。因此,本文所示的最佳设计方法显着有效。

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