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A Neural Network Approach To Fir Filter Design Using Frequency-response Masking Technique

机译:频率响应屏蔽技术的杉木滤网设计的神经网络方法

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This paper presents a new optimization method for the design of various frequency-response-masking (FRM)-based linear-phase finite-impulse response (FIR) digital filters. The method is based on a batch back-propagation neural network algorithm (NNA), which is taken as a variable learning rate mode. In order to reduce the complexity, the following two-step optimization technique is proposed. At the first step, an initial FRM filter is designed by alternately optimizing the sub-filters. This solution is then used as a start-up solution for further optimization. At the second step, the coefficients of overall sub-filters are optimized simultaneously by the NNA. Algorithm details for the design of basic and multistage FRM filters are presented to show that the proposed approach offers a unified design framework for a variety of FRM filters. Some examples taken from the literatures are included and the results show that the proposed algorithm can design better FRM filters than several existing methods.
机译:本文为基于各种频率响应屏蔽(FRM)的线性相位有限冲激响应(FIR)数字滤波器的设计提出了一种新的优化方法。该方法基于批量反向传播神经网络算法(NNA),该算法被视为可变学习率模式。为了降低复杂度,提出了以下两步优化技术。第一步,通过交替优化子滤波器来设计初始FRM滤波器。然后将此解决方案用作进一步优化的启动解决方案。在第二步,由NNA同时优化整个子滤波器的系数。介绍了基本和多级FRM滤波器设计的算法细节,以表明所提出的方法为各种FRM滤波器提供了统一的设计框架。文中列举了一些实例,结果表明,与几种现有方法相比,该算法可以设计出更好的FRM滤波器。

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