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Design of equiripple FIR digital differentiators using neural weighted least-squares algorithm

机译:用神经加权最小二乘算法设计等波纹FIR数字微分器

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摘要

This paper extends the neural network based algorithm to the equiripple design of FIR digital differentiators in the weighted least-squares (WLS) sense. The error representation reformulated by the Lyapunov error function reflects the difference between the desired amplitude response and the designed response. The optimal filter coefficients are obtained when the neural network is convergent. Furthermore, the proposed method using a weighted updating-function can make a very good approximation of the minimax solution. Simulation results indicate that the proposed approach can achieve a good performance in the parallelism manner without incurring convergence problems.
机译:本文将基于神经网络的算法扩展到加权最小二乘(WLS)意义上的FIR数字微分器的等波纹设计。由Lyapunov误差函数重新构造的误差表示形式反映了所需幅度响应和设计响应之间的差异。当神经网络收敛时,可获得最佳滤波器系数。此外,所提出的使用加权更新函数的方法可以很好地逼近极小极大解。仿真结果表明,该方法能够以并行的方式取得良好的性能,而不会产生收敛问题。

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