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An Improved Selective Active Noise Control Algorithm Based on Empirical Wavelet Transform

机译:一种基于经验小波变换的改进的选择性有源噪声控制算法

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The gradual adaptation and possibility of divergence have been the two main obstacles in the efficient implementation of conventional adaptive active noise control (ANC) to a wider range of applications. Selective ANC (SANC) has been proposed to rapidly reduce noise by selecting a pre-trained control filter for different primary noise detected, and improve the robustness of the system. For stationary noise, considerable noise reduction performance and system stability are obtained by SANC. However, for non-stationary noise, in order to track the variability of the signal, frequency-band-match and selection have to be conducted constantly, which results in high computational burden. To confront this problem, empirical wavelet transform (EWT) is introduced to simplify the matching and selection of SANC in this paper. This EWT based SANC (SANC_EWT) algorithm extracts the first mode of random noises, and attenuates the noise immediately by picking the optimal pre-trained control filter labeled by the first boundary. Therefore, computational complexity is reduced drastically. Simulation results show that convergence could be reached rapidly. Better noise reduction performance is achieved by SANC_EWT compared to conventional FxLMS and SANC algorithms.
机译:逐渐改编和分歧的可能性是在更广泛的应用范围内有效地实现传统自适应主动噪声控制(ANC)的两个主要障碍。选择性ANC(SANC)已经提出通过选择检测到的不同初级噪声的预训练控制滤波器来快速降低噪声,并提高系统的稳健性。对于静止噪声,SANC获得了相当大的降噪性能和系统稳定性。然而,对于非静止噪声,为了跟踪信号的可变性,必须不断地进行频带匹配和选择,从而导致高计算负担。为了面对这个问题,介绍了经验小波变换(EWT)以简化本文中SANC的匹配和选择。该基于EWT的SANC(SANC_EWT)算法提取了第一模式的随机噪声,并通过挑选由第一边界标记的最佳预训练控制滤波器立即衰减噪声。因此,计算复杂性大幅减少。仿真结果表明,可以迅速达到收敛。与传统的FXLMS和SANC算法相比,Sanc_ewt实现了更好的降噪性能。

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