APPLICATION OF WAVELET THRESHOLD ALGORITHM OPTIMIZED BY CHAOTIC ADAPTIVE FIREWORKS ALGORITHM IN THE DE-NOISING OF MUZZLE RESPONSE SIGNALS

Yugang Ding, Ke-dong Zhou, Lei He, Haomin Yang
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Abstract

To extract the muzzle response signals effectively and reduce the noise in the signals, a novel de-noising method, i.e., wavelet threshold algorithm optimized by the chaotic adaptive fireworks algorithm, is proposed for the de-noising of the muzzle response signals. This method obtains the wavelet threshold by calculating the Stein’s unbiased risk estimate (SURE), and uses the chaotic adaptive fireworks algorithm to search for the global optimal threshold, which can avoid the threshold falling into local optimal value effectively. Meanwhile, a novel threshold function is adopted to keep the balance between the signal preservation and noise filtering. To verify the de-noising effect of this method, the wavelet threshold algorithm optimized by gradient descent algorithm and the wavelet threshold algorithm based on standard soft threshold function are introduced to compare the denoising effect of the Blocks signal, HeaviSine signal and the measured muzzle response signal under the interference of Gaussian white noise. The results show that the proposed method can effectively suppress the noise while retaining the details in the muzzle response signal, and exhibits a promising prospect in practical application.
混沌自适应烟花算法优化的小波阈值算法在炮口响应信号去噪中的应用
为了有效提取炮口响应信号并降低信号中的噪声,提出了一种新的炮口响应信号去噪方法,即混沌自适应烟花算法优化的小波阈值算法。该方法通过计算Stein无偏风险估计(SURE)得到小波阈值,并利用混沌自适应烟花算法搜索全局最优阈值,有效避免了阈值陷入局部最优。同时,采用一种新的阈值函数来保持信号保持和噪声滤波的平衡。为了验证该方法的去噪效果,介绍了梯度下降算法优化的小波阈值算法和基于标准软阈值函数的小波阈值算法,比较了高斯白噪声干扰下Blocks信号、HeaviSine信号和实测枪口响应信号的去噪效果。结果表明,该方法能够有效地抑制噪声,同时保留炮口响应信号中的细节,具有很好的实际应用前景。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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