...
首页> 外文期刊>Fortschritte der Physik >An adaptive denoising algorithm for chaotic signals based on collaborative filtering
【24h】

An adaptive denoising algorithm for chaotic signals based on collaborative filtering

机译:基于协同滤波的混沌信号自适应去噪算法

获取原文
获取原文并翻译 | 示例
           

摘要

Chaos is a seemingly random and irregular movement, happening in a deterministic system without random factors. Chaotic theory has promising applications in various areas (e.g., communication, image encryption, geophysics, weak signal detection). However, observed chaotic signals are often contaminated by noise. The presence of noise hinders the chaos theory from being applied to related fields. Therefore, it is important to develop a new method of suppressing the noise of the chaotic signals. Recently, the denoising algorithm for chaotic signals based on collaborative filtering was proposed. Its denoising performance is better than those of the existing denoising algorithms for chaotic signals. The denoising algorithm for chaotic signals based on collaborative filtering makes full use of the self-similar structural feature of chaotic signals. However, in the parameter optimization issue of the denoising algorithm, the selection of the filter parameters is affected by signal characteristic, sampling frequency and noise level. In order to improve the adaptivity of the denoising algorithm, a criterion for selecting the optimal filter parameters is proposed based on permutation entropy in this paper. The permutation entropy can effectively measure the complexity of time series. It has been widely applied to physical, medical, engineering, and economic sciences. According to the difference among the permutation entropies of chaotic signals at different noise levels, first, different filter parameters are used for denoising noisy chaotic signals. Then, the permutation entropy of the reconstructed chaotic signal corresponding to each of filter parameters is computed. Finally, the permutation entropies of the reconstructed chaotic signals are compared with each other, and the filter parameter corresponding to the minimum permutation entropy is selected as an optimal filter parameter. The selections of the filter parameters are analyzed in the cases of different signal characteristics, different sampling frequencies and different noise levels. Simulation results show that this criterion can automatically optimize the filter parameter efficiently in different conditions, which improves the adaptivity of the denoising algorithm for chaotic signals based on collaborative filtering.
机译:混乱是一种看似随机和不规则的运动,在没有随机因素的确定性系统中发生。混沌理论在各个领域具有有前途的应用(例如,通信,图像加密,地球物理,弱信号检测)。然而,观察到的混沌信号通常被噪声污染。噪声的存在阻碍了混沌理论被应用于相关领域。因此,开发一种抑制混沌信号噪声的新方法非常重要。最近,提出了基于协作滤波的混沌信号去噪算法。其去噪性能优于现有的混沌信号的现有去噪算法。基于协同滤波的混沌信号去噪算法充分利用混沌信号的自相似结构特征。然而,在去噪算法的参数优化问题中,滤波器参数的选择受信号特性,采样频率和噪声水平的影响。为了提高去噪算法的适应性,提出了基于本文的排列熵选择最佳滤波器参数的标准。置换熵可以有效地测量时间序列的复杂性。它已被广泛应用于物理,医疗,工程和经济科学。根据不同噪声水平的混沌信号的置换熵之间的差异,首先,不同的滤波器参数用于去噪噪声混沌信号。然后,计算与每个滤波器参数相对应的重建混沌信号的置换熵。最后,重建混沌信号的置换熵彼此进行比较,并且选择对应于最小置换熵的滤波器参数作为最佳滤波器参数。在不同信号特性,不同采样频率和不同噪声水平的情况下分析滤波器参数的选择。仿真结果表明,该标准可以在不同条件下有效地自动优化过滤器参数,这提高了基于协同滤波的混沌信号的去噪算法的适应性。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号