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Noise Smoothing for Nonlinear Time Series Using Wavelet Soft Threshold

机译:基于小波软阈值的非线性时间序列噪声平滑

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In this letter, a new threshold algorithm based on wavelet analysis is applied to smooth noise for a nonlinear time series. By detailing the signals decomposed onto different scales, we smooth the details by using the updated thresholds to different characters of a noisy nonlinear signal. This method is an improvement of Donoho's wavelet methods to nonlinear signals. The approach has been successfully applied to smoothing the noisy chaotic time series generated by the Lorenz system as well as the observed annual runoff of Yellow River. For the nonlinear dynamical system, an attempt is made to analyze the noise reduced data by using multiresolution analysis, i.e., the false nearest neighbors, correlation integral, and autocorrelation function, to verify the proposed noise smoothing algorithm
机译:在本文中,将基于小波分析的新阈值算法应用于平滑非线性时间序列的噪声。通过详细说明分解为不同尺度的信号,我们通过对噪声非线性信号的不同特征使用更新的阈值来平滑细节。该方法是对非线性信号的Donoho小波方法的改进。该方法已成功应用于平滑Lorenz系统产生的嘈杂混沌时间序列以及黄河的年径流量。对于非线性动力学系统,尝试使用多分辨率分析(即伪最近邻,相关积分和自相关函数)来分析降噪数据,以验证所提出的噪声平滑算法

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