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A linearization based non-iterative approach to measure the gaussian noise level for chaotic time series

机译:基于线性化的非迭代方法来测量混沌时间序列的高斯噪声水平

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In this work we propose a non-iterative method to determine the noise level of chaotic time series. For this purpose, we use the gaussian noise functional derived by Schreiber in 1993. It is shown that the noise function could be approximated by a stretched exponential decay form. The decay function is then used to construct a linear least squares approach where global solution exists. We have developed a software basis to calculate the noise level which is based on TISEAN algorithms. A practical way to exclude the outlying observations for small length scales has been proposed to prevent estimation bias.The algorithm is tested on well known chaotic systems including Henon,Ikeda map and Lorenz,Rossler,Chua flow data.Although the results of the algorithm obtained from simulated discrete dynamics are not satisfactory, we have shown that it performs well on flow data even for extreme level of noise. The results that are obtained from the real world financial and biomedical time series have been interpreted.
机译:在这项工作中,我们提出了一种非迭代方法来确定混沌时间序列的噪声水平。为此,我们使用了Schreiber在1993年推导的高斯噪声函数。结果表明,该噪声函数可以通过扩展的指数衰减形式来近似。然后使用衰减函数构造存在整体解的线性最小二乘法。我们已经开发了基于TISEAN算法的软件基础来计算噪声水平。为了避免估计偏差,提出了一种实用的方法来排除小规模尺度的外围观测值。该算法在包括Henon,Ikeda映射和Lorenz,Rossler,Chua流数据在内的众所周知的混沌系统上进行了测试。从模拟离散动力学得出的结果并不令人满意,我们证明了即使在极端噪声水平下,它在流量数据上的表现也很好。从现实世界的财务和生物医学时间序列中获得的结果已得到解释。

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