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Effect of data gaps on correlation dimension computed from light curves of variable stars

机译:数据缺口对根据变星的光曲线计算的相关维数的影响

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摘要

Observational data, especially astrophysical data, is often limited by gaps in data that arises due to lack of observations for a variety of reasons. Such inadvertent gaps are usually smoothed over using interpolation techniques. However the smoothing techniques can introduce artificial effects, especially when non-linear analysis is undertaken. We investigate how gaps can affect the computed values of correlation dimension of the system, without using any interpolation. For this we introduce gaps artificially in synthetic data derived from standard chaotic systems, like the Rossler and Lorenz, with frequency of occurrence and size of missing data drawn from two Gaussian distributions. Then we study the changes in correlation dimension with change in the distributions of position and size of gaps. We find that for a considerable range of mean gap frequency and size, the value of correlation dimension is not significantly affected, indicating that in such specific cases, the calculated values can still be reliable and acceptable. Thus our study introduces a method of checking the reliability of computed correlation dimension values by calculating the distribution of gaps with respect to its size and position. This is illustrated for the data from light curves of three variable stars, R Scuti, U Monocerotis and SU Tauri. We also demonstrate how a cubic spline interpolation can cause a time series of Gaussian noise with missing data to be misinterpreted as being chaotic in origin. This is demonstrated for the non chaotic light curve of variable star SS Cygni, which gives a saturated D-2 value, when interpolated using a cubic spline. In addition we also find that a careful choice of binning, in addition to reducing noise, can help in shifting the gap distribution to the reliable range for D-2 values.
机译:观测数据,特别是天体物理数据,常常受到由于各种原因而缺乏观测导致的数据空白的限制。通常使用插值技术对此类无意间的间隙进行平滑处理。但是,平滑技术会引入人工效应,尤其是在进行非线性分析时。我们研究间隙如何影响系统相关维度的计算值,而无需使用任何插值。为此,我们在来自标准混沌系统(例如Rossler和Lorenz)的合成数据中人为地引入了差距,并从两个高斯分布中提取了出现频率和缺失数据的大小。然后我们研究了相关尺寸随间隙位置和间隙尺寸的变化而变化的情况。我们发现,对于平均间隙频率和大小的相当大的范围,相关维数的值没有受到显着影响,这表明在这种特定情况下,计算出的值仍然可以可靠且可以接受。因此,我们的研究引入了一种通过计算间隙相对于其大小和位置的分布来检查所计算的相关维数值的可靠性的方法。 R Scuti,U Monocerotis和SU Tauri这三颗变星的光曲线数据对此进行了说明。我们还演示了三次样条插值如何导致缺少数据的高斯噪声的时间序列被误解为原点混乱。这对于可变恒星SS Cygni的非混沌光曲线得到了证明,当使用三次样条进行插值时,该曲线给出了饱和D-2值。此外,我们还发现,除了降低噪声之外,仔细选择分档还可以帮助将间隙分布转移到D-2值的可靠范围。

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