J. Tempelman, Audun D. Myers, J. Scruggs, Firas A. Khasawneh
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引用次数: 1
摘要
表征动态系统状态的能力一直是时间序列分析界的一个相关任务。传统的测量方法,如李雅普诺夫指数,往往很难从噪声数据中恢复,特别是如果系统的维度是未知的。最近基于二进制和网络的测试方法已经为未知的确定性系统提供了有希望的结果,但是注入周期信号的噪声会导致误报。最近,我们展示了使用持久同调作为工具来实现未知模型系统的动态状态检测的优势,并展示了其对高斯白噪声的鲁棒性。在这项工作中,我们探讨了基于持久性的方法对彩色噪声影响的鲁棒性,并表明形式为1/ f α的彩色噪声过程在较低的信噪比下导致假阳性诊断。
Effects of Correlated Noise on the Performance of Persistence Based Dynamic State Detection Methods
The ability to characterize the state of dynamic systems has been a pertinent task in the time series analysis community. Traditional measures such as Lyapunov exponents are often times difficult to recover from noisy data, especially if the dimensionality of the system is not known. More recent binary and network based testing methods have delivered promising results for unknown deterministic systems, however noise injected into a periodic signal leads to false positives. Recently, we showed the advantage of using persistent homology as a tool for achieving dynamic state detection for systems with no known model and showed its robustness to white Gaussian noise. In this work, we explore the robustness of the persistence based methods to the influence of colored noise and show that colored noise processes of the form 1/ f α lead to false positive diagnostic at lower signal to noise ratios for α < 0.