论文标题
基于数据驱动影响的动态系统的聚类
Data-driven Influence Based Clustering of Dynamical Systems
论文作者
论文摘要
在科学和工程学的各种学科中,社区发现是一个具有挑战性且相关的问题,例如电力系统,基因调节网络,社交网络,金融网络,天文学等。此外,在许多这些应用中,基础系统本质上是动态的,并且由于系统的复杂性,因此可以使用该系统的复杂性来实现数学模型,可以用于集结和社区的责任。此外,在聚集动态系统的同时,必须考虑基础系统的动力学性质。在本文中,我们提出了一种纯粹来自时间序列数据聚集动态系统的新方法,该方法固有地考虑了基础系统的动态演化。特别是,我们定义了系统状态之间的A \ emph {距离/相似性},这是状态彼此影响的函数,并使用建议的度量来聚类动态系统。对于数据驱动的计算,我们利用Koopman操作员框架考虑了基础系统的非线性(如果存在),从而使所提出的框架适用于广泛的应用程序区域。我们通过聚集了三个不同的动态系统(即线性系统)来说明所提出方法的功效,该系统的作用像是概念证明,高度非线性的IEEE 39总线39总线传输网络和从亚马逊雨林上的大气数据获得的动态变量。
Community detection is a challenging and relevant problem in various disciplines of science and engineering like power systems, gene-regulatory networks, social networks, financial networks, astronomy etc. Furthermore, in many of these applications the underlying system is dynamical in nature and because of the complexity of the systems involved, deriving a mathematical model which can be used for clustering and community detection, is often impossible. Moreover, while clustering dynamical systems, it is imperative that the dynamical nature of the underlying system is taken into account. In this paper, we propose a novel approach for clustering dynamical systems purely from time-series data which inherently takes into account the dynamical evolution of the underlying system. In particular, we define a \emph{distance/similarity} measure between the states of the system which is a function of the influence that the states have on each other, and use the proposed measure for clustering of the dynamical system. For data-driven computation we leverage the Koopman operator framework which takes into account the nonlinearities (if present) of the underlying system, thus making the proposed framework applicable to a wide range of application areas. We illustrate the efficacy of the proposed approach by clustering three different dynamical systems, namely, a linear system, which acts like a proof of concept, the highly non-linear IEEE 39 bus transmission network and dynamic variables obtained from atmospheric data over the Amazon rain forest.