非线性动力学下隐节点动态系统的树状结构重构

D. Materassi
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引用次数: 3

摘要

本文研究了在假设系统按树形拓扑结构连接的情况下,对动态系统网络的未知结构进行信息推断的问题。特别是,本文介绍了在只有非侵入性观察可用的场景中解决隐藏(未测量)节点存在的方法。通过非侵入性观察,意味着没有已知的输入信号被主动注入网络。整个系统被假设为被建模为随机过程的未知外部激励所强迫。没有对隐藏节点的数量和位置做先验假设。当动态是线性的和/或测量具有联合高斯分布时,当前的方法能够从数据中一致地推断网络结构。这项工作提供了一种方法,也可以应用于具有非线性动力学和非高斯干扰的网络。找到了得到拓扑一致重构的充分条件。
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Reconstructing tree structures of dynamic systems with hidden nodes under nonlinear dynamics
The article tackles the problem of inferring information about the unknown structure of a network of dynamic systems under the assumption that the systems are connected according to a tree topology. In particular, the article introduces methodologies to address the presence of hidden (unmeasured) nodes in a scenario where only non-invasive observations are available. By non-invasive observations, it is meant that no known input signal is actively injected into the network. The whole system instead is assumed to be forced by unknown external excitations modeled as stochastic processes. No a priori assumption is made about the number and location of the hidden nodes. Current approaches are capable of consistently inferring the network structure from data, when the dynamics are linear and/or the measurements have a jointly Gaussian distribution. This work provides an approach that can also be applied to networks with nonlinear dynamics and non-Gaussian disturbances. Sufficient conditions are found under which a consistent reconstruction of the topology can be obtained.
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