论文标题

大规模网络中的功能可观察性和目标状态估计

Functional observability and target state estimation in large-scale networks

论文作者

Montanari, Arthur N., Duan, Chao, Aguirre, Luis A., Motter, Adilson E.

论文摘要

仅通过测量和/或估计观察其内部状态,才能实现对复杂动力系统的定量理解和精确控制。在大规模的动态网络中,通常很难或身体上没有足够的传感器节点来使系统完全可观察到。即使该系统原则上可观察到,高维性也对全州观察者的计算障碍和性能构成了基本限制。为了克服维数的诅咒,我们要求系统在功能上可观察到,这意味着可以从可用的测量值重建状态变量的目标子集。在这里,我们开发了基于图的功能可观察性理论,该理论导致高度可扩展的算法i)确定所需传感器的最小集合,ii)设计最小阶的相应状态观察者。与全州观察者相比,提出的功能观察者以相同的估计质量具有相同的估计质量,而感应和计算资源却大大降低,使其适合大规模网络。我们将提出的方法应用于有限相测量数据中的电网中的网络攻击以及在有限测试条件下流行病期间感染率的推断。应用程序表明,功能观察者可以显着扩大我们探索复杂网络上其他无法访问的动力学过程的能力。

The quantitative understanding and precise control of complex dynamical systems can only be achieved by observing their internal states via measurement and/or estimation. In large-scale dynamical networks, it is often difficult or physically impossible to have enough sensor nodes to make the system fully observable. Even if the system is in principle observable, high-dimensionality poses fundamental limits on the computational tractability and performance of a full-state observer. To overcome the curse of dimensionality, we instead require the system to be functionally observable, meaning that a targeted subset of state variables can be reconstructed from the available measurements. Here, we develop a graph-based theory of functional observability, which leads to highly scalable algorithms to i) determine the minimal set of required sensors and ii) design the corresponding state observer of minimum order. Compared to the full-state observer, the proposed functional observer achieves the same estimation quality with substantially less sensing and computational resources, making it suitable for large-scale networks. We apply the proposed methods to the detection of cyber-attacks in power grids from limited phase measurement data and the inference of the prevalence rate of infection during an epidemic under limited testing conditions. The applications demonstrate that the functional observer can significantly scale up our ability to explore otherwise inaccessible dynamical processes on complex networks.

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