4.8 Article

Functional observability and target state estimation in large-scale networks

出版社

NATL ACAD SCIENCES
DOI: 10.1073/pnas.2113750119

关键词

network dynamics; observability; network control; complex networks

资金

  1. Brazil's Coordenacao de Aperfeicoamento de Pessoal de Nivel Superior [001]
  2. Conselho Nacional de Desenvolvimento Cientifico e Tecnologico Grant [03412/2019-4]
  3. US Army Research Office [W911NF-19-1-0383]

向作者/读者索取更多资源

To understand and control complex dynamical systems, their internal states need to be observed through measurement or estimation. However, in large-scale dynamical networks, having enough sensor nodes to make the system fully observable is often difficult. This study introduces a graph-based theory of functional observability to determine the minimal set of required sensors and design the corresponding state observer of minimum order. The proposed functional observer achieves the same estimation quality with fewer resources, making it suitable for large-scale networks.
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 1) determine the minimal set of required sensors and 2) design the corresponding state observer of minimum order. Compared with the full-state observer, the proposed functional observer achieves the same estimation quality with substantially less sensing and fewer computational resources, making it suitable for large-scale networks. We apply the proposed methods to the detection of cyberattacks 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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