Reduced-Order Modeling of Large-Scale Network Systems

1 Feb 2021  ·  Xiaodong Cheng, Jacquelien M. A. Scherpen, Harry L. Trentelman ·

Large-scale network systems describe a wide class of complex dynamical systems composed of many interacting subsystems. A large number of subsystems and their high-dimensional dynamics often result in highly complex topology and dynamics, which pose challenges to network management and operation. This chapter provides an overview of reduced-order modeling techniques that are developed recently for simplifying complex dynamical networks. In the first part, clustering-based approaches are reviewed, which aim to reduce the network scale, i.e., find a simplified network with a fewer number of nodes. The second part presents structure-preserving methods based on generalized balanced truncation, which can reduce the dynamics of each subsystem.

PDF Abstract
No code implementations yet. Submit your code now

Categories


Optimization and Control Physics and Society