Reduced-Order Modeling of Large-Scale Network Systems
Reduced-Order Modeling of Large-Scale Network Systems
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.
Harry L. Trentelman、Jacquelien M. A. Scherpen、Xiaodong Cheng
自动化基础理论计算技术、计算机技术
Harry L. Trentelman,Jacquelien M. A. Scherpen,Xiaodong Cheng.Reduced-Order Modeling of Large-Scale Network Systems[EB/OL].(2021-02-01)[2025-06-07].https://arxiv.org/abs/2102.00986.点此复制
评论