Tensor Decomposition based Adaptive Model Reduction for Power System Simulation
Abstract
The letter proposes an adaptive model reduction approach based on tensor decomposition to speed up time-domain power system simulation. Taylor series expansion of a power system dynamic model is calculated around multiple equilibria corresponding to different load levels. The terms of Taylor expansion are converted to the tensor format and reduced into smaller-size matrices with the help of tensor decomposition. The approach adaptively changes the complexity of a power system model based on the size of a disturbance to maintain the compromise between high simulation speed and high accuracy of the reduced model. The proposed approach is compared with a traditional linear model reduction approach on the 140-bus 48-machine Northeast Power Coordinating Council system.
Cite
@article{arxiv.1904.00433,
title = {Tensor Decomposition based Adaptive Model Reduction for Power System Simulation},
author = {Denis Osipov and Kai Sun},
journal= {arXiv preprint arXiv:1904.00433},
year = {2019}
}
Comments
3 pages