TY - JOUR AU - Ciaran Roberts AU - José Daniel Lara AU - Rodrigo Henriquez-Auba AU - Matthew Bossart AU - Ranjan Anantharaman AU - Chris Rackauckas AU - Bri-Mathias Hodge AU - Duncan S Callaway AB -

With the growing penetration of converter-interfaced generation in power systems, the dynamical behavior of these systems is rapidly evolving. One of the challenges with converter-interfaced generation is the increased number of equations, as well as the required numerical timestep, involved in simulating these systems. Within this work, we explore the use of continuous-time echo state networks as a means to cheaply, and accurately, predict the dynamic response of power systems subject to a disturbance for varying system parameters. We show an application for predicting frequency dynamics following a loss of generation for varying penetrations of grid-following and grid-forming converters. We demonstrate that, after training on 20 solutions of the full-order system, we achieve a median nadir prediction error of 0.17 mHz with 95% of all nadir prediction errors within ±4 mHz. We conclude with some discussion on how this approach can be used for parameter sensitivity analysis and within optimization algorithms to rapidly predict the dynamical behavior of the system.

BT - Electric Power Systems Research DA - 11/2022 DO - 10.1016/j.epsr.2022.108562 LA - eng N2 -

With the growing penetration of converter-interfaced generation in power systems, the dynamical behavior of these systems is rapidly evolving. One of the challenges with converter-interfaced generation is the increased number of equations, as well as the required numerical timestep, involved in simulating these systems. Within this work, we explore the use of continuous-time echo state networks as a means to cheaply, and accurately, predict the dynamic response of power systems subject to a disturbance for varying system parameters. We show an application for predicting frequency dynamics following a loss of generation for varying penetrations of grid-following and grid-forming converters. We demonstrate that, after training on 20 solutions of the full-order system, we achieve a median nadir prediction error of 0.17 mHz with 95% of all nadir prediction errors within ±4 mHz. We conclude with some discussion on how this approach can be used for parameter sensitivity analysis and within optimization algorithms to rapidly predict the dynamical behavior of the system.

PY - 2022 EP - 108562 ST - Electric Power Systems Research T2 - Electric Power Systems Research TI - Continuous-time echo state networks for predicting power system dynamics UR - https://linkinghub.elsevier.com/retrieve/pii/S0378779622006587 VL - 212 SN - 03787796 ER -