Data-Driven Linear Koopman Embedding for Model-Predictive Power System
Control
- URL: http://arxiv.org/abs/2206.01272v1
- Date: Thu, 2 Jun 2022 19:52:11 GMT
- Title: Data-Driven Linear Koopman Embedding for Model-Predictive Power System
Control
- Authors: Ramij R. Hossain, Rahmat Adesunkanmi, Ratnesh Kumar
- Abstract summary: We develop a em Koopman-inspired deep neural network (KDNN) architecture for the linear embedding of the voltage dynamics subjected to reactive controls.
The proposed framework learns the underlying system dynamics from the input/output data in the form of a triple of transforms.
The model predictive control is computed over the linear dynamics, making the control computation scalable and also real-time.
- Score: 1.20855096102517
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: This paper presents a linear Koopman embedding for model predictive emergency
voltage regulation in power systems, by way of a data-driven lifting of the
system dynamics into a higher dimensional linear space over which the MPC
(model predictive control) is exercised, thereby scaling as well as expediting
the MPC computation for its real-time implementation for practical systems. We
develop a {\em Koopman-inspired deep neural network} (KDNN) architecture for
the linear embedding of the voltage dynamics subjected to reactive controls.
The training of the KDNN for the purposes of linear embedding is done using the
simulated voltage trajectories under a variety of applied control inputs and
load conditions. The proposed framework learns the underlying system dynamics
from the input/output data in the form of a triple of transforms: A Neural
Network (NN)-based lifting to a higher dimension, a linear dynamics within that
higher dynamics, and an NN-based projection to original space. This approach
alleviates the burden of an ad-hoc selection of the basis functions for the
purposes of lifting to higher dimensional linear space. The MPC is computed
over the linear dynamics, making the control computation scalable and also
real-time.
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