Siting and sizing distributed storage for microgrid applications
Ramachandra Rao Kolluri, Julian de Hoog, et al.
SmartGridComm 2017
This paper studies the infinite-horizon adaptive optimal control of continuous-time linear periodic (CTLP) systems, using reinforcement learning techniques. By means of policy iteration (PI) for CTLP systems, both on-policy and off-policy adaptive dynamic programming (ADP) algorithms are derived, such that the solution of the optimal control problem can be found without the exact knowledge of the system dynamics. Starting with initial stabilizing controllers, the proposed PI-based ADP algorithms converge to the optimal solutions under mild conditions. Application to the adaptive optimal control of the lossy Mathieu equation demonstrates the efficacy of the proposed learning-based adaptive optimal control algorithm.
Ramachandra Rao Kolluri, Julian de Hoog, et al.
SmartGridComm 2017
Gijo Sebastian, Ying Tan, et al.
ANZCC 2018
Ti-Chung Lee, Ying Tan, et al.
ECC 2019
Lu Xia, Julian de Hoog, et al.
SEGAN