Reinforcement learning (RL) techniques have been applied to smart grids with a variety of applications. The most common objective is to optimize profit for one actor in the system. The goal of this work is to apply different RL models to the smart grid at the Shoals Marine Laboratory (SML) located on Appledore Island, Maine in an effort to reduce costs and minimize the amount of nonrenewable energy consumed on the island. The RL models implemented resulted in more sustainable practices in simulations, with a linear spline model outperforming the naive policy the SML currently uses. Future work includes extending the RL model and more validation testing outside of the simulation.
Authors
First Name
Last Name
Daniel
Mattson
File Count: 1
Leave a comment
Submission Details
Conference URC
Event Interdisciplinary Science and Engineering (ISE)