Publication

CityLearn v1.0: An OpenAI Gym Environment for Demand Response with Deep Reinforcement Learning

Jérôme Henri Kämpf
2019
Conference paper
Abstract

Demand response has the potential of reducing peaks of electricity demand by about 20% in the US, where buildings represent roughly 70% of the total electricity demand. Buildings are dynamic systems in constant change (i.e. occupants' behavior, refurbishment measures), which are costly to model and difficult to coordinate with other urban energy systems. Reinforcement learning is an adaptive control algorithm that can control these urban energy systems relying on historical and real-time data instead of models. Plenty of research has been conducted in the use of reinforcement learning for demand response applications in the last few years. However, most experiments are difficult to replicate, and the lack of standardization makes the performance of different algorithms difficult, if not impossible, to compare. In this demo, we introduce a new framework, CityLearn, based on the OpenAI Gym Environment, which will allow researchers to implement, share, replicate, and compare their implementations of reinforcement learning for demand response applications more easily. The framework is open source and modular, which allows researchers to modify and customize it, e.g., by adding additional storage, generation, or energy-consuming systems.

About this result
This page is automatically generated and may contain information that is not correct, complete, up-to-date, or relevant to your search query. The same applies to every other page on this website. Please make sure to verify the information with EPFL's official sources.