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Controlling Commercial Cooling Systems Using Reinforcement Learning

11 November 2022
Jerry Luo
Cosmin Paduraru
Octavian Voicu
Yuri Chervonyi
Scott A. Munns
Jerry Li
Crystal Qian
Praneet Dutta
Jared Quincy Davis
Ningjia Wu
Xingwei Yang
Chu-Ming Chang
Ted Li
Rob Rose
Mingyan Fan
Hootan Nakhost
Tinglin Liu
Brian Kirkman
Frank Altamura
Lee Cline
Patrick Tonker
J. Gouker
D. Udén
Warren Buddy Bryan
Jason Law
Deeni Fatiha
Neil Satra
Juliet Rothenberg
Mandeep Waraich
M. Carlin
S. Tallapaka
Sims Witherspoon
D. Parish
Peter Dolan
Chenyu Zhao
D. Mankowitz
    OffRL
    AI4CE
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Abstract

This paper is a technical overview of DeepMind and Google's recent work on reinforcement learning for controlling commercial cooling systems. Building on expertise that began with cooling Google's data centers more efficiently, we recently conducted live experiments on two real-world facilities in partnership with Trane Technologies, a building management system provider. These live experiments had a variety of challenges in areas such as evaluation, learning from offline data, and constraint satisfaction. Our paper describes these challenges in the hope that awareness of them will benefit future applied RL work. We also describe the way we adapted our RL system to deal with these challenges, resulting in energy savings of approximately 9% and 13% respectively at the two live experiment sites.

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