Litcius/Paper detail

A Deep-Reinforcement-Learning-Based Recommender System for Occupant-Driven Energy Optimization in Commercial Buildings

Peter Wei, Stephen Xia, Runfeng Chen, Jingyi Qian, Chong Li, Xiaofan Jiang

2020IEEE Internet of Things Journal80 citationsDOI

Abstract

In this article, we present recEnergy, a recommender system for reducing energy consumption in commercial buildings with human-in-the-loop. We formulate the building energy optimization problem as a Markov decision process, show how deep reinforcement learning can be used to learn energy-saving recommendations, and effectively engage occupants in energy-saving actions. recEnergy is a recommender system that learns actions with high-energy-saving potential, actively distributes recommendations to occupants in a commercial building, and utilizes feedback from the occupants to learn better energy-saving recommendations. Over a four-week user study, four different types of energy-saving recommendations were trained and learned. recEnergy improves building energy reduction from a baseline saving (passive-only strategy) of 19%-26%.

Topics & Concepts

Reinforcement learningComputer scienceRecommender systemMarkov decision processEnergy consumptionEnergy (signal processing)Baseline (sea)Process (computing)Artificial intelligenceMarkov processMachine learningEngineeringElectrical engineeringGeologyOperating systemOceanographyMathematicsStatisticsBuilding Energy and Comfort OptimizationSmart Grid Energy ManagementEnergy Efficiency and Management