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Transferable Reinforcement Learning for Smart Homes

Xiangyu Zhang, Xin Jin, Charles Tripp, David Biagioni, Peter Gräf, Huaiguang Jiang

202024 citationsDOIOpen Access PDF

Abstract

To harness the great amount of untapped resources on the demand side, smart home technology plays a vital role in solving the "last mile" problem in smart grid. Reinforcement learning (RL), which has demonstrated an outstanding performance in solving many sequential decision-making problems, can be a great candidate to be used in smart home control. For instance, many studies have started investigating the appliance scheduling problem under dynamic pricing scheme. Based on those, this study aims at providing an affordable solution to encourage a higher smart home adoption rate. Specifically, we investigate combining transfer learning (TL) with RL to reduce the training cost of an optimal RL control policy. Given an optimal policy for a benchmark home, TL can jump-start the RL training of a policy for a new home, which has different appliances and user preferences. Simulation results show that by leveraging TL, RL training converges faster and requires much less computing time for new homes that are similar to the benchmark home. In all, this study proposes a cost-effective approach for training RL control policies for homes at scale, which ultimately reduces the controller's implementation costs, increases the adoption rate of RL controllers, and makes more homes grid-interactive.

Topics & Concepts

Reinforcement learningComputer scienceBenchmark (surveying)Home automationControl (management)Scheme (mathematics)Controller (irrigation)Scheduling (production processes)Smart gridArtificial intelligenceEngineeringOperations managementTelecommunicationsAgronomyElectrical engineeringGeodesyMathematical analysisBiologyMathematicsGeographySmart Grid Energy ManagementSmart Grid Security and ResilienceElectric Vehicles and Infrastructure
Transferable Reinforcement Learning for Smart Homes | Litcius