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Domain Randomization for Demand Response of an Electric Water Heater

Thijs Peirelinck, Chris Hermans, Fred Spiessens, Geert Deconinck

2020IEEE Transactions on Smart Grid36 citationsDOIOpen Access PDF

Abstract

Thermostatically Controlled Loads (TCLs) provide a source of demand flexibility, and are often considered a good source for Demand Response (DR) applications. Due to their heterogeneity, and as such a lack of dynamics models, Reinforcement Learning (RL) is often used to exploit this flexibility. Unfortunately, RL requires exploratory interaction with the TCL, resulting in a period of potential discomfort for the users. We present an approach to reduce this exploratory time by pre-training the RL-agent. Domain randomization is used to facilitate knowledge transfer. We evaluate the pre-training potential in a DR energy arbitrage scenario with an Electric Water Heater (EWH). Our experiments show that a priori knowledge about EWH dynamics can be used to initialize and improve the control policy. In our experiments, pre-training attributes to 8.8% additional cost savings, compared to starting from scratch.

Topics & Concepts

ExploitFlexibility (engineering)Demand responseReinforcement learningComputer scienceA priori and a posterioriDomain (mathematical analysis)Artificial intelligenceEngineeringElectricityComputer securityEconomicsMathematicsManagementMathematical analysisElectrical engineeringEpistemologyPhilosophySmart Grid Energy ManagementEnergy Efficiency and ManagementAdvanced Bandit Algorithms Research
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