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Peak shaving and self-consumption maximization in home energy management systems: A combined integer programming and reinforcement learning approach

Riccardo Felicetti, Francesco Ferracuti, Sabrina Iarlori, Andrea Monteriù

2024Computers & Electrical Engineering18 citationsDOIOpen Access PDF

Abstract

This paper proposes a novel framework for Home Energy Management System based on the combination of integer programming and Reinforcement Learning (RL) for achieving efficient home-based Demand Response (DR). In particular, RL is exploited to manage the charge and discharge of Battery Energy Storage System (BESS), and Mixed Integer Linear Programming is exploited for load scheduling. The idea is to focus the RL specifically on BESS management, as its behavior is stochastic and is mainly affected by Photovoltaic (PV) production and user behavior changes. The scheduling decisions of household appliances, Electric Vehicles (EVs), and charging/discharging batteries can be subsequently obtained through the newly developed framework, of which the objective is dual, i.e., to minimize the electricity bill as well as the DR-induced dissatisfaction. Simulations are performed on a residential house level with multiple home appliances, an EV, PV panels, and electric storage. The test results demonstrate the effectiveness of the proposed home energy management framework under the application of different demand-side flexibility strategies.

Topics & Concepts

Demand responseReinforcement learningInteger programmingMathematical optimizationFlexibility (engineering)Computer sciencePhotovoltaic systemEnergy managementScheduling (production processes)ElectricityStochastic programmingPeaking power plantMaximizationEnergy storageEngineeringEnergy (signal processing)Renewable energyArtificial intelligenceElectrical engineeringDistributed generationMathematicsPower (physics)StatisticsPhysicsQuantum mechanicsSmart Grid Energy ManagementMicrogrid Control and OptimizationElectric Vehicles and Infrastructure
Peak shaving and self-consumption maximization in home energy management systems: A combined integer programming and reinforcement learning approach | Litcius