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Supervised-learning-based hour-ahead demand response for a behavior-based home energy management system approximating MILP optimization

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  • Dinh, Huy Truong
  • Lee, Kyu-haeng
  • Kim, Daehee

Abstract

The demand response (DR) program of a traditional home energy management system (HEMS) usually controls or schedules appliances to monitor energy usage, minimize energy cost, and maximize user comfort. In this study, instead of interfering with appliances and changing residents’ behavior, the proposed hour-ahead DR strategy first learns the appliance usage behavior of residents; subsequently, based on this knowledge, it silently controls the energy storage system (ESS) and renewable energy system (RES) to minimize the daily energy cost. To accomplish the goal, the proposed deep neural networks (DNNs) of this DR approximate the MILP optimization using supervised learning. The training datasets are created from the optimal outputs of an MILP solver using historical data. After training, in each time slot, these DNNs are used to control the ESS and RES using the real-time data of the surrounding environment. For comparison, we develop two different strategies, namely, the multi-agent reinforcement learning-based strategy, which is an hour-ahead strategy, and the forecast-based MILP strategy, which is a day-ahead strategy. For evaluation and verification, the proposed approaches are applied to three different real-world homes with real-world real-time global horizontal irradiation and prices. Numerical results verify the effectiveness and superiority of the proposed MILP-based supervised learning strategy, in terms of the daily energy cost.

Suggested Citation

  • Dinh, Huy Truong & Lee, Kyu-haeng & Kim, Daehee, 2022. "Supervised-learning-based hour-ahead demand response for a behavior-based home energy management system approximating MILP optimization," Applied Energy, Elsevier, vol. 321(C).
  • Handle: RePEc:eee:appene:v:321:y:2022:i:c:s0306261922007231
    DOI: 10.1016/j.apenergy.2022.119382
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    References listed on IDEAS

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    Cited by:

    1. Nedim Tutkun & Luigi Scarcello & Carlo Mastroianni, 2023. "Improved Low-Cost Home Energy Management Considering User Preferences with Photovoltaic and Energy-Storage Systems," Sustainability, MDPI, vol. 15(11), pages 1-25, May.
    2. Muhammad Irfan & Sara Deilami & Shujuan Huang & Binesh Puthen Veettil, 2023. "Rooftop Solar and Electric Vehicle Integration for Smart, Sustainable Homes: A Comprehensive Review," Energies, MDPI, vol. 16(21), pages 1-29, October.

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