Enhancing Building Energy Management: Adaptive Edge Computing for Optimized Efficiency and Inhabitant Comfort

Author:

Márquez-Sánchez Sergio12ORCID,Calvo-Gallego Jaime3ORCID,Erbad Aiman4ORCID,Ibrar Muhammad4,Hernandez Fernandez Javier5ORCID,Houchati Mahdi5,Corchado Juan Manuel12ORCID

Affiliation:

1. BISITE Research Group, University of Salamanca, Calle Espejo s/n. Edificio Multiusos I+D+i, 37007 Salamanca, Spain

2. Air Institute, IoT Digital Innovation Hub (Spain), 37188 Salamanca, Spain

3. Department of Computing and Automatics, University of Salamanca, Av. Requejo, 33, 49022 Zamora, Spain

4. Information & Computing Technology Division, College of Science and Engineering, Hamad Bin Khalifa University, A 036-F LAS, Ar-Rayyan 34110, Qatar

5. Iberdrola Innovation Middle East, Doha 210177, Qatar

Abstract

Nowadays, in contemporary building and energy management systems (BEMSs), the predominant approach involves rule-based methodologies, typically employing supervised or unsupervised learning, to deliver energy-saving recommendations to building occupants. However, these BEMSs often suffer from a critical limitation—they are primarily trained on building energy data alone, disregarding crucial elements such as occupant comfort and preferences. This inherent lack of adaptability to occupants significantly hampers the effectiveness of energy-saving solutions. Moreover, the prevalent cloud-based nature of these systems introduces elevated cybersecurity risks and substantial data transmission overheads. In response to these challenges, this article introduces a cutting-edge edge computing architecture grounded in virtual organizations, federated learning, and deep reinforcement learning algorithms, tailored to optimize energy consumption within buildings/homes and facilitate demand response. By integrating energy efficiency measures within virtual organizations, which dynamically learn from real-time inhabitant data while prioritizing comfort, our approach effectively optimizes inhabitant consumption patterns, ushering in a new era of energy efficiency in the built environment.

Funder

Qatar National Research Fund

Publisher

MDPI AG

Subject

Electrical and Electronic Engineering,Computer Networks and Communications,Hardware and Architecture,Signal Processing,Control and Systems Engineering

Reference117 articles.

1. United Nations (UN) (2023, July 28). Climate Change, Goal 13—United Nations Sustainable Development Goals. Available online: https://www.un.org/sustainabledevelopment/climate-change/.

2. United Nations Environment Programme (UNEP) (2023, July 28). 2022 Global Status Report for Buildings and Construction—UNEP. Available online: https://www.unep.org/resources/publication/2022-global-status-report-buildings-and-construction.

3. International Energy Agency (IEA) (2023, July 28). Buildings—Energy System—IEA. Available online: https://www.iea.org/energy-system/buildings.

4. Intelligent Edge Computing for IoT-Based Energy Management in Smart Cities;Liu;IEEE Netw.,2019

5. Context Design and Tracking for IoT-Based Energy Management in Smart Cities;Kamienski;IEEE Internet Things J.,2018

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