EECO: An AI-Based Algorithm for Energy-Efficient Comfort Optimisation

Author:

Segala Giacomo123ORCID,Doriguzzi-Corin Roberto2ORCID,Peroni Claudio1,Gerola Matteo1ORCID,Siracusa Domenico2ORCID

Affiliation:

1. Energenius s.r.l., 38068 Rovereto, Italy

2. Fondazione Bruno Kessler (FBK), 38123 Trento, Italy

3. Department of Information Engineering and Computer Science (DISI), University of Trento, 38123 Trento, Italy

Abstract

Environmental comfort takes a central role in the well-being and health of people. In modern industrial, commercial, and residential buildings, passive energy sources (such as solar irradiance and heat exchangers) and heating, ventilation, and air conditioning (HVAC) systems are usually employed to achieve the required comfort. While passive strategies can effectively enhance the livability of indoor spaces with limited or no energy cost, active strategies based on HVAC machines are often preferred to have direct control over the environment. Commonly, the working parameters of such machines are manually tuned to a fixed set point during working hours or throughout the whole day, leading to inefficiencies in terms of comfort and energy consumption. Albeit effective, previous works that tackle the comfort–energy tradeoff are tailored to the specific environment under study (in terms of geometry, characteristics of the building, etc.) and thus cannot be applied on a large industrial scale. We address the problem from a different angle and propose an adaptive and practical solution for comfort optimisation. It does not require the intervention of expert personnel or any customisations around the environment while it implicitly analyses the influence of different agents (e.g., passive phenomena) on the monitored parameters. A convolutional neural network (CNN) predicts the long-term impact on thermal comfort and energy consumption of a range of possible actuation strategies for the HVAC system. The decision on the best HVAC settings is taken by choosing the combination of ON/OFF and set point (SP), which optimises thermal comfort and, at the same time, minimises energy consumption. We validate our solution in a real-world scenario and through software simulations, providing a performance comparison against the fixed set point strategy and a greedy approach. The evaluation results show that our solution achieves the desired thermal comfort while reducing the energy footprint by up to approximately 16% in a real environment.

Funder

Provincia Autonoma di Trento

European Union

Publisher

MDPI AG

Subject

Energy (miscellaneous),Energy Engineering and Power Technology,Renewable Energy, Sustainability and the Environment,Electrical and Electronic Engineering,Control and Optimization,Engineering (miscellaneous),Building and Construction

Reference36 articles.

1. Parliament, T.E. (2022, March 14). Directive (EU) 2018/844 of the European Parliament and of the Council of 30 May 2018 a.m.ending Directive 2010/31/EU on the Energy Performance of Buildings and Directive 2012/27/EU on Energy Efficiency (Text with EEA Relevance), 2018, OJ L 156, 19.6.2018, pp. 75–91. Available online: https://eur-lex.europa.eu/eli/dir/2018/844/oj.

2. (2022, March 14). BREEAM. Available online: https://www.breeam.com/.

3. (2022, March 14). LEED. Available online: https://www.usgbc.org/leed.

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