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Genetic and Swarm Algorithms for Optimizing the Control of Building HVAC Systems Using Real Data: A Comparative Study

Author

Listed:
  • Alberto Garces-Jimenez

    (Centro de Innovación Experimental del Conocimiento (CEIEC), Universidad Francisco de Vitoria (UFV), Carretera Pozuelo-Majadahonda, Km. 1.8, 28223 Pozuelo de Alarcón, Madrid, Spain
    These authors equally contributed.)

  • Jose-Manuel Gomez-Pulido

    (Departamento de Ciencias de la Computación, Universidad de Alcala (UAH), Carretera Madrid-Barcelona, Km. 33.6, 28805 Alcalá de Henares, Madrid, Spain)

  • Nuria Gallego-Salvador

    (Departamento de Ciencias de la Computación, Universidad de Alcala (UAH), Carretera Madrid-Barcelona, Km. 33.6, 28805 Alcalá de Henares, Madrid, Spain)

  • Alvaro-Jose Garcia-Tejedor

    (Centro de Innovación Experimental del Conocimiento (CEIEC), Universidad Francisco de Vitoria (UFV), Carretera Pozuelo-Majadahonda, Km. 1.8, 28223 Pozuelo de Alarcón, Madrid, Spain
    These authors equally contributed.)

Abstract

Buildings consume a considerable amount of electrical energy, the Heating, Ventilation, and Air Conditioning (HVAC) system being the most demanding. Saving energy and maintaining comfort still challenge scientists as they conflict. The control of HVAC systems can be improved by modeling their behavior, which is nonlinear, complex, and dynamic and works in uncertain contexts. Scientific literature shows that Soft Computing techniques require fewer computing resources but at the expense of some controlled accuracy loss. Metaheuristics-search-based algorithms show positive results, although further research will be necessary to resolve new challenging multi-objective optimization problems. This article compares the performance of selected genetic and swarm-intelligence-based algorithms with the aim of discerning their capabilities in the field of smart buildings. MOGA, NSGA-II/III, OMOPSO, SMPSO, and Random Search, as benchmarking, are compared in hypervolume, generational distance, ε-indicator, and execution time. Real data from the Building Management System of Teatro Real de Madrid have been used to train a data model used for the multiple objective calculations. The novelty brought by the analysis of the different proposed dynamic optimization algorithms in the transient time of an HVAC system also includes the addition, to the conventional optimization objectives of comfort and energy efficiency, of the coefficient of performance, and of the rate of change in ambient temperature, aiming to extend the equipment lifecycle and minimize the overshooting effect when passing to the steady state. The optimization works impressively well in energy savings, although the results must be balanced with other real considerations, such as realistic constraints on chillers’ operational capacity. The intuitive visualization of the performance of the two families of algorithms in a real multi-HVAC system increases the novelty of this proposal.

Suggested Citation

  • Alberto Garces-Jimenez & Jose-Manuel Gomez-Pulido & Nuria Gallego-Salvador & Alvaro-Jose Garcia-Tejedor, 2021. "Genetic and Swarm Algorithms for Optimizing the Control of Building HVAC Systems Using Real Data: A Comparative Study," Mathematics, MDPI, vol. 9(18), pages 1-24, September.
  • Handle: RePEc:gam:jmathe:v:9:y:2021:i:18:p:2181-:d:630481
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    References listed on IDEAS

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    Cited by:

    1. Flavio Muñoz & Ramon Garcia-Hernandez & Jose Ruelas & Juan E. Palomares-Ruiz & Carlos Álvarez-Macías, 2022. "Optimal Operation for Reduced Energy Consumption of an Air Conditioning System Using Neural Inverse Optimal Control," Mathematics, MDPI, vol. 10(5), pages 1-15, February.
    2. Nadia Jahanafroozi & Saman Shokrpour & Fatemeh Nejati & Omrane Benjeddou & Mohammad Worya Khordehbinan & Afshin Marani & Moncef L. Nehdi, 2022. "New Heuristic Methods for Sustainable Energy Performance Analysis of HVAC Systems," Sustainability, MDPI, vol. 14(21), pages 1-14, November.

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