4.7 Article

Development of a back-propagation neural network and adaptive grey wolf optimizer algorithm for thermal comfort and energy consumption prediction and optimization

Journal

ENERGY AND BUILDINGS
Volume 253, Issue -, Pages -

Publisher

ELSEVIER SCIENCE SA
DOI: 10.1016/j.enbuild.2021.111439

Keywords

Back-propagation neural network; Adaptive grey wolf optimizer algorithm; Thermal comfort level; Energy-saving; HVAC system

Funding

  1. HSBC 150th Anniversary Charity Programme through the PRAISE-HK project

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This study aims to propose a rapid prediction and optimization algorithm for indoor thermal comfort levels, while minimizing energy consumption to achieve a balance between thermal comfort and energy savings.
Heating ventilation and air conditioning (HVAC) systems provide a comfortable indoor thermal environ -ment, but in the process of attaining appropriate indoor thermal comfort levels, they usually entail high energy consumptions. It is therefore imperative to balance thermal comfort value with energy consump-tion. However, such research currently faces two problems: one, it is difficult to obtain accurate param-eters pertaining to the indoor environment of buildings, particularly near heat source areas; two, it is the diametrical nature of having to simultaneously maintain thermal comfort and keep energy consumption low. Therefore, this study aims to propose a rapid thermal comfort level prediction and optimization algorithm, as well as a method to minimize the energy consumption using only a computational fluid dynamic (CFD) database that is compact in size. Firstly, CFD is used to implement the database that stores data on indoor airflow and temperature distributions of different building structures and indoor condi-tions. Next, using the database as a basis, a back-propagation neural network (BPNN) is developed to pre-dict the thermal comfort level. The adaptive grey wolf optimizer (GWO) algorithm is then applied to optimize the thermal comfort value, and the latest control methods: the artificial neural network (ANN)-genetic algorithm (GA) and ANN-particle swarm optimizer (PSO) algorithm are compared against the BPNN-based adaptive GWO method. The results show that the BPNN-based adaptive GWO algorithm can rapidly predict the thermal comfort level and have strong optimization ability. Meanwhile, 1.01% of energy savings are achieved. (c) 2021 Elsevier B.V. All rights reserved.

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