2021
DOI: 10.3390/math9182181
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Genetic and Swarm Algorithms for Optimizing the Control of Building HVAC Systems Using Real Data: A Comparative Study

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 accura… Show more

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Cited by 11 publications
(5 citation statements)
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“…The performance of the algorithm is evaluated using various metrics such as the generational distance (GD), spacing metric (SP) [48], and hypervolume indicator (HV) [49]. A smaller GD value indicates better convergence of the algorithm towards the Pareto frontier, while a smaller SP value implies a more evenly distributed solution set.…”
Section: Test Of Standard Casesmentioning
confidence: 99%
“…The performance of the algorithm is evaluated using various metrics such as the generational distance (GD), spacing metric (SP) [48], and hypervolume indicator (HV) [49]. A smaller GD value indicates better convergence of the algorithm towards the Pareto frontier, while a smaller SP value implies a more evenly distributed solution set.…”
Section: Test Of Standard Casesmentioning
confidence: 99%
“…In [33], a data-driven mathematical model using contextual sensor data is used to optimize multi-HVAC systems that serve the same space. In [34], several optimization models are compared for multi-HVAC systems management considering the outdoor temperature, building ambient temperature, and occupancy. The compared models were a multiobjective genetic algorithm, two nondominated sorting genetic algorithms, an optimized multiobjective particle swarm optimization, a speed-constrained multi-objective particle swarm optimization, and a random search.…”
Section: Related Workmentioning
confidence: 99%
“…There are also many other kinds of excellent MOEAs [27][28][29], including the novel multi-objective particle swarm optimization algorithm proposed by Leung et al [30], which adopted a hybrid global leader selection strategy with two leaders: one for exploration and the other for exploitation. Moreover, MOEAs have also been used to solve many real-world optimization problems [31][32][33], such as system control [34,35], community detection [36,37], network construction [38][39][40], task allocation [41,42], and feature selection [43,44]. Generally speaking, feature selection is normally used to select useful feature subsets for classification [45], while the bi-objective feature selection problem usually seeks to minimize both the classification error and the number of selected features [46].…”
Section: Introductionmentioning
confidence: 99%