4.7 Article

Improved firefly algorithm approach applied to chiller loading for energy conservation

Journal

ENERGY AND BUILDINGS
Volume 59, Issue -, Pages 273-278

Publisher

ELSEVIER SCIENCE SA
DOI: 10.1016/j.enbuild.2012.11.030

Keywords

Optimal chiller loading; Optimization; Firefly algorithm

Funding

  1. National Council of Scientific and Technologic Development of Brazil (CNPq) [303963/2009-3/PQ, 304783/2011-0/PQ, 476235/2011-1, 475689/2010-0]
  2. Fundacao Araucaria [14/2008-416/09-15149]

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Significant energy savings can be achieved by optimizing chiller operation and design in heating, ventilation and cooling (HVAC) systems. In terms of optimization, various metaheuristics have been proposed to the optimal chiller loading problem. New metaheuristics are also emerging recently, between them the firefly algorithm. Firefly algorithm is a nature inspired algorithm based on the idealized behavior of the flash pattern and characteristics of fireflies. This study proposes a new improved firefly algorithm (IFA) based on Gaussian distribution function to the optimal chiller loading design. To testify the performance of the proposed method, the paper adopts two case studies comparing the results of the developed model using IFA with those of traditional firefly algorithm and other optimization methods in literature. In this paper, the optimization problem is minimize energy consumption of multi-chiller systems, where the objective function is energy consumption and the optimum parameter is the partial loading ratio of each chiller. The results of both case studies show that the proposed IFA outperform several optimization methods of the literature in terms of minimum energy consumption solution of the optimal chiller loading problem. (C) 2013 Elsevier B.V. All rights reserved.

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