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Optimal chiller loading by genetic algorithm for reducing energy consumption
AbstractThis study employs genetic algorithm (GA) to solve optimal chiller loading (OCL) problem. GA overcomes the flaw that with the Lagrangian method the system may not converge at low demand. This study uses the part load ratios (PLR) of chiller units to binary code chromosomes, and execute reproduction, crossover and mutation operation. After analysis and comparison of the two cases studies, we are confident to say that this method not only solves the problem of convergence, but also produces results with high accuracy within a rapid timeframe. It can be perfectly applied to the operation of air-conditioning systems.
Optimal chiller loading by genetic algorithm for reducing energy consumption
AbstractThis study employs genetic algorithm (GA) to solve optimal chiller loading (OCL) problem. GA overcomes the flaw that with the Lagrangian method the system may not converge at low demand. This study uses the part load ratios (PLR) of chiller units to binary code chromosomes, and execute reproduction, crossover and mutation operation. After analysis and comparison of the two cases studies, we are confident to say that this method not only solves the problem of convergence, but also produces results with high accuracy within a rapid timeframe. It can be perfectly applied to the operation of air-conditioning systems.
Optimal chiller loading by genetic algorithm for reducing energy consumption
Chang, Yung-Chung (author) / Lin, Jui-Kun (author) / Chuang, Meng-Hsuan (author)
Energy and Buildings ; 37 ; 147-155
2004-06-02
9 pages
Article (Journal)
Electronic Resource
English
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