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Parameter identification of the glazed photovoltaic thermal system using Genetic Algorithm-Fuzzy System (GA-FS) approach and its comparative study

机译:基于遗传算法-模糊系统(GA-FS)的玻璃光伏热力系统参数辨识及比较研究

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In this paper, Genetic Algorithm-Fuzzy System (GA-FS) approach is used to identify the optimized parameters of the glazed photovoltaic thermal (PVT) system and to improve its overall exergy efficiency. The fuzzy knowledge base is used to improve the efficiency of Genetic Algorithm (GA). It is observed that three GA parameters, namely; (i) crossover probability (Pc.), (ii) mutation probability (Pinut) and (iii) population size are changing dynamically during the program, according to fuzzy knowledge base to maximize the efficiency of the GA. Here, overall exergy efficiency is considered as an objective function during the optimization process for GA-FS approach. The effort has been made to identify the different optimized parameters like; length and depth of the channel, velocity of flowing fluid, overall heat transfer coefficient from solar cell to ambient and flowing fluid and overall back loss heat transfer coefficient from flowing fluid to the ambient to maximize the overall exergy efficiency using GA-FS approach. Performance of glazed PVT using GA-FS approach has been compared with performance using GA approach and without GA It has also been observed that the GA-FS approach is a better approach as compared to GA approach because it converges faster as compare to GA because the use of the fuzzy knowledge base with GA and take less time for identification of optimized system parameters. (C) 2015 Elsevier Ltd. All rights reserved.
机译:在本文中,遗传算法-模糊系统(GA-FS)方法用于识别玻璃光伏热(PVT)系统的优化参数,并提高其整体的火用效率。模糊知识库用于提高遗传算法(GA)的效率。观察到三个GA参数,即; (i)交叉概率(Pc。),(ii)变异概率(Pinut)和(iii)种群大小在程序中根据模糊知识库动态变化,以最大化GA的效率。在此,在GA-FS方法的优化过程中,总火用效率被视为目标函数。已努力确定不同的优化参数,例如;通道的长度和深度,流动流体的速度,从太阳能电池到环境和流动流体的总传热系数以及从流动流体到环境的总回损传热系数,以使用GA-FS方法最大化总火用效率。已将使用GA-FS方法的釉面PVT的性能与使用GA方法和不使用GA的釉面PVT的性能进行了比较。还观察到,与GA方法相比,GA-FS方法是一种更好的方法,因为与GA方法相比,它收敛更快。使用带有GA的模糊知识库,花费更少的时间来识别优化的系统参数。 (C)2015 Elsevier Ltd.保留所有权利。

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