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A comparative evaluation of Gravitational Search Algorithm (GSA) against Artificial Bee Colony (ABC) for thermodynamic performance of a geothermal power plant

机译:针对人工蜂群(ABC)的重力搜索算法(GSA)对地热发电厂热力学性能的比较评估

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摘要

Optimizing a complex system/problem under real working conditions with optimization methods means ensuring that they operate more efficiently, economical, and eco-friendly. For this purpose, in order to maximize the exergy efficiency of a thermodynamic model of a real operated geothermal power plant (GPP), two optimization methods, namely Gravitational Search Algorithm (GSA) and Artificial Bee Colony (ABC), have been comparatively evaluated in this study. The selected thermodynamic model is a problem that is highly complex, non-linear and unsolvable through mathematical methods. In order to solve the problem, 17 optimization parameters have been selected on the model. In addition, the selected parameters have been divided into 11 groups according to the system equipment specifications to reduce time loss. The results of the study reported that GSA and ABC maximized the exergy efficiency of the real system from 14.52% to 26.31% and 23.92% respectively. The effects of the optimized parameters on the model are observed, and it has been verified by GPP operators, engineers and researchers that no contrariety to logic and engineering discipline existed. Hence, the results of GSA method for the engineering problem addressed in this study are better than those of ABC method and they responded in a much shorter time. The most effective group in both methods is the G3 group related to the turbines. Besides, the most effective optimization parameters on the system performance are the pressure differences in evaporators and mass flow of the geothermal fluid. (C) 2018 Elsevier Ltd. All rights reserved.
机译:使用优化方法在实际工作条件下优化复杂的系统/问题意味着确保它们更有效,更经济,更环保地运行。为此,为了使真实运行的地热发电厂(GPP)的热力学模型的火用效率最大化,已对两种优化方法,即引力搜索算法(GSA)和人工蜂群(ABC)进行了比较评估。这项研究。所选的热力学模型是一个高度复杂,非线性且无法通过数学方法解决的问题。为了解决该问题,已在模型上选择了17个优化参数。此外,根据系统设备规格将所选参数分为11组,以减少时间损失。研究结果表明,GSA和ABC可以将真实系统的火用效率分别从14.52%提高到26.31%和23.92%。观察到优化参数对模型的影响,并且已被GPP运营商,工程师和研究人员证实,与逻辑和工程学科不存在矛盾。因此,本研究中解决的工程问题的GSA方法的结果优于ABC方法的结果,并且它们在更短的时间内做出了响应。两种方法中最有效的组是与涡轮机有关的G3组。此外,对系统性能最有效的优化参数是蒸发器中的压差和地热流体的质量流量。 (C)2018 Elsevier Ltd.保留所有权利。

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