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首页> 外文期刊>Applied Soft Computing >Soft computing based multi-objective optimization of Brayton cycle power plant with isothermal heat addition using evolutionary algorithm and decision making
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Soft computing based multi-objective optimization of Brayton cycle power plant with isothermal heat addition using evolutionary algorithm and decision making

机译:基于软计算的布雷顿循环发电厂等温余热多目标优化进化算法与决策

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摘要

An irreversible regenerative Brayton cycle model considering internal and external irreversibilities is developed in matrix laboratory (MATLAB) simulink environment and thermodynamic optimization based on finite time thermodynamic analysis along with multiple criteria is implemented. Evolutionary algorithms based on second version of non-dominated sorting genetic algorithm (NSGA-II) and multi objective evolutionary algorithm based on decomposition (MOEA/D) are employed to optimize power output and thermal efficiency simultaneously where isobaric-side heat exchanger effectiveness (ELL), isothermal-side effectiveness (sHL), sink-side effectiveness (EL), regenerator-side effectiveness (ER), and working medium temperature (T5) are taken as design variables. The optimal values of aforementioned design variables are investigated. Pareto optimal frontiers between dual objectives are obtained and the final optimal values of power output and thermal efficiency are chosen via LINMAP, fuzzy Bellman-Zadeh, Shannon's entropy and TOPSIS decision making approaches. The obtained results are compared and the best one is preferred. An improvement in thermal efficiency from 18.29% to 21.10% is reported. In addition to this, variations of different input parameters on the power output and thermal efficiency are conferred and presented graphically. With the goal of error investigation, the maximum and average errors for the obtained results are designed at last. (C) 2016 Elsevier B.V. All rights reserved.
机译:在矩阵实验室(MATLAB)simulink环境中开发了一种考虑内部和外部不可逆性的不可逆布雷顿循环模型,并基于有限时间热力学分析以及多个标准实施了热力学优化。使用基于第二版非支配排序遗传算法(NSGA-II)的进化算法和基于分解的多目标进化算法(MOEA / D)来同时优化等压侧热交换器效率(ELL)的功率输出和热效率),等温侧效率(sHL),汇侧效率(EL),再生器侧效率(ER)和工作介质温度(T5)作为设计变量。研究了上述设计变量的最佳值。通过LINMAP,模糊Bellman-Zadeh,Shannon熵和TOPSIS决策方法,获得了双重目标之间的帕累托最优边界,并选择了功率输出和热效率的最终最优值。比较所获得的结果,最好的是最好的。据报道,热效率从18.29%提高到21.10%。除此之外,还给出并以图形方式显示了不同输入参数在功率输出和热效率上的变化。以错误调查为目标,最后设计了获得结果的最大和平均误差。 (C)2016 Elsevier B.V.保留所有权利。

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