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Exergy and exergoeconomic analysis and multi-objective optimisation of gas turbine power plant by evolutionary algorithms. Case study: Aliabad Katoul power plant

机译:用进化算法对燃气轮机的火用,能经济分析和多目标优化。案例研究:Aliabad Katoul发电厂

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In this paper, exergy and exergoeconomic analysis and optimisation of a gas turbine cycle (case study) were performed by using three algorithms: NSGA-II, MOPSO and MOEA-D. Two objective functions were considered: total cost rate and exergy efficiency. In Pareto solution, the middle point was considered as the optimal solution, which is the lowest total cost rate (1.922 US$/s) was obtained which was 30% less than MOPSO algorithm and 6.2% less than MOEA-D algorithm. Also, the exergy efficiency in the NSGA-II algorithm was obtained about 55.1% which was 12% greater than MOPSO algorithm and 10% greater than MOEA-D algorithm. Also a sensitivity analysis of the design variables on objective functions is performed. Results show the highest rate of exergy destruction in all three optimisation methods was related to the combustion chamber. After overall comparison of the performance of these algorithms, the results showed that the NSGA-II algorithm had the best performance than the two others.
机译:在本文中,通过使用三种算法:NSGA-II,MOPSO和MOEA-D对燃气轮机循环进行了火用和能效分析和优化(案例研究)。考虑了两个目标函数:总成本率和火用效率。在Pareto解决方案中,中间点被认为是最佳解决方案,它是最低的总成本率(1.922 US $ / s),比MOPSO算法低30%,比MOEA-D算法低6.2%。同样,在NSGA-II算法中获得的本能效率约为55.1%,比MOPSO算法高12%,比MOEA-D算法高10%。还对目标函数的设计变量进行了敏感性分析。结果表明,在所有三种优化方法中,最高的火用破坏率与燃烧室有关。对这些算法的性能进行整体比较后,结果表明NSGA-II算法的性能优于其他两种算法。

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