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首页> 外文期刊>Journal of the Brazilian Society of Mechanical Sciences and Engineering >Thermal-economic optimization and working fluid selection of subcritical organic Rankine system for low-temperature waste heat recovery based on NSGA-II and TOPSIS
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Thermal-economic optimization and working fluid selection of subcritical organic Rankine system for low-temperature waste heat recovery based on NSGA-II and TOPSIS

机译:基于NSGA-II和TOPSIS的低温余热回收亚临界有机朗肯体系热经济性优化与工作流体选择

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In the present study, multi-objective optimization is conducted to search for the best operating condition for a subcritical organic Rankine system with the trade-off between system exergy efficiency and dynamic payback period (PBP). A 150 degrees C wastewater heat source is employed as the typical low-temperature heat source. Five independent decision variables are considered: turbine inlet temperature and pressure, pinch point temperature differences in evaporator and condenser, and condensing temperature. The non-dominated sorting genetic algorithm (NSGA-II) combined with the backpropagation neural network method is employed as the optimization approach. In addition, the improved technique for order preference by similarity to an ideal solution is developed to gain the optimal Pareto front solution for either working fluid and find the optimal working fluid among the candidates investigated. The results show that working fluid R236fa is the optimal solution with the best trade-off between the thermal and economic performances, despite the minimum PBP for working fluid R123 and the maximum system exergy efficiency for working fluid R1234ze. However, considering the working fluid's environmental friendliness, the second-best working fluid, R1234ze, is the final selection due to its lower global warming potential. Under the optimal working condition for working fluid R1234ze, the system exergy efficiency and the PBP are 0.466 and 7.964 years, respectively.
机译:本研究通过多目标优化方法,在系统发挥效率和动态投资回收期(PBP)的权衡下,寻找亚临界有机朗肯系统的最佳运行条件。采用150°C废水热源作为典型的低温热源。考虑了五个独立的决策变量:涡轮机入口温度和压力、蒸发器和冷凝器的夹点温差以及冷凝温度。采用非支配排序遗传算法(NSGA-II)结合反向传播神经网络方法进行优化。此外,还开发了一种改进的阶次偏好技术,通过与理想解的相似性来获得任一工作流体的最优帕累托前解,并在所研究的候选流体中找到最佳工作流体。结果表明,尽管工作液R123的PBP最小,而工作液R1234ze的系统效率最高,但工作液R236fa是热性能和经济性能之间最佳权衡的最优解决方案。然而,考虑到工作液的环保性,第二好的工作液 R1234ze 是最终选择,因为它的全球变暖潜能值较低。在工作液R1234ze的最优工况下,系统工作效率和PBP分别为0.466和7.964年。

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