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Multi-objective optimisation and fast decision-making method for working fluid selection in organic Rankine cycle with low-temperature waste heat source in industry

机译:工业低温余热源有机朗肯循环工质选择的多目标优化与快速决策方法

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In China, the utilisation of low-temperature waste heat (especially at temperatures lower than 100 degrees C) plays a significant role in increasing the energy-consumption efficiency in the industry. The organic Rankine cycle (ORC) is considered as a promising method to recover the aforementioned part of the waste heat. In the study, six potential candidates, namely R141b, R142b, R245ca, R245fa, R600a, and R601a were screened from 12 dry or adiabatic organic working fluids based on their thermodynamic performances in the ORC. A multi-objective optimisation (MOO) was performed for the thermodynamic performance (exergy efficiency, EXE) and economic performance (levelised energy cost, LEC) by using non-dominated sorting genetic algorithm-II (NSGA-II). The Pareto frontiers were obtained for the six candidates with the algorithm, and each optimal compromise solution was accurately obtained with the fuzzy set theory. Based on the EXE and LEC of the optimal compromise solution, the total cost and power generation efficiency for the six candidates were determined. This was used to obtain an explicit evaluation index in economic performance, namely static investment payback period (SIPP), to identify that the R245ca corresponded to the most cost-effective working fluid with the shortest SIPP. This suggests R245ca was the fastest to cover the investment and cost of the ORC system. Furthermore, a fast decision-making method was introduced to select the optimal working fluid based on the grey relational analysis (GRA) by considering key physical property parameters of the working fluids. The results suggest that any potential working fluid to recover low-temperature waste heat in the ORC can be evaluated by the simplified grey relational degree (SGRD) proposed in the study.
机译:在中国,利用低温废热(尤其是温度低于100摄氏度的废热)在提高该行业的能源消耗效率方面起着重要作用。有机朗肯循环(ORC)被认为是一种回收上述废热的有前途的方法。在研究中,根据ORC中的热力学性能,从12种干燥或绝热的有机工作流体中筛选出六个潜在的候选物,即R141b,R142b,R245ca,R245fa,R600a和R601a。通过使用非支配排序遗传算法-II(NSGA-II)对热力学性能(火用效率,EXE)和经济性能(能源成本平化,LEC)进行了多目标优化。使用该算法获得了六个候选者的帕累托边界,并使用模糊集理论准确地获得了每个最优折衷解。基于最佳折衷解决方案的EXE和LEC,确定了六个候选对象的总成本和发电效率。这用于获得经济绩效的明确评估指标,即静态投资回收期(SIPP),以确定R245ca对应于SIPP最短,最具成本效益的工作液。这表明R245ca是涵盖ORC系统投资和成本最快的产品。此外,引入了一种快速决策方法,通过考虑工作流体的关键物理属性参数,基于灰色关联分析(GRA)选择最佳工作流体。结果表明,可以通过研究中提出的简化灰色关联度(SGRD)来评估ORC中回收低温废热的任何潜在工作流体。

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