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Thermoeconomic analysis and multi-objective optimization of a novel hybrid absorption/recompression refrigeration system

机译:一种新型混合吸收/再压缩制冷系统的热经济分析和多目标优化

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摘要

In the present article, thermodynamic, exergoeconomic, economic, and sustainability investigations of a recently developed environmentally friendly hybrid absorption/recompression refrigeration cycle is proposed to evaluate its feasibility for decision making and marketing. The proposed system is a novel hybridization of the conventional vapor compression and absorption cycles, wherein a booster compressor has been used between the generator and condenser of the single-effect absorption cycle to improve its performance. Also, two separate multi-objective optimization models are developed using a combination of the nondominated-storing-genetic algorithm (NSGA-Ⅱ) and artificial neural network (ANN) to address the optimum performance values concerning the objective functions. The obtained results approve that the proposed cycle is a promising concept from both thermodynamic and economic viewpoints. The results indicate that the system presents a coefficient of performance and exergy efficiency of 4.88 and 37.43% under the optimum working conditions. The overall rate of exergy destruction of the system is 20.23 kW, and a sustainability index of around 1.53 can be achieved at a cooling capacity of 150 kW. The economic results indicate that the reference system has a payback period of 4.17 years, which is reduced to less than 4 years after doing the optimizations.
机译:在本文中,提出了最近开发的环境友好的混合吸收/再压缩制冷循环的热力学,exergo经济,经济和可持续性调查,以评估其对决策和营销的可行性。所提出的系统是传统蒸汽压缩和吸收循环的新型杂交,其中,在单效吸收循环的发电机和冷凝器之间使用了增压器压缩机,以改善其性能。此外,使用非目标存储 - 遗传算法(NSGA-Ⅱ)和人工神经网络(ANN)的组合来开发两个单独的多目标优化模型,以解决有关目标函数的最佳性能值。所获得的结果批准了所提出的循环是热力学和经济观点的有希望的概念。结果表明,在最佳工作条件下,该系统呈现了4.88和37.43%的性能和高度效率的系数。系统的总体破坏率为20.23千瓦,可持续性指数约为1.53,冷却能力为150 kW。经济结果表明,参考系统的投资回收期为4.17岁,在做优化后减少到不到4年。

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