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A thermodynamic comparison between organic Rankine and Kalina cycles for waste heat recovery from the Gas Turbine-Modular Helium Reactor

机译:从燃气轮机-模块化氦反应堆回收余热的有机朗肯循环和卡利纳循环之间的热力学比较

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摘要

A comparative thermodynamic analysis and optimization is presented for waste heat recovery from the Gas Turbine-Modular Helium Reactor (GT-MHR) employing organic Rankine cycle (ORC) and Kalina cycle (KC). Thermodynamic models are developed for the stand alone GT-MHR and the two proposed combined cycles and the effects on the performances of the cycles are investigated of decision variables. The cycles' performances are then optimized based on the first and second law of thermodynamics. The results showed that, employing ORC is more appropriate than MC for GT-MHR waste heat recovery. The first and second law efficiencies of the combined GT-MHR/ORC are higher than those of the combined GT-MHR/KC. In addition, the helium mass flow rate in the combined GT-MHR/ORC is significantly lower than that in the combined GT-MHR/KC. Moreover, the high-pressure level of the ORC is extremely lower than that of the MC under optimized conditions. Furthermore, the superheated vapor at the ORC turbine exit avoids droplet erosion and allows for reliable operation while the stream exiting the KC turbine is a two-phase flow. (C) 2014 Elsevier Ltd. All rights reserved.
机译:针对采用有机朗肯循环(ORC)和卡利纳循环(KC)的燃气轮机-模块化氦反应堆(GT-MHR)的废热回收进行了比较热力学分析和优化。针对独立的GT-MHR开发了热力学模型,并提出了两个建议的组合循环,并研究了决策变量对循环性能的影响。然后根据热力学的第一定律和第二定律优化循环的性能。结果表明,采用ORC比MC更适合GT-MHR余热回收。 GT-MHR / ORC组合的第一和第二定律效率高于GT-MHR / KC组合的第一和第二定律效率。另外,组合的GT-MHR / ORC中的氦气质量流速显着低于组合的GT-MHR / KC中的氦气质量流速。而且,在最佳条件下,ORC的高压水平远低于MC的高压水平。此外,在离开KC涡轮机的气流为两相流的同时,ORC涡轮机出口处的过热蒸汽避免了液滴腐蚀,并实现了可靠的运行。 (C)2014 Elsevier Ltd.保留所有权利。

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