Performance optimization of a neon turboexpander based on the Kriging model and genetic algorithm

IF 1.8 3区 工程技术 Q3 PHYSICS, APPLIED Cryogenics Pub Date : 2024-08-28 DOI:10.1016/j.cryogenics.2024.103938
Zhihang Zhang , Zhengze Chang , Changcheng Ma , Yi Huo , Rui Ge
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引用次数: 0

Abstract

The rapid development of high-temperature superconducting (HTS) technology has increased demand for stable and reliable cooling sources, with the neon refrigerator emerging as a favorable solution for HTS applications, among which neon turboexpander is the core component. This paper proposes an optimal design method tailored for the neon turboexpander, which combines a one-dimensional mean-line design, three-dimensional CFD analysis, adaptive Kriging surrogate model, and the genetic algorithm. The meridional contour of the turboexpander impeller is geometrically parameterized, and the three most critical structural parameters are selected through Sobol sensitivity analysis, and then the response surface analysis is carried out to analyze the coupling relationship between the structural parameters. After optimization, the total-to-static efficiency and output power of the neon turboexpander increased by 3.98% and 6.12%, respectively. Notably, the flow separation phenomenon within the optimized impeller is significantly improved, resulting in reduced flow loss. Furthermore, the optimized impeller demonstrates robust performance in a wide range of variable operating conditions. Therefore, the optimization design method has been proven effective, and the optimal turboexpander impeller structure can be obtained quickly and accurately.

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基于克里金模型和遗传算法的霓虹灯涡轮膨胀机性能优化
高温超导(HTS)技术的快速发展对稳定可靠的冷却源提出了更高的要求,氖制冷机成为 HTS 应用的有利解决方案,而氖涡轮膨胀机是其中的核心部件。本文结合一维平均线设计、三维 CFD 分析、自适应克里金代用模型和遗传算法,提出了针对氖涡轮膨胀机的优化设计方法。对涡轮增压器叶轮的子午线轮廓进行几何参数化,通过 Sobol 敏感性分析选出三个最关键的结构参数,然后进行响应面分析,分析结构参数之间的耦合关系。优化后,氖涡轮膨胀机的总静态效率和输出功率分别提高了 3.98% 和 6.12%。值得注意的是,优化后叶轮内的流动分离现象得到了显著改善,从而减少了流动损失。此外,优化后的叶轮在各种不同的运行条件下都表现出稳定的性能。因此,优化设计方法被证明是有效的,可以快速准确地获得最佳涡轮膨胀机叶轮结构。
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来源期刊
Cryogenics
Cryogenics 物理-热力学
CiteScore
3.80
自引率
9.50%
发文量
0
审稿时长
2.1 months
期刊介绍: Cryogenics is the world''s leading journal focusing on all aspects of cryoengineering and cryogenics. Papers published in Cryogenics cover a wide variety of subjects in low temperature engineering and research. Among the areas covered are: - Applications of superconductivity: magnets, electronics, devices - Superconductors and their properties - Properties of materials: metals, alloys, composites, polymers, insulations - New applications of cryogenic technology to processes, devices, machinery - Refrigeration and liquefaction technology - Thermodynamics - Fluid properties and fluid mechanics - Heat transfer - Thermometry and measurement science - Cryogenics in medicine - Cryoelectronics
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