基于粒子群算法和遗传算法的特殊结构多层绝热材料层密度优化研究

Optimization of Layer Density in Specially-designed Multilayer Insulation Materials via Particle Swarm Optimization and Genetic Algorithm

  • 摘要: 针对特殊结构条件下多层绝热材料的层密度优化问题,论文引入改进的层与层模型,采用遗传算法和粒子群算法为优化手段,对以多种金属涂层(铝、金、铜)为反射屏的多层绝热(MLI)结构进行了优化,并探索了多层绝热材料在不同反射屏涂层和变密度条件下的绝热性能优化方法。采用遗传算法在不同反射屏涂层条件下对层密度的变化规律进行了研究,结果表明,与单金属涂层多层绝热结构进行对比,三种金属涂层组合结构绝热性能提升33.54%;层密度(从冷端到热端)由大到小时比层密度由小到大时总漏热更小,且层密度(从冷端到热端)由小到大时和由大到小的总漏热分别为0.4109 W/m20.3903 W/m2。应用粒子群算法对各分区的层密度参数进行优化,得到了最优层间距组合参数;对分区结构(低密度区、中密度区、高密度区)进行优化,得到最小总漏热为0.3916 W/m2,绝热性能提升2.27%。论文为多层绝热性能改进贡献了有益的优化方法和多种反射屏金属涂层结构的思路。

     

    Abstract: This study addresses the critical challenge of layer density optimization in Multi-Layer Insulation (MLI) systems operating under specific structural constraints, a key factor for minimizing heat ingress in cryogenic applications. An enhanced inter-layer thermal radiation model, accounting for variable shield emissivity, is introduced. Genetic Algorithm (GA) and Particle Swarm Optimization (PSO) are rigorously employed as complementary optimization tools. This research systematically optimizes MLI structures utilizing diverse metal foil coatings (aluminum, gold, copper) as radiation shields and explores novel performance enhancement pathways under combined conditions of variable shield coatings and strategically designed non-uniform density distributions. The GA was first applied to analyze the intricate relationship between coating configurations and optimal layer density variation patterns. Simulation results demonstrate conclusively that the hybrid multi-metal coating structure achieves a significant 33.54% improvement in overall insulation performance compared to conventional single-metal-coated MLI. Crucially, configurations where layer density decreases monotonically from the cold end to the hot end exhibit substantially lower total heat leakage than those employing an increasing density gradient. Quantitatively, the total heat flux is measured at 0.3903 W/m2 for the decreasing-density configuration versus 0.4109 W/m2 for the increasing-density case, unequivocally validating the efficacy of directionally graded density design based on fundamental heat transfer principles. Building on this, the PSO algorithm was subsequently deployed to optimize individual layer spacing parameters within a segmented three-zone structure (low-density, medium-density, and high-density zones). This advanced optimization procedure yielded the globally optimal inter-layer spacing combination for the partitioned system. The resulting configuration achieves a remarkably low minimum total heat leakage of 0.3916 W/m2, representing a distinct 2.27% enhancement over the performance of a comparable uniform-density baseline or a non-optimized zoned structure. This work contributes robust, algorithm-driven optimization methodologies and delivers novel insights into synergistic multi-metal coating strategies combined with zoned density architectures. These findings provide a practical and significant framework for substantially advancing the thermal performance of next-generation, high-efficiency MLI systems in demanding thermal environments.

     

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