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Multivariable optimization of liquid rocket engines using particle swarm algorithms.

机译:使用粒子群算法的液体火箭发动机多变量优化。

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摘要

Liquid rocket engines are highly reliable, controllable, and efficient compared to other conventional forms of rocket propulsion. As such, they have seen wide use in the space industry and have become the standard propulsion system for launch vehicles, orbit insertion, and orbital maneuvering. Though these systems are well understood, historical optimization techniques are often inadequate due to the highly non-linear nature of the engine performance problem. In this thesis, a Particle Swarm Optimization (PSO) variant was applied to maximize the specific impulse of a finite-area combustion chamber (FAC) equilibrium flow rocket performance model by controlling the engine's oxidizer-to-fuel ratio and de Laval nozzle expansion and contraction ratios. In addition to the PSO-controlled parameters, engine performance was calculated based on propellant chemistry, combustion chamber pressure, and ambient pressure, which are provided as inputs to the program. The performance code was validated by comparison with NASA's Chemical Equilibrium with Applications (CEA) and the commercially available Rocket Propulsion Analysis (RPA) tool. Similarly, the PSO algorithm was validated by comparison with brute-force optimization, which calculates all possible solutions and subsequently determines which is the optimum. Particle Swarm Optimization was shown to be an effective optimizer capable of quick and reliable convergence for complex functions of multiple non-linear variables.
机译:与其他传统形式的火箭推进器相比,液体火箭发动机具有高度的可靠性,可控性和高效性。因此,它们已在航天工业中得到广泛使用,并已成为用于运载火箭,插入轨道和进行机动的标准推进系统。尽管这些系统已广为人知,但由于发动机性能问题的高度非线性性质,历史上最优化的技术常常不足。在本文中,应用了粒子群优化(PSO)变体,通过控制发动机的氧化剂与燃料的比例以及de Laval喷嘴的膨胀来最大化有限面积燃烧室(FAC)平衡流火箭性能模型的比冲。收缩率。除了由PSO控制的参数外,还基于推进剂化学成分,燃烧室压力和环境压力来计算发动机性能,这些是作为程序输入提供的。通过与NASA的“应用化学平衡”(CEA)和市售的“火箭推进分析”(RPA)工具进行比较,对性能代码进行了验证。同样,通过与蛮力优化进行比较来验证PSO算法,蛮力优化计算所有可能的解决方案,然后确定哪个最优。粒子群算法被证明是一种有效的优化器,能够对多个非线性变量的复杂函数进行快速可靠的收敛。

著录项

  • 作者

    Jones, Daniel Ray.;

  • 作者单位

    The University of Alabama.;

  • 授予单位 The University of Alabama.;
  • 学科 Engineering Aerospace.;Engineering Mechanical.
  • 学位 M.S.
  • 年度 2013
  • 页码 103 p.
  • 总页数 103
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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