航空学报 > 2008, Vol. 30 Issue (6): 1538-1541

基于粒子群算法的飞机总体参数优化

沈伋1,韩丽川2,沈益斌1   

  1. 1.海军装备研究院 航空所 2.上海交通大学 安泰管理学院
  • 收稿日期:2007-09-29 修回日期:2008-01-25 出版日期:2008-11-25 发布日期:2008-11-25
  • 通讯作者: 沈伋

Optimization of Airplane Primary Parameters Based on Particle Swarm Algorithm

Shen Ji1,Han Lichuan2,Shen Yibin1

  

  1. 1.Institute of Aviation Equipment, Naval Academy of Armament 2.Aetna School of Management, Shanghai Jiaotong University
  • Received:2007-09-29 Revised:2008-01-25 Online:2008-11-25 Published:2008-11-25
  • Contact: Shen Ji

摘要: 现有的飞机总体参数优化方法在效率和适应性上存在不足。考虑到粒子群算法是一种基于群智能方法的演化计算技术,它对不同复杂约束条件下的多目标优化问题较常规方法更具简便性和适用性。因此,提出了使用非数值计算的粒子群算法来改进飞机总体参数优化效率。详细研究了粒子群算法在飞机总体参数优化上的应用方法,并着重于3个方面:①以航程、商载和起降距离为优化目标的粒子群算法构建;②粒子群算法中因子的自适应修正方法;③基于粒子群算法的飞机总体参数优化流程。计算结果与文献结果相比具有较好的一致性和合理性,所提出的方法可有效地应用于飞机总体参数优化。

关键词: 多目标优化, 飞机设计, 飞机总体参数, 粒子群算法

Abstract: Most existing optimization methods of airplane primary parameters are insufficient in efficiency and adaptability. This article presents a new nonnumerical optimization method that uses the particle swarm algorithm to improve the optimization performance of airplane primary parameters, because this method is based on the evolvement technology of colony intelligence and has the advantages of facility and availability to multiobjective optimization problems with complex restrictions. The application approach of this algorithm in airplane primary parameters is explained in detail, including ① construction of the particle swarm algorithm in the optimization of airplane primary parameters selecting range, payload, take-off and landing distances as the goals of optimization; ②self-adaptive method of choice coefficients; a new way to calculate the coefficients automatically in different steps; and③flow chart of optimization of airplane primary parameters. Experimental data of a medium-range aerotransport are presented. Compared with the reference, the data show good coherence and rationality. Thus the proposed method can be effectively applied to airplane design.

Key words: multiobjective optimization, airplane design, airplane primary parameters, particle swarm algorithm

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