基于遗传算法和响应面法的运载火箭机头形状优化

A. Pourrajabian, M. Bakhtiari, R. Ebrahimi, H. Karimi
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引用次数: 4

摘要

为了减小阻力,在确定飞行条件下对运载火箭的机头形状进行了优化。考虑了两种优化方法:二值遗传算法和响应面法。由于阻力系数的值与动压成正比,因此目标函数是基于飞行状态下阻力系数的最小化,这对应于最大的动压。为了对目标函数进行评价,采用了气动预测工程规范。将气动预测代码的结果直接输入到二元遗传算法代码中,利用二元遗传算法常用的交叉、变异、精英等参数进行优化。此外,还分析了该算法对突变参数和种群大小的敏感性,得到了它们的最优值。同时考虑了二次模型的响应面法。从设计变量域中选取一些特殊点,利用气动预测工程规范计算这些点对应的阻力系数。然后用最小二乘法对这些点拟合相应的二阶曲面。结果表明,在遗传算法参数(突变率和种群大小)的最优值下;该算法在几代内收敛速度很快。在这种情况下,遗传算法只搜索1.4%的解空间,然后收敛。总体而言,两种方法的计算结果吻合较好。
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Optimization of nose shape of Launch Vehicle using genetic algorithm and response surface methods
In this study, to reduce the drag force, the nose shape of Launch Vehicle with determined flight conditions, is optimized. Two optimization methods are considered: binary genetic algorithm and response surface method. Since the value of drag coefficient is proportional to dynamic pressure, the objective function is based on minimization of drag coefficient in flight conditions which is corresponding to the maximum dynamic pressure. In order to evaluation of objective function, the aerodynamic prediction engineering code is used. The results of aerodynamic prediction code directly entered to binary genetic algorithm code and with common parameters of this algorithm like crossover, mutation and elitism, the optimization process is done. Moreover, the sensibility analysis of this algorithm respect to mutation parameter and size of population is analyzed and optimum values of them are obtained. Also, response Surface Method with quadratic model is considered. Some special points from domain of design variables are selected and corresponding drag coefficients for these points are calculated by aerodynamic prediction engineering code. Then, the appropriate second order surface is fitted to these points regarding to least square method. The results show that with optimum values of genetic algorithm parameters (rate of mutation and size of population); the algorithm converges rapidly with a few generations. In this case, the genetic algorithm only searches the 1.4% of solution space and then converged. Generally, the results show good agreement between two methods.
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