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Coevolutionary Algorithm Applied to Skip Reentry Trajectory Optimization Design

机译:共用算法应用于跳过再入轨迹优化设计

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This paper proposed a coevolutionary algorithm combining improved particle swarm optimization algorithm with differential evolution method and its application was provided. Adaptive position escapable mechanism is introduced in the particle swarm optimization to improve the diversity of population and guarantee to achieve the global optima. The differential algorithm is employed in a cooperative manner to maintain the characteristic of fast convergence speed in the later convergence phase. The coevolutionary algorithm is then applied to skip trajectory optimization design for crew exploration vehicle with low-lift-to-drag and several comparative cases are conducted, Results show that coevolutionary algorithm is quite effective in finding the global optimal solution with great accuracy.
机译:本文提出了一种结合改进的粒子群优化算法的共同算法,提供了差分演化方法及其应用。在粒子群优化中引入了自适应位置可擒悬的机制,以提高人口的多样性和实现全球最优的保证。以协同方式采用差分算法,以保持稍后收敛阶段的快速收敛速度的特性。然后应用共轭算法来跳过船员勘探车辆的轨迹优化设计,具有低升力,进行了几个比较情况,结果表明,共用算法非常有效地以极高的准确性找到全局最佳解决方案。

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