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Optimization of Multiple Gravity Assist Trajectories with Deep Space Maneuver Using Evolutionary Algorithms

机译:利用进化算法,优化多重重力辅助轨迹的优化

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Multiple gravity assist (MGA) trajectories represent a particular class of space trajectories in which a spacecraft makes use of gravity assist (GA) of one or more celestial bodies to alter its path or velocity vector, in order to reach high ΔV targets with low propellant consumption. The search for optimal transfer trajectories can be formulated as a global optimization problem. A simple MGA problem without any deep space maneuver (DSM) considers the departure epoch and the transfer times of the trajectories between two planets as the design variables for the objective function evaluation with constraint on minimum periapsis radius at each planet. The introduction of DSM in this problem during a trajectory leg makes the model more flexible, but also more complex. Apart from the design variables taken for MGA problem, the bounds on additional variables relating to spacecraft's relative velocity at departure planet, the time instant at which each DSM takes place, the pericenter radius at each body and the turning angle of each hyperbola are considered for the objective function assessment. This paper evaluates some benchmark MGA mission problems with one DSM. The data of these problems are available under Global Trajectory Optimization Competition (GTOC) in European Space Agency (ESA) website. These problems are optimized using the evolutionary algorithms (EAs) like differential evolution (DE), genetic algorithm (GA), particle swarm optimization (PSO), and a comparison of the results are made.
机译:多重重力辅助(MGA)轨迹代表特定的空间轨迹,其中航天器利用一个或多个天体的重力辅助(Ga)来改变其路径或速度向量,以便达到低推进剂的高ΔV靶标消耗。搜索最佳传输轨迹可以制定为全局优化问题。一个简单的MGA问题没有任何深度空间机动(DSM)都考虑了两种行星之间的轨迹的转移时间,作为目标函数评估的设计变量,在每个行星上的最小恐慌半径上的约束。在轨迹腿期间引入DSM在这个问题中使模型更加灵活,而且更复杂。除了用于MGA问题的设计变量之外,与航天器相对速度有关的额外变量的界限,每个DSM发生的时间瞬间,每个身体处的围绕到每个双曲线的转动角度客观函数评估。本文评估了一个DSM的一些基准MGA任务问题。这些问题的数据在欧洲航天局(ESA)网站上的全球轨迹优化竞争(GTOC)下提供。这些问题是使用差分演进(DE),遗传算法(GA),粒子群优化(PSO)等进化算法(EAS)进行优化的,并进行比较。

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