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Optimal shape design of an autonomous underwater vehicle based on multi-objective particle swarm optimization

机译:基于多目标粒子群优化的自主水下车辆的最佳形状设计

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摘要

Optimization of autonomous underwater vehicle's shape is usually a multi-objective optimization problem, which is essential for autonomousunderwater navigation and manipulation. To overcome the inefficiency of computational fluid dynamics software during the optimization process and thelimitations of traditional single-objective optimization, a novel strategy combining genetic expression programming and crowding distance basedmulti-objective particle swarm algorithm is presented. Its central idea is as follows, several underwater vehicle shapes are analysed to obtain their waterresistances and determine the best underwater robot shape. Shape factor of the bow and shape factor of the stern are employed as design variables, and sample points are selected by the optimal latin hypercube design. Then gene expression programming method is used to establish the surrogate model of resistance and surrounded volume. After that, the surrogate model based on the gene expression programming method is compared with that based on the surface respond method. The results show the superiority of the GEP method. Then the resistance and surrounded volume are set as two optimized variables and Pareto optimal solutions are obtained by using multi-objective particle swarm algorithm. Finally, the optimization results are compared with the hydrodynamic calculations, which shows the method proposed in the paper can greatly reduce the cost of computation and improve the efficiency of optimal shape design for underwater vehicle.
机译:自主水下车辆形状的优化通常是多目标优化问题,这对于自主水域导航和操纵至关重要。为了在优化过程中克服计算流体动力学软件的低效率和传统单目标优化的手表,介绍了组合基于遗传表达编程和拥挤距离的新策略。其中心思想如下,分析了几个水下车辆形状以获得其水分差距并确定最佳水下机器人形状。船尾的弓形和形状因子的形状因子被用作设计变量,并选择采样点通过最佳的拉丁超立体设计选择。然后基因表达编程方法用于建立抗性和包围体积的替代模型。此后,将基于基因表达编程方法的替代模型与基于表面响应法进行比较。结果表明了GEP方法的优越性。然后,通过使用多目标粒子群算法,将电阻和周围的体积设定为两个优化变量,并且通过多目标粒子群算法获得了Pareto最佳解决方案。最后,将优化结果与流体动力学计算进行比较,其示出了本文提出的方法可以大大降低计算成本,提高水下车辆最佳形状设计的效率。

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