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An Improved Genetic Algorithm for Path-Planning of Unmanned Surface Vehicle

机译:一种改进的无人面车辆路径规划的遗传算法

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摘要

The genetic algorithm (GA) is an effective method to solve the path-planning problem and help realize the autonomous navigation for and control of unmanned surface vehicles. In order to overcome the inherent shortcomings of conventional GA such as population premature and slow convergence speed, this paper proposes the strategy of increasing the number of offsprings by using the multi-domain inversion. Meanwhile, a second fitness evaluation was conducted to eliminate undesirable offsprings and reserve the most advantageous individuals. The improvement could help enhance the capability of local search effectively and increase the probability of generating excellent individuals. Monte-Carlo simulations for five examples from the library for the travelling salesman problem were first conducted to assess the effectiveness of algorithms. Furthermore, the improved algorithms were applied to the navigation, guidance, and control system of an unmanned surface vehicle in a real maritime environment. Comparative study reveals that the algorithm with multi-domain inversion is superior with a desirable balance between the path length and time-cost, and has a shorter optimal path, a faster convergence speed, and better robustness than the others.
机译:遗传算法(GA)是解决路径规划问题的有效方法,有助于实现无人面车辆的自主导航和控制。为了克服常规GA的固有缺点,如人口过早和慢频率缓慢,本文提出了通过使用多域反转来增加后代数量的策略。同时,进行了第二种健身评估,以消除不良后代并保留最有利的个体。改进可以有助于提高本地搜索的能力,并提高产生优秀人物的概率。首次进行了来自图书馆的五个例子的Monte-Carlo模拟问题,以评估算法的有效性。此外,将改进的算法应用于真正的海洋环境中无人面车辆的导航,引导和控制系统。比较研究表明,具有多域反转的算法优于路径长度和时间成本之间所需的平衡,并且具有较短的最佳路径,更快的收敛速度,更好的鲁棒性。

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