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Application of Improved Particle Swarm Optimization for Navigation of Unmanned Surface Vehicles

机译:改进粒子群算法在无人飞行器导航中的应用

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摘要

Multi-sensor fusion for unmanned surface vehicles (USVs) is an important issue for autonomous navigation of USVs. In this paper, an improved particle swarm optimization (PSO) is proposed for real-time autonomous navigation of a USV in real maritime environment. To overcome the conventional PSO’s inherent shortcomings, such as easy occurrence of premature convergence and human experience-determined parameters, and to enhance the precision and algorithm robustness of the solution, this work proposes three optimization strategies: linearly descending inertia weight, adaptively controlled acceleration coefficients, and random grouping inversion. Their respective or combinational effects on the effectiveness of path planning are investigated by Monte Carlo simulations for five TSPLIB instances and application tests for the navigation of a self-developed unmanned surface vehicle on the basis of multi-sensor data. Comparative results show that the adaptively controlled acceleration coefficients play a substantial role in reducing the path length and the linearly descending inertia weight help improve the algorithm robustness. Meanwhile, the random grouping inversion optimizes the capacity of local search and maintains the population diversity by stochastically dividing the single swarm into several subgroups. Moreover, the PSO combined with all three strategies shows the best performance with the shortest trajectory and the superior robustness, although retaining solution precision and avoiding being trapped in local optima require more time consumption. The experimental results of our USV demonstrate the effectiveness and efficiency of the proposed method for real-time navigation based on multi-sensor fusion.
机译:无人水面车辆(USV)的多传感器融合是USV自主导航的重要问题。在本文中,提出了一种改进的粒子群优化算法(PSO),用于在实际海上环境中对USV进行实时自主导航。为了克服常规PSO固有的缺点,如容易出现过早收敛和人类经验确定的参数,并提高解决方案的精度和算法的鲁棒性,这项工作提出了三种优化策略:线性下降惯性权重,自适应控制的加速度系数,以及随机分组反演。通过对五个TSPLIB实例的蒙特卡洛模拟以及基于多传感器数据的自行研发的无人水面车辆导航的应用测试,研究了它们对路径规划有效性的影响。比较结果表明,自适应控制的加速度系数在减小路径长度方面起着重要作用,而线性下降的惯性权重则有助于提高算法的鲁棒性。同时,随机分组反演通过将单个群随机分为几个子组来优化局部搜索的能力并维持种群多样性。此外,虽然保持解决方案的精度并避免陷入局部最优状态需要更多时间,但是结合了这三种策略的PSO表现出了最佳的性能,具有最短的轨迹和出色的鲁棒性。我们的USV的实验结果证明了所提出的基于多传感器融合的实时导航方法的有效性和效率。

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