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Design and performance analysis of global path planning techniques for autonomous mobile robots in grid environments:

机译:网格环境中自主移动机器人的全局路径规划技术的设计和性能分析:

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This article presents the results of the 2-year iroboapp research project that aims at devising path planning algorithms for large grid maps with much faster execution times while tolerating very small slacks with respect to the optimal path. We investigated both exact and heuristic methods. We contributed with the design, analysis, evaluation, implementation and experimentation of several algorithms for grid map path planning for both exact and heuristic methods. We also designed an innovative algorithm called relaxed A-star that has linear complexity with relaxed constraints, which provides near-optimal solutions with an extremely reduced execution time as compared to A-star. We evaluated the performance of the different algorithms and concluded that relaxed A-star is the best path planner as it provides a good trade-off among all the metrics, but we noticed that heuristic methods have good features that can be exploited to improve the solution of the relaxed exact method. This led us to design new hybrid algorithms that combine our relaxed A-star with heuristic methods which improve the solution quality of relaxed A-star at the cost of slightly higher execution time, while remaining much faster than A* for large-scale problems. Finally, we demonstrate how to integrate the relaxed A-star algorithm in the robot operating system as a global path planner and show that it outperforms its default path planner with an execution time 38% faster on average.
机译:本文介绍了为期2年的iroboapp研究项目的结果,该项目旨在为大型网格图设计路径规划算法,该算法的执行时间快得多,并且相对于最佳路径而言,可以容忍很小的松弛。我们研究了精确和启发式方法。我们为网格地图路径规划的几种算法的精确,启发式方法的设计,分析,评估,实现和实验做出了贡献。我们还设计了一种创新的算法,称为松弛A-star,它具有线性复杂度和松弛约束,与A-star相比,它提供了接近最优的解决方案,并且执行时间大大减少。我们评估了不同算法的性能,并得出结论,轻松的A-star是最佳路径规划器,因为它在所有指标之间提供了良好的折衷,但是我们注意到启发式方法具有可用于改进解决方案的良好功能。宽松的精确方法。这导致我们设计了新的混合算法,将放松的A-star与启发式方法相结合,以稍微更长的执行时间为代价提高了放松的A-star的解决方案质量,而在解决大规模问题时却比A *快得多。最后,我们展示了如何将宽松的A-star算法作为全局路径规划器集成到机器人操作系统中,并展示了它比默认路径规划器表现更好,其执行时间平均快了38%。

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