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SmartPATH: An Efficient Hybrid ACO-GA Algorithm for Solving the Global Path Planning Problem of Mobile Robots

机译:SmartPath:一种有效的混合ACO-GA算法,用于解决移动机器人的全球路径规划问题

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摘要

Path planning is a fundamental optimization problem that is crucial for the navigation of a mobile robot. Among the vast array of optimization approaches, we focus in this paper on Ant Colony Optimization (ACO) and Genetic Algorithms (GA) for solving the global path planning problem in a static environment, considering their effectiveness in solving such a problem. Our objective is to design an efficient hybrid algorithm that takes profit of the advantages of both ACO and GA approaches for the sake of maximizing the chance to find the optimal path even under real-time constraints. In this paper, we present smartPATH, a new hybrid ACO-GA algorithm that relies on the combination of an improved ACO algorithm (IACO) for efficient and fast path selection, and a modified crossover operator to reduce the risk of falling into a local minimum. We demonstrate through extensive simulations that smartPATH outperforms classical ACO (CACO), GA algorithms. It also outperforms the Dijkstra exact method in solving the path planning problem for large graph environments. It improves the solution quality up to 57% in comparison with CACO and reduces the execution time up to 83% as compared to Dijkstra for large and dense graphs. In addition, the experimental results on a real robot shows that smartPATH finds the optimal path with a probability up to 80% with a small gap not exceeding 1m in 98%.
机译:路径规划是一个基本优化问题,对于移动机器人的导航至关重要。在广泛的优化方法中,我们专注于本文关于蚁群优化(ACO)和遗传算法(GA),用于解决静态环境中的全球路径规划问题,考虑到解决此类问题的有效性。我们的目标是设计一种高效的混合算法,可以利用ACO和GA方法的利润,以便最大化即使在实时约束下找到最佳路径。在本文中,我们呈现了一种智能路径,一种新的混合ACO-GA算法,其依赖于改进的ACO算法(IACO)的组合,用于高效和快速的路径选择,以及修改的交叉运算符,以降低落入局部最小值的风险。我们通过广泛的模拟展示SmartPath优于经典ACO(Caco),GA算法。它还优于DIJKSTRA精确方法来解决大图环境的路径规划问题。与Caco相比,它可以将溶液质量提高至57%,与Dijkstra进行大而致密图形相比,高达83%的执行时间可降低83%。此外,真正机器人的实验结果表明,SmartPath发现最佳路径,概率高达80%,小间隙不超过1米,98%。

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