Understanding the Effects of Ant Algorithms on Path Planning with Gain-Ant Colony Optimization

V. Sangeetha, R. Krishankumar, K. S. Ravichandran, A. Gandomi
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Abstract

With the advent of more automated and unmanned systems, there is an increasing need for path planners. Intelligent path planners play an important role in the navigation of automated systems. In this work, the performance of an enhanced gain-ant colony optimization has been tested with the most popularly used ant algorithms – Ant system, Ant colony system and Min-Max ant system in the application of path planning. The pheromone update mechanism of traditional ant metaheuristic is enhanced with a local optimization mechanism and simulated with popular ant algorithms for an efficient choice of update rule. Evaluation is done using performance measures like path length and computation time taken. The results are statistically verified and analyzed. Path planned by proposed algorithm was found to be 3.25% shorter than existing algorithms.
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理解蚁群算法对增益-蚁群优化路径规划的影响
随着越来越多的自动化和无人系统的出现,对道路规划人员的需求越来越大。智能路径规划器在自动导航系统中起着重要的作用。本文采用最常用的蚂蚁算法——蚂蚁系统、蚁群系统和最小-最大蚂蚁系统在路径规划中的应用,对增强型增益-蚁群优化算法的性能进行了测试。将传统蚁群元启发式的信息素更新机制增强为局部优化机制,并用流行的蚁群算法模拟信息素更新规则的有效选择。评估是使用路径长度和计算时间等性能度量来完成的。对所得结果进行了统计验证和分析。算法规划的路径比现有算法缩短了3.25%。
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