"Robot Global Path Planning Based on an Improved Ant Colony Algorithm"
written by Jingang Cao,
published by Journal of Computer and Communications, Vol.4 No.2, 2016
has been cited by the following article(s):
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[2] Collision Avoidance Planning Method of USV Based on Improved Ant Colony Optimization Algorithm
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[6] Off-road Path Planning Based on Improved Ant Colony Algorithm
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[8] Inverted ant colony optimization for search and rescue in an unknown maze-like indoor environment
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[9] How effective is Ant Colony Optimisation at Robot Path Planning
[10] Search in a Maze-Like Environment with Ant Algorithms: Complexity, Size and Energy Study
[11] Optimization of Chemical Logistics Siting based on Improved ACO
[12] 基于改进势场蚁群算法的机器人路径规划
[13] 障碍空间中基于并行蚁群算法的 k 近邻查询
[14] Welding Robot Collision-Free Path Optimization
Applied Sciences, 2017
[15] 世界坐标系下非完整轮式移动机器人转弯轨迹的时域非微分描述方程
[16] Path planning and Obstacle avoidance approaches for Mobile robot
[17] A Hybrid Genetic Algorithm for Mobile Robot Shortest Path Problem
International Journal of Intelligent Systems and Applications in Engineering, 2016