A Hybrid Method for Industrial Robot Navigation

S. Raiesdana
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引用次数: 2

Abstract

Robot navigation in dynamic unknown environments is a challenging issue in the field of autonomous mobile robot control. This paper presents a hybrid robust method for navigating an industrial robot in an environment that contains dynamic obstacles. The objectives are to find the shortest path, to minimize the energy consumption of robot, to make the smoothness of the generated paths and to tackle dynamic obstacles. Robots employed in industrial environments demand considerable autonomy and require high level of accuracy and manoeuvrability at the same time. Besides, no collision is tolerable along the way. A single-objective optimization method based on path criteria fails to satisfy all of the requirements. This paper proposes a hybrid algorithm including the whale optimization algorithm (WOA) for path planning, a learnable function approximation network for making smoothness of the generated paths and a fuzzy logic controller to avoid obstacle collision. In this algorithm, WOA optimizes the best path to be taken from the start to goal position. Once a sequence of points is candidate and segments of path are merged, a radial basis function is trained to provide a smooth movement path in the dynamic environment while trying to maximize the safety margin. To further improve the safety of navigation, a fuzzy-based obstacle avoidance algorithm is executed when the robot is placed in the vicinity of an obstacle. Fuzzy decisions are made based on values of distance information. The proposed hybrid method for path planning and obstacle avoidance issues was implemented and evaluated in dynamic environments including specific shaped obstacles. A GUI-based simulation platform was designed in Matlab environment for testing the proposed algorithm. Implementation results indicate that the proposed algorithm has yielded in smooth non-marginal goal-directed navigation with acceptable performance metrics. Meanwhile, collisions to dynamic obstacles were adaptively and non-rigidly avoided. Such a model-free hybrid algorithm for path planning and obstacle avoidance can improve autonomy in industrial operation and decrease computational complexity.
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工业机器人导航的一种混合方法
机器人在动态未知环境中的导航是自主移动机器人控制领域的一个具有挑战性的问题。本文提出了一种用于工业机器人在包含动态障碍物的环境中导航的混合鲁棒方法。目标是找到最短路径,最大限度地减少机器人的能耗,使生成的路径平滑,并解决动态障碍。工业环境中使用的机器人需要相当大的自主性,同时需要高水平的精度和机动性。此外,沿途不允许发生碰撞。基于路径准则的单目标优化方法不能满足所有要求。本文提出了一种混合算法,包括用于路径规划的鲸鱼优化算法(WOA)、用于使生成的路径平滑的可学习函数近似网络和用于避免障碍物碰撞的模糊逻辑控制器。在该算法中,WOA优化了从起点到目标位置的最佳路径。一旦点序列是候选的并且路径段被合并,就训练径向基函数以在动态环境中提供平滑的移动路径,同时试图最大化安全裕度。为了进一步提高导航的安全性,当机器人被放置在障碍物附近时,执行了一种基于模糊的避障算法。模糊决策是基于距离信息的值做出的。所提出的路径规划和避障问题的混合方法在包括特定形状障碍物的动态环境中进行了实施和评估。在Matlab环境下设计了一个基于GUI的仿真平台来测试所提出的算法。实现结果表明,该算法在平滑的非边缘目标导向导航中取得了良好的性能指标。同时,自适应和非刚性地避免了与动态障碍物的碰撞。这种用于路径规划和避障的无模型混合算法可以提高工业操作的自主性并降低计算复杂度。
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来源期刊
Journal of Optimization in Industrial Engineering
Journal of Optimization in Industrial Engineering Engineering-Industrial and Manufacturing Engineering
CiteScore
2.90
自引率
0.00%
发文量
0
审稿时长
32 weeks
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