Path Planning with Improved Artificial Potential Field Method Based on Decision Tree

Xin Lin, Zhan-Qing Wang, Xudong Chen
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引用次数: 25

Abstract

Path planning is one of the key research directions in the field of mobile robots. It ensures that moving objects can reach the target point safely and without collision in a complex obstacle environment. The path planning is to search an optimal path from the starting point to the target point for the mobile robot in an environment with obstacles, according to certain evaluation criteria (such as the time, the best path, the minimum energy consumption, etc.). The path planning based on artificial potential field method has been paid more and more attention because of its advantages such as convenient calculation, simple implementation of hardware and outstanding real-time performance. However, the artificial potential field method has some limitations, such as the local minimum, the oscillation of moving objects among obstacles and so on. To solve these problems, we can introduce the idea of decision tree into the artificial potential field method for improvement. In machine learning, decision tree is usually used for classification. It is a prediction model, which represents a mapping relationship between object attributes and object values. By utilizing the advantages of decision tree in rule expression and extraction, an improved artificial potential field path planning model based on decision tree is constructed, which can realize real-time and accurate identification of current behavior and fast decision-making of next time behavior in path planning. Aiming at the dynamic path planning problem of mobile robots in indoor complex environment, based on the traditional artificial potential field method, this paper introduces the distance term into the potential field function, and proposes an improved artificial potential field method based on the idea of decision tree, to solve the local minimum, the oscillation between obstacles and concave obstacle problems. According to repulsion coefficient, deflection angle of resultant force and velocity, a reasonable classification decision is made to meet the needs of different obstacle distribution scenarios, and the effectiveness of the proposed method is verified by simulation experiments. Simulation results show that, compared with the traditional artificial potential field method, the planning time of improved algorithm is reduced by 50%, and the smoothness of path planning by the improved algorithm is increased by 43.3%.
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基于决策树的改进人工势场法路径规划
路径规划是移动机器人领域的重点研究方向之一。它保证了在复杂的障碍物环境中,运动物体能够安全、无碰撞地到达目标点。路径规划是移动机器人在有障碍物的环境中,按照一定的评价标准(如时间、最佳路径、最小能耗等),从起点到目标点寻找一条最优路径。基于人工势场法的路径规划以其计算方便、硬件实现简单、实时性好等优点受到越来越多的关注。然而,人工势场法存在局部极小值、运动物体在障碍物之间的振荡等局限性。为了解决这些问题,我们可以在人工势场法中引入决策树的思想进行改进。在机器学习中,决策树通常用于分类。它是一个预测模型,表示对象属性和对象值之间的映射关系。利用决策树在规则表达和提取方面的优势,构建了一种改进的基于决策树的人工势场路径规划模型,实现了路径规划中当前行为的实时准确识别和下次行为的快速决策。针对室内复杂环境下移动机器人动态路径规划问题,在传统人工势场法的基础上,在势场函数中引入距离项,提出了一种基于决策树思想的改进人工势场法,解决了局部最小值、障碍物间振荡和凹障碍物问题。根据斥力系数、合力偏转角和速度,对不同障碍物分布场景进行合理的分类决策,并通过仿真实验验证了所提出方法的有效性。仿真结果表明,与传统人工势场法相比,改进算法的规划时间缩短了50%,路径规划的平滑度提高了43.3%。
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