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首页> 外文期刊>Journal of Experimental and Theoretical Artificial Intelligence >Multi-objective mobile robot path planning problem through learnable evolution model
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Multi-objective mobile robot path planning problem through learnable evolution model

机译:可学习的演化模型的多目标移动机器人路径规划问题

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摘要

A new multi-objective non-Darwinian-type evolutionary computation approach based on learnable evolution model (LEM) is proposed for solving the robot path planning problem. The multi-objective property of this approach is governed by a robust strength Pareto evolutionary algorithm (SPEA) incorporated in the LEM algorithm presented here. Learnable evolution model includes a machine learning method, like the decision trees, that can detect the right directions of the evolution and leads to large improvements in the fitness of the individuals. Several new refiner operators are proposed to improve the objectives of the individuals in the evolutionary process. These objectives are: the path length, the path safety and the path smoothness. A modified integer coding path representation scheme is proposed where the edge-fixing and top-row fixing procedures are performed implicitly. This proposed robot path planning problem solving approach is assessed on eight realistic scenarios in order to verify the performance thereof. Computer simulations reveal that this proposed approach exhibits much higher hypervolume and set coverage in comparison with other similar approaches. The experimental results confirm that the proposed approach performs in the workspaces with a dense set of obstacles in a significant manner.
机译:针对机器人路径规划问题,提出了一种基于可学习进化模型(LEM)的多目标非达尔文式进化计算方法。此方法的多目标属性由包含在此处介绍的LEM算法中的鲁棒强度帕累托进化算法(SPEA)控制。可学习的进化模型包括机器学习方法(例如决策树),它可以检测正确的进化方向并导致个体适应度的大幅提高。提出了一些新的精炼机操作员,以改善个体在进化过程中的目标。这些目标是:路径长度,路径安全性和路径平滑度。提出了一种改进的整数编码路径表示方案,其中隐式地执行边缘固定和顶行固定过程。为了验证其性能,在八个现实情况下对提出的机器人路径规划问题解决方法进行了评估。计算机仿真表明,与其他类似方法相比,该方法具有更高的超容量和覆盖范围。实验结果证实,所提出的方法在具有密集障碍物的工作空间中以显着方式执行。

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