Lu Jiaxi, Takamido Ryota, Wang Yusheng, Ota Jun
Department of Precision Engineering, School of Engineering, The University of Tokyo, Tokyo, Japan.
Research into Artifacts, Center for Engineering (RACE), School of Engineering, The University of Tokyo, Tokyo, Japan.
Front Robot AI. 2024 Nov 15;11:1468385. doi: 10.3389/frobt.2024.1468385. eCollection 2024.
This study presents an experience-based hierarchical-structure optimization algorithm to address the robotic system environment design problem, which combines motion planning and environment arrangement problems together. The motion planning problem, which could be defined as a multiple-degree-of-freedom (m-DOF) problem, together with the environment arrangement problem, which could be defined as a free DOF problem, is a high-dimensional optimization problem. Therefore, the hierarchical structure was established, with the higher layer solving the environment arrangement problem and lower layer solving the problem of motion planning. Previously planned trajectories and past results for this design problem were first constructed as datasets; however, they cannot be seen as optimal. Therefore, this study proposed an experience-reuse manner, which selected the most "useful" experience from the datasets and reused it to query new problems, optimize the results in the datasets, and provide better environment arrangement with shorter path lengths within the same time. Therefore, a hierarchical structural caseGA-ERTC algorithm was proposed. In the higher layer, a novel approach employing the case-injected genetic algorithm (GA) was implemented to tackle optimization challenges in robot environment design, leveraging experiential insights. Performance indices in the arrangement of the robot system's environment were determined by the robotic arm's motion and path length calculated using an experience-driven random tree (ERT) algorithm. Moreover, the effectiveness of the proposed method is illustrated with the 12.59% decrease in path lengths by solving different settings of hard problems and 5.05% decrease in easy problems compared with other state-of-the-art methods in three small robots.
本研究提出了一种基于经验的层次结构优化算法,以解决机器人系统环境设计问题,该问题将运动规划和环境布置问题结合在一起。运动规划问题可定义为多自由度(m-DOF)问题,与可定义为自由自由度问题的环境布置问题一起,是一个高维优化问题。因此,建立了层次结构,较高层解决环境布置问题,较低层解决运动规划问题。先前针对此设计问题规划的轨迹和过去的结果首先被构建为数据集;然而,它们不能被视为最优的。因此,本研究提出了一种经验重用方式,从数据集中选择最“有用”的经验,并将其重新用于查询新问题、优化数据集中的结果,并在相同时间内以更短的路径长度提供更好的环境布置。因此,提出了一种层次结构的caseGA-ERTC算法。在较高层,采用了一种新颖的方法,即注入案例的遗传算法(GA),以利用经验见解来应对机器人环境设计中的优化挑战。机器人系统环境布置中的性能指标由使用经验驱动随机树(ERT)算法计算的机器人手臂运动和路径长度确定。此外,与三个小型机器人中的其他现有方法相比,通过解决不同设置的难题,所提方法的路径长度减少了12.59%,解决简单问题时路径长度减少了5.05%,这说明了该方法的有效性。