Bayesian Optimization for Digging Control of Wheel-Loader Using Robot Manipulator

Pub Date : 2024-04-20 DOI:10.20965/jrm.2024.p0273
Motoki Koyama, Hiroaki Muranaka, Masato Ishikawa, Yuki Takagi
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Abstract

Wheel loaders are construction machines that are mainly used for excavating and loading sedimented ground into dump trucks. The objects to be excavated range from large materials, such as blast rock and crushed stone, to small materials, such as gravel, slag, and coal ash. Therefore, the excavation operation of wheel loaders requires a high skill level to cope with various terrains and soil types. As worker numbers at quarry sites decline, developing highly automated technology to replace operators is crucial. In particular, the geometry of the ground to be excavated by the wheel loader changes with each excavation, so the control parameters must be adapted sequentially during automated excavation. In this study, we proposed an online learning method using Bayesian optimization to search for control parameters from multiple trials and modify them sequentially. In particular, we formulate a multi-objective optimization problem maximizing a weighted linear combination of the payload and workload as an objective function. To validate the proposed method, we constructed an environment in which repeated digging tests can be performed using a robot manipulator with a bucket attached. Through comparative tests between feed-forward control, in which the robot moves along a fixed trajectory independent of the digging reaction force, and off-line control, in which the robot modifies the digging trajectory in response to the digging reaction force, we compared the ability of these methods to cope with terrain volume that is different from that of the optimization trial.
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使用机器人机械手对轮式装载机的挖掘控制进行贝叶斯优化
轮式装载机是一种建筑机械,主要用于挖掘沉积地面并将其装入自卸卡车。需要挖掘的对象既包括爆破石和碎石等大型材料,也包括碎石、矿渣和煤灰等小型材料。因此,轮式装载机的挖掘操作需要很高的技术水平,以应对各种地形和土壤类型。随着采石场工人数量的减少,开发高度自动化的技术以取代操作员至关重要。特别是,轮式装载机每次挖掘地面的几何形状都会发生变化,因此在自动挖掘过程中必须按顺序调整控制参数。在本研究中,我们提出了一种使用贝叶斯优化的在线学习方法,从多次试验中搜索控制参数并按顺序修改。具体而言,我们提出了一个多目标优化问题,将有效载荷和工作量的加权线性组合最大化作为目标函数。为了验证所提出的方法,我们构建了一个环境,在这个环境中,可以使用附带铲斗的机器人机械手进行反复挖掘试验。通过前馈控制(机器人沿固定轨迹移动,与挖掘反作用力无关)和离线控制(机器人根据挖掘反作用力改变挖掘轨迹)之间的比较试验,我们比较了这些方法应对与优化试验不同的地形体积的能力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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