基于神经网络的工业机器人曲率最优光滑路径规划

Benjamin Kaiser, A. Verl
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引用次数: 1

摘要

工业机器人的使用在当今的生产技术中起着越来越重要的作用。许多加工工艺,如铣削或粘合,对精度和路径平滑度有很高的要求,以确保良好的路径跟踪。然而,工业机器人在笛卡尔空间中的路径主要由一系列直线和圆周运动组成,因此在线段过渡中速度和加速度是不连续的。这极大地限制了机器人系统的生产率和加工质量。遍历这些不连续点会机械地激活运动学,从而影响精度和表面质量。此外,机器人系统的驱动器承受更高的负载,从而降低了机器人的使用寿命。需要高阶连续路径来防止这种情况。角点平滑方法在分段过渡中插入光滑的、曲率连续的曲线,从而得到光滑的路径。基于多项式光滑样条的方法要么不具有曲率最优性,要么在不违反机器人控制器在线约束的情况下无法求解。为了解决工业机器人控制器中曲率最优平滑曲线的计算与在线执行之间的冲突,本文评估了将神经网络作为计算多项式样条角点平滑最优几何参数的模型。该模型在包含离线生成的几何对和最优参数的数据集上应用监督学习进行训练。该方法可得到曲率优化的平滑曲线,适用于在线路径规划。以工业机器人的数字孪生模型为例,对神经网络在路径规划问题中的应用进行了仿真分析。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Planning of Curvature-Optimal Smooth Paths for Industrial Robots Using Neural Networks
The use of industrial robots plays an increasingly important role in today’s production technology. Many fabrication processes like milling or gluing have high demands on accuracy and path smoothness to ensure good path tracking. Yet, industrial robot paths in cartesian space mainly consist of a sequence of linear and circular movements and hence show velocity and acceleration discontinuities in the segment transitions. This significantly limits the productivity and machining quality of the robot system. Traversing these discontinuities activates the kinematics mechanically and hence influences the accuracy and surface quality. In addition, the drives of the robot system are subjected to a higher load as a result which decreases the lifetime of the robot. Higher-order continuous paths are required to prevent this. Corner smoothing methods insert smooth, curvature continuous curves in the segment transition resulting in smooth paths. Methods based on polynomial smoothing splines either do not have any curvature-optimality properties or cannot be solved without violating the online constraints of the robot controller. To solve the conflict between the calculation of curvature-optimal smoothing curves and online execution in industrial robot controllers, this paper evaluates the use of neural networks as a model for calculating optimal geometry parameters for corner smoothing with polynomial splines. The model is trained applying supervised learning on a dataset containing offline generated pairs of geometries and optimal parameters. The presented method leads to curvature-optimized smoothing curves and is suitable for online path planning. The application of neural networks to this path planning problem is evaluated in a simulation using a digital twin model of an industrial robot.
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