软机器人蠕动分选台的定性控制

M. Stommel, Weiliang Xu
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引用次数: 4

摘要

柔性机器人蠕动分选台是一类新型的工业机器人,它通过产生运动表面变形来移动表面上的物体。为了实现这种变形,表面层由带有嵌入式驱动器阵列的软材料制成。在工业自动化中,必须以一种方式控制阵列,使表表面上的对象能够以解决给定任务的方式进行传输和重新排列。由于控制信号的高维性、机器人形状的自由度不受限制、缺乏参数和非参数模型、可能具有多步骤的复杂自动化任务、非线性材料特性以及对机器人及其表面物体状态的不完全了解,软机器人蠕动分拣台的控制具有挑战性。在本文中,我们分析了人工智能方法解决控制问题的可行性。我们的结论是,自动化任务可以有效地细分为一系列更容易的子问题,涵盖一系列基本的、重复的运动模式。通过比较机器人的实际形状和理想形状,可以优化产生特定运动模式的输入信号。优化问题的凸性取决于机器人的设计和所使用的损失函数。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Qualitative control of soft robotic peristaltic sorting tables
Soft robotic peristaltic sorting tables are a new class of industrial robots that move objects on their surface by producing moving surface deformations. To realise such deformations, the surface layer is made of a soft material with an embedded array of actuators. In industrial automation, the array must be controlled in a way that objects on the surface of the table are transported and realigned in a way that solves a given task. The control of a soft robotic peristaltic sorting table is challenging because of the high dimensionality of the control signals, unrestricted degrees of freedom in terms of the robot shape, a lack of parametric and non-parametric models, possibly complex automation tasks with multiple steps, nonlinear material properties, and incomplete knowledge about the state of the robot and the objects on its surface. In this paper, we analyse the feasibility of approaches from artificial intelligence to solve the control problem. We conclude that an automation task can be efficiently subdivided into a sequence of easier subproblems covering a range of basic, repetitive movement patterns. The input signals resulting in certain movement patterns can be optimised by comparing the actual robot shape with the ideal one. The convexity of the optimisation problem depends on the robot design and the used loss function.
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