学习控制三维铁流体机器人。

Soft robotics Pub Date : 2024-04-01 Epub Date: 2023-10-23 DOI:10.1089/soro.2023.0005
Reza Ahmed, Roberto Calandra, Hamid Marvi
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引用次数: 0

摘要

近年来,铁磁流体作为医疗应用的材料越来越受欢迎,如眼科手术、胃肠道手术和癌症治疗等。铁流体机器人是多功能和可扩展的,具有流体特性,并且可以远程控制;因此,它们对于这样的医疗任务是特别有利的。以前,铁流体机器人控制是通过操纵手持永磁体或在电流控制的电磁场中实现的,从而产生二维位置和形状控制以及三维(3D)耦合位置-形状或仅位置控制。铁流体液滴机器人的控制提出了一个独特的挑战,其中基于模型的控制已被证明在计算上是有限的。因此,在本研究中,选择了一种无模型控制方法,并表明可以使用机器学习来执行学习铁流机器人控制的最优控制参数的任务。特别是,我们探索了使用贝叶斯优化来寻找铁磁流体液滴三维姿态控制的最佳控制器参数:其质心位置、拉伸方向和拉伸半径。我们证明,使用简单的控制方法,可以在3D中以高精度和高精度独立控制铁磁液滴的位置、拉伸方向和拉伸半径。最后,我们使用铁流体机器人在3D设置中执行拾取和放置、芯片上实验室pH测试和电气切换。本研究的目的是通过在3D中引入全姿态控制来扩大铁流机器人的潜力,并展示该技术在微组装、芯片实验室和电子领域的潜力。这项研究中提出的方法可以作为一个起点,将铁流机器人纳入这些领域的未来研究。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Learning to Control a Three-Dimensional Ferrofluidic Robot.

In recent years, ferrofluids have found increased popularity as a material for medical applications, such as ocular surgery, gastrointestinal surgery, and cancer treatment, among others. Ferrofluidic robots are multifunctional and scalable, exhibit fluid properties, and can be controlled remotely; thus, they are particularly advantageous for such medical tasks. Previously, ferrofluidic robot control has been achieved via the manipulation of handheld permanent magnets or in current-controlled electromagnetic fields resulting in two-dimensional position and shape control and three-dimensional (3D) coupled position-shape or position-only control. Control of ferrofluidic liquid droplet robots poses a unique challenge where model-based control has been shown to be computationally limiting. Thus, in this study, a model-free control method is chosen, and it is shown that the task of learning optimal control parameters for ferrofluidic robot control can be performed using machine learning. Particularly, we explore the use of Bayesian optimization to find optimal controller parameters for 3D pose control of a ferrofluid droplet: its centroid position, stretch direction, and stretch radius. We demonstrate that the position, stretch direction, and stretch radius of a ferrofluid droplet can be independently controlled in 3D with high accuracy and precision, using a simple control approach. Finally, we use ferrofluidic robots to perform pick-and-place, a lab-on-a-chip pH test, and electrical switching, in 3D settings. The purpose of this research is to expand the potential of ferrofluidic robots by introducing full pose control in 3D and to showcase the potential of this technology in the areas of microassembly, lab-on-a-chip, and electronics. The approach presented in this research can be used as a stepping-off point to incorporate ferrofluidic robots toward future research in these areas.

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