SPADA:基于代理建模的形状匹配软气动执行器设计工具箱

Robotics reports (New Rochelle, N.Y.) Pub Date : 2024-01-18 eCollection Date: 2024-01-01 DOI:10.1089/rorep.2023.0029
Yao Yao, Liang He, Perla Maiolino
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引用次数: 0

摘要

软气动致动器(SPA)可通过简单的压力输入为软体机器人产生运动,但需要进行适当的设计以适应目标应用。现有的设计方法采用运动学模型和优化方法来估计致动器的响应和最佳设计参数,以实现目标致动器的形状。在 SPA 中,波纹管 SPA 擅长快速成型和大变形,但由于几何形状复杂和材料非线性,其运动学模型往往缺乏准确性。此外,现有的形状匹配算法无法提供从所需形状到致动器的端到端解决方案。此外,尽管有了计算设计管道,但用于直接应用的易用且用户友好的工具箱仍然遥遥无期。本文针对这些挑战,为波纹管软气动执行器提供了端到端形状匹配设计框架,以简化设计流程,并提供了开源工具箱 SPADA(软气动执行器设计工具),以图形用户界面实现该框架,方便用户访问。它提供了一个基于模块化设计的运动学模型,以提高精确度、有限元法(FEM)模拟和片状恒定曲率(PCC)近似。基于有限元模拟数据的人工神经网络训练代用模型,可在优化过程中进行快速计算。形状匹配算法融合了三维 (3D) PCC 分割和基于代用模型的遗传算法,可为所需形状确定最佳推杆设计参数。该工具箱实施了所提出的设计框架,证明了其端到端设计致动器的能力,可精确匹配均方根误差为 4.16、2.70 和 2.51 毫米的二维形状,并通过设计三维可变形致动器展示了其潜力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
SPADA: A Toolbox of Designing Soft Pneumatic Actuators for Shape Matching Based on Surrogate Modeling.

Soft pneumatic actuators (SPAs) produce motions for soft robots with simple pressure input, however, they require to be appropriately designed to fit the target application. Available design methods employ kinematic models and optimization to estimate the actuator response and the optimal design parameters to achieve a target actuator's shape. Within SPAs, bellow SPAs excel in rapid prototyping and large deformation, yet their kinematic models often lack accuracy due to the geometry complexity and the material nonlinearity. Furthermore, existing shape-matching algorithms are not providing an end-to-end solution from the desired shape to the actuator. In addition, despite the availability of computational design pipelines, an accessible and user-friendly toolbox for direct application remains elusive. This article addresses these challenges, offering an end-to-end shape-matching design framework for bellow SPAs to streamline the design process, and the open-source toolbox SPADA (Soft Pneumatic Actuator Design frAmework) implementing the framework with a graphic user interface for easy access. It provides a kinematic model grounded on a modular design to improve accuracy, finite element method (FEM) simulations, and piecewise constant curvature (PCC) approximation. An artificial neural network-trained surrogate model, based on FEM simulation data, is trained for fast computation in optimization. A shape-matching algorithm, merging three-dimensional (3D) PCC segmentation and a surrogate model-based genetic algorithm, identifies optimal actuator design parameters for desired shapes. The toolbox, implementing the proposed design framework, has proven its end-to-end capability in designing actuators to precisely match two-dimensional shapes with root-mean-squared-errors of 4.16, 2.70, and 2.51 mm, and demonstrating its potential by designing a 3D deformable actuator.

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