Carrico James D, Hermans Tucker, Kim Kwang J, Leang Kam K
University of Mary, School of Engineering, Bismarck, ND, 58504, USA.
University of Utah, School of Computing, Utah Learning Lab for Manipulation Autonomy, University of Utah Robotics Center, Salt Lake City, UT, 84112, USA.
Sci Rep. 2019 Nov 25;9(1):17482. doi: 10.1038/s41598-019-53570-y.
This paper presents a new manufacturing and control paradigm for developing soft ionic polymer-metal composite (IPMC) actuators for soft robotics applications. First, an additive manufacturing method that exploits the fused-filament (3D printing) process is described to overcome challenges with existing methods of creating custom-shaped IPMC actuators. By working with ionomeric precursor material, the 3D-printing process enables the creation of 3D monolithic IPMC devices where ultimately integrated sensors and actuators can be achieved. Second, Bayesian optimization is used as a learning-based control approach to help mitigate complex time-varying dynamic effects in 3D-printed actuators. This approach overcomes the challenges with existing methods where complex models or continuous sensor feedback are needed. The manufacturing and control paradigm is applied to create and control the behavior of example actuators, and subsequently the actuator components are combined to create an example modular reconfigurable IPMC soft crawling robot to demonstrate feasibility. Two hypotheses related to the effectiveness of the machine-learning process are tested. Results show enhancement of actuator performance through machine learning, and the proof-of-concepts can be leveraged for continued advancement of more complex IPMC devices. Emerging challenges are also highlighted.
本文提出了一种新的制造与控制范式,用于开发适用于软体机器人应用的柔软离子聚合物-金属复合材料(IPMC)致动器。首先,描述了一种利用熔丝(3D打印)工艺的增材制造方法,以克服现有制造定制形状IPMC致动器方法所面临的挑战。通过使用离聚物前驱体材料,3D打印工艺能够制造出3D整体式IPMC器件,最终实现集成传感器和致动器。其次,贝叶斯优化被用作一种基于学习的控制方法,以帮助减轻3D打印致动器中复杂的时变动态效应。这种方法克服了现有方法需要复杂模型或连续传感器反馈的挑战。该制造与控制范式被应用于创建和控制示例致动器的行为,随后将致动器组件组合起来,创建了一个示例模块化可重构IPMC软体爬行机器人,以证明其可行性。测试了与机器学习过程有效性相关的两个假设。结果表明,通过机器学习可提高致动器性能,并且这些概念验证可用于推动更复杂IPMC器件的持续发展。文中还强调了新出现的挑战。