Lee Yechan, Park Hyung-Soon
Department of Mechanical Engineering, Korea Advanced Institute of Science and Technology, Daejeon 34141, Republic of Korea.
Biomimetics (Basel). 2024 Mar 13;9(3):172. doi: 10.3390/biomimetics9030172.
The finger workspace is crucial for performing various grasping tasks. Thus, various soft rehabilitation gloves have been developed to assist individuals with paralyzed hands in activities of daily living (ADLs) or rehabilitation training. However, most soft robotic glove designs are insufficient to assist with various hand postures because most of them use an underactuated mechanism for design simplicity. Therefore, this paper presents a methodology for optimizing the design of a high-degree-of-freedom soft robotic glove while not increasing the design complexity. We defined the required functional workspace of the index finger based on ten frequently used grasping postures in ADLs. The design optimization was achieved by simulating the proposed finger-robot model to obtain a comparable workspace to the functional workspace. In particular, the moment arm length for extension was optimized to facilitate the grasping of large objects (precision disk and power sphere), whereas a torque-amplifying routing design was implemented to aid the grasping of small objects (lateral pinch and thumb-two-finger pinch). The effectiveness of the optimized design was validated through testing with a stroke survivor and comparing the assistive workspace. The observed workspace demonstrated that the optimized glove design could assist with nine out of the ten targeted grasping posture functional workspaces. Furthermore, the assessment of the grasping speed and force highlighted the glove's usability for various rehabilitation activities. We also present and discuss a generalized methodology to optimize the design parameters of a soft robotic glove that uses an underactuated mechanism to assist the targeted workspace. Overall, the proposed design optimization methodology serves as a tool for developing advanced hand rehabilitation robots, as it offers insight regarding the importance of routing optimization in terms of the workspace.
手指工作空间对于执行各种抓握任务至关重要。因此,已经开发了各种软康复手套,以帮助手部瘫痪的人进行日常生活活动(ADL)或康复训练。然而,大多数软机器人手套设计不足以辅助各种手部姿势,因为它们中的大多数为了设计简单而采用欠驱动机制。因此,本文提出了一种在不增加设计复杂性的情况下优化高自由度软机器人手套设计的方法。我们基于ADL中十种常用抓握姿势定义了食指所需的功能工作空间。通过模拟所提出的手指机器人模型来实现设计优化,以获得与功能工作空间相当的工作空间。特别是,优化了伸展的力臂长度,以方便抓握大物体(精密圆盘和动力球),同时实施了扭矩放大路径设计,以帮助抓握小物体(侧捏和拇指 - 双指捏)。通过对一名中风幸存者进行测试并比较辅助工作空间,验证了优化设计的有效性。观察到的工作空间表明,优化后的手套设计可以辅助十种目标抓握姿势功能工作空间中的九种。此外,对抓握速度和力的评估突出了该手套在各种康复活动中的可用性。我们还提出并讨论了一种通用方法,以优化使用欠驱动机制辅助目标工作空间的软机器人手套的设计参数。总体而言,所提出的设计优化方法可作为开发先进手部康复机器人的工具,因为它提供了关于工作空间方面路径优化重要性的见解。