Shanmuga Prasad Shamanth, Luthfiyani Ulfah Khairiyah, Kim Youngwoo
Department of Electrical Engineering, Korea National University of Transportation, Chungju, 27469, South Korea.
Department of Electrical Engineering, Institut Teknologi Indonesia, Jl. Raya Puspiptek, South Tangerang, 15314, Indonesia.
Med Biol Eng Comput. 2025 Jan;63(1):111-125. doi: 10.1007/s11517-024-03176-y. Epub 2024 Aug 17.
Robot-assisted rehabilitation and training systems are utilized to improve the functional recovery of individuals with mobility limitations. These systems offer structured rehabilitation through precise human-robot interaction, outperforming traditional physical therapy by delivering advantages such as targeted muscle recovery, optimization of walking patterns, and automated training routines tailored to the user's objectives and musculoskeletal attributes. In our research, we propose the development of a walking simulator that considers user-specific musculoskeletal information to replicate natural walking dynamics, accounting for factors like joint angles, muscular forces, internal user-specific constraints, and external environmental factors. The integration of these factors into robot-assisted training can provide a more realistic rehabilitation environment and serve as a foundation for achieving natural bipedal locomotion. Our research team has developed a robot-assisted training platform (RATP) that generates gait training sets based on user-specific internal and external constraints by incorporating a genetic algorithm (GA). We utilize the Lagrangian multipliers to accommodate requirements from the rehabilitation field to instantly reshape the gait patterns while maintaining their overall characteristics, without an additional gait pattern search process. Depending on the patient's rehabilitation progress, there are times when it is necessary to reorganize the training session by changing training conditions such as terrain conditions, walking speed, and joint range of motion. The proposed method allows gait rehabilitation to be performed while stably satisfying ground contact constraints, even after modifying the training parameters.
机器人辅助康复训练系统用于改善行动不便者的功能恢复。这些系统通过精确的人机交互提供结构化康复训练,通过提供诸如针对性肌肉恢复、优化步行模式以及根据用户目标和肌肉骨骼特征定制的自动化训练程序等优势,优于传统物理治疗。在我们的研究中,我们提议开发一种步行模拟器,该模拟器考虑用户特定的肌肉骨骼信息以复制自然步行动力学,同时考虑关节角度、肌肉力量、用户特定内部约束以及外部环境因素等。将这些因素整合到机器人辅助训练中可以提供更逼真的康复环境,并为实现自然双足运动奠定基础。我们的研究团队开发了一个机器人辅助训练平台(RATP),该平台通过结合遗传算法(GA)根据用户特定的内部和外部约束生成步态训练集。我们利用拉格朗日乘数来满足康复领域的要求,即在保持步态模式总体特征的同时立即重塑步态模式,而无需额外的步态模式搜索过程。根据患者的康复进展,有时需要通过改变训练条件(如地形条件、步行速度和关节活动范围)来重新组织训练课程。所提出的方法允许即使在修改训练参数后也能在稳定满足地面接触约束的同时进行步态康复训练。