Trajectory Optimization Algorithm of Trajectory Rehabilitation Training Mode for Rehabilitation Robot

Yuhui Cen, Jianjun Yuan, Shugen Ma, Jingjing Luo, Hongbo Wang
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引用次数: 1

Abstract

It is a challenge for robot-assisted rehabilitation therapy to develop a training program with both customized and optimized characteristics. To optimize the scheme of the trajectory rehabilitation training mode, we design a trajectory optimization algorithm with an intelligent decision mechanism. A trajectory smoothing improvement algorithm is proposed to make the trajectory more suitable for rehabilitation training. In addition, we propose an improved genetic algorithm that reduces the optimization time and obtains a better solution. An adaptive variable time weight improved trapezoidal velocity algorithm is innovatively designed by fusing the above two algorithms with an optimal rehabilitation training program as a guide. Based on the experimental platform of the upper limb rehabilitation robot, it is demonstrated that the algorithm can provide comfortable and high-quality rehabilitation training for patients by adaptively optimizing the parameters of the trajectory model according to the training constraints. By combining an intelligent optimization algorithm with a rehabilitation robot trajectory planning algorithm, this paper realizes the unification of customization and optimization of a trajectory rehabilitation training program.
康复机器人轨迹康复训练模式的轨迹优化算法
机器人辅助康复治疗需要开发一套定制化和优化化的训练方案。为了优化轨迹康复训练模式的方案,设计了一种具有智能决策机制的轨迹优化算法。提出了一种轨迹平滑改进算法,使轨迹更适合康复训练。此外,我们提出了一种改进的遗传算法,减少了优化时间,得到了更好的解。以最优康复训练方案为指导,将上述两种算法融合,创新设计了一种自适应变时间权值改进梯形速度算法。基于上肢康复机器人实验平台,通过根据训练约束自适应优化轨迹模型参数,证明该算法能够为患者提供舒适、高质量的康复训练。本文将智能优化算法与康复机器人轨迹规划算法相结合,实现了轨迹康复训练方案定制与优化的统一。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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