Li Wei, Wei Xiaojie, Sun Dawen, Zong Siyu, Yue Zhengwei
College of Mechanical and Vehicle Engineering, Changchun University, Changchun 130022, China.
Key Laboratory of Intelligent Rehabilitation and Barrier-Free Education for Disabled Persons, Ministry of Education, Changchun 130022, China.
Sensors (Basel). 2025 Feb 22;25(5):1335. doi: 10.3390/s25051335.
The application of lower-limb exoskeleton robots in rehabilitation is becoming more prevalent, where the precision of control and the speed of response are essential for effective movement tracking. This study tackles the challenge of optimizing both control accuracy and response speed in trajectory tracking for lower-limb exoskeleton hip robots. We introduce an optimization strategy that integrates the Sparrow Search Algorithm (SSA) with fuzzy Proportional-Integral-Derivative (PID) control. This approach addresses the inefficiencies and time-consuming process of manual parameter tuning, thereby improving trajectory tracking performance. First, recognizing the complexity of hip joint motion, which involves multiple degrees of freedom and intricate dynamics, we employed the Lagrangian method. This method is particularly effective for handling nonlinear systems and simplifying the modeling process, allowing for the development of a dynamic model for the hip joint. The SSA is subsequently utilized for the online self-tuning optimization of both the proportional and quantization factors within the fuzzy PID controller. Simulation experiments confirm the efficacy of this strategy in tracking hip joint trajectories during flat walking and standing hip flexion rehabilitation exercises. Experimental results from diverse test populations demonstrate that SSA-fuzzy PID control improves response times by 27.8% (for flat walking) and 30% (for standing hip flexion) when compared to traditional PID control, and by 6% and 2%, respectively, relative to fuzzy PID control. Regarding tracking accuracy, the SSA-fuzzy PID approach increases accuracy by 81.4% (for flat walking) and 80% (for standing hip flexion) when compared to PID control, and by 57.5% and 56.8% relative to fuzzy PID control. The proposed strategy significantly improves both control accuracy and response speed, offering substantial theoretical support for rehabilitation training in individuals with lower-limb impairments. Moreover, in comparison to existing methods, this approach uniquely tackles the challenges of parameter tuning and optimization, presenting a more efficient solution for trajectory tracking in exoskeleton systems.
下肢外骨骼机器人在康复领域的应用越来越普遍,其中控制精度和响应速度对于有效的运动跟踪至关重要。本研究应对了优化下肢外骨骼髋关节机器人轨迹跟踪中的控制精度和响应速度这一挑战。我们引入了一种将麻雀搜索算法(SSA)与模糊比例积分微分(PID)控制相结合的优化策略。这种方法解决了手动参数调整效率低下和耗时的问题,从而提高了轨迹跟踪性能。首先,认识到髋关节运动的复杂性,其涉及多个自由度和复杂的动力学,我们采用了拉格朗日方法。该方法对于处理非线性系统和简化建模过程特别有效,从而能够开发出髋关节的动态模型。随后,SSA被用于模糊PID控制器中比例因子和量化因子的在线自整定优化。仿真实验证实了该策略在平步行走和站立髋关节屈曲康复训练中跟踪髋关节轨迹的有效性。来自不同测试人群的实验结果表明,与传统PID控制相比,SSA-模糊PID控制在平步行走时响应时间缩短了27.8%,在站立髋关节屈曲时缩短了30%;与模糊PID控制相比,分别缩短了6%和2%。在跟踪精度方面,与PID控制相比,SSA-模糊PID方法在平步行走时精度提高了81.4%,在站立髋关节屈曲时提高了80%;与模糊PID控制相比,分别提高了57.5%和56.8%。所提出的策略显著提高了控制精度和响应速度,为下肢损伤患者的康复训练提供了重要的理论支持。此外,与现有方法相比,该方法独特地应对了参数调整和优化的挑战,为外骨骼系统中的轨迹跟踪提供了更有效的解决方案。