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Dynamic parameter identification of upper‐limb rehabilitation robot system based on variable parameter particle swarm optimisation

机译:基于可变参数粒子群优化的高肢康复机器人系统动态参数识别

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摘要

To solve the problem of uncertain parameters in dynamic modelling of upper-limb rehabilitation robots, a dynamic parameter identification method based on variable parameters particle swarm optimisation (PSO) is developed. Based on the dynamic model of the system, the algorithm changes the inertia parameter and learning law of the basic PSO algorithm from the fixed-parameter to the function that changes with the number of iterations. It solves the problems of small search space in the early stage and slow convergence speed in the later stage of the basic PSO algorithm, which greatly improves its identification accuracy. Finally, through the comparison and analysis of the simulation results, compared with those of the least square (LS) and unmodified PSO identification algorithms, a great improvement in the identification accuracy of the algorithm is achieved. The control effect in the actual control system is also much better than those of the LS and PSO algorithms.
机译:为了解决上肢康复机器人动态建模中不确定参数的问题,开发了一种基于可变参数粒子群优化(PSO)的动态参数识别方法。基于系统的动态模型,该算法将基本PSO算法的惯性参数和学习法从固定参数改变为随着迭代次数变化的函数。它解决了早期搜索空间的问题,并在基本PSO算法的后期逐步中的慢速收敛速度,这大大提高了其识别精度。最后,通过对模拟结果的比较和分析,与最小二乘(LS)和未改性的PSO识别算法相比,实现了算法的识别精度的大大提高。实际控制系统中的控制效果也比LS和PSO算法更好。

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