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电动轮椅新型系统辨识方法与多目标-最优多变量扰动观测器。

Novel system identification method and multi-objective-optimal multivariable disturbance observer for electric wheelchair.

机构信息

Iran University of Science and Technology, Tehran, Iran.

出版信息

ISA Trans. 2013 Jan;52(1):129-39. doi: 10.1016/j.isatra.2012.06.013. Epub 2012 Sep 5.

Abstract

Electric wheelchair (EW) is subject to diverse types of terrains and slopes, but also to occupants of various weights, which causes the EW to suffer from highly perturbed dynamics. A precise multivariable dynamics of the EW is obtained using Lagrange equations of motion which models effects of slopes as output-additive disturbances. A static pre-compensator is analytically devised which considerably decouples the EW's dynamics and also brings about a more accurate identification of the EW. The controller is designed with a disturbance-observer (DOB) two-degree-of-freedom architecture, which reduces sensitivity to the model uncertainties while enhancing rejection of the disturbances. Upon disturbance rejection, noise reduction, and robust stability of the control system, three fitness functions are presented by which the DOB is tuned using a multi-objective optimization (MOO) approach namely non-dominated sorting genetic algorithm-II (NSGA-II). Finally, experimental results show desirable performance and robust stability of the proposed algorithm.

摘要

电动轮椅(EW)会遇到各种类型的地形和坡度,也会遇到各种重量的使用者,这使得 EW 承受着高度干扰的动力学。通过使用拉格朗日运动方程获得了 EW 的精确多变量动力学模型,该模型将坡度的影响作为输出附加干扰进行建模。通过分析设计了一个静态预补偿器,该预补偿器可以极大地解耦 EW 的动力学,并且可以更准确地识别 EW。控制器采用具有干扰观测器(DOB)的两自由度架构设计,该架构降低了对模型不确定性的敏感性,同时增强了对干扰的抑制能力。在抑制干扰、降噪和控制系统鲁棒稳定性的基础上,提出了三个适应性函数,通过使用多目标优化(MOO)方法,即非支配排序遗传算法-II(NSGA-II),对 DOB 进行了调整。最后,实验结果表明,所提出的算法具有良好的性能和鲁棒稳定性。

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