首页> 外文期刊>Latin American Journal of Solids and Structures >Tracking control of a planar five-link bipedal walking system with point contact, considering self-impact joint constraint by adaptive neural network method
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Tracking control of a planar five-link bipedal walking system with point contact, considering self-impact joint constraint by adaptive neural network method

机译:考虑自适应碰撞约束的点接触平面五链双足步行系统的跟踪控制

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AbstractIn order to achieve the practical characteristics of natural bipedal walking, a key feature is to realize "the straight knee state of walking" during stance and swing motions. Considering a straight knee necessitates that the shank link of each leg not to undergo the rotation angles which are greater than that of the thigh link. For this purpose, various methods have been proposed; the joint self-impact constraint has been suggested for energy-efficient (natural) bipedal walking while realizing the straight knee constraint.The prominent objective of this research is to present a model based control method for trajectory tracking of a normal human-like bipedal walking, by considering the joint self-impact constraint. To achieve this objective, the dynamical equations of motion of an unconstrained biped are taken, developed and then modified to consider the joint self-impact constraint at the knee joint.To control this complicated dynamical system, the available anthropometric normal gait cycle data are taken to generate the desired trajectories of the thigh and knee joints of the self-impact biped. Due to the existence of complex nonlinear terms in the dynamical governing equations of self-impact biped, the authors propose to design a nonlinear intelligent controller by taking advantage of the adaptive neural network control method, which neither requires the evaluation of inverse dynamical model nor the time consuming training process. According to the simulation results, the tracking control of the biped robot is accomplished well and the biped walking seems naturally, despite of involving complex nonlinear terms in the dynamical governing equations of the self-impact biped.
机译:摘要为了实现自然双足步行的实用特性,关键特征是在站立和摆动动作中实现“步行的直膝状态”。考虑到笔直的膝盖,必须使每条腿的小腿连杆都不能承受大于大腿连杆的旋转角度。为此,已经提出了各种方法。在实现直膝约束的同时,提出了针对自然(自然)双足行走的联合自冲击约束。本研究的主要目的是提出一种基于模型的控制方法,用于正常人形双足行走的轨迹跟踪,通过考虑联合自我影响约束。为了达到这个目的,我们采用了无约束的两足动物的动力学方程,并对其进行了开发和修改,以考虑膝关节的关节自冲击约束。为了控制这一复杂的动力学系统,我们采用了可用的人体测量法正常步态周期数据来生成理想的两足动物双脚大腿和膝盖关节的轨迹。由于自碰撞两足动物的动力学控制方程中存在复杂的非线性项,因此作者建议利用自适应神经网络控制方法来设计非线性智能控制器,该方法既不需要评估逆动力学模型,也不需要进行建模。耗时的培训过程。根据仿真结果,即使在自碰撞两足动物的动力学控制方程中包含复杂的非线性项,两足动物机器人的跟踪控制也能很好地完成,并且两足动物行走自然。

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