Home /Research /Simulation of Upward Jump Control for One-Legged Robot Based on QP Optimization
LOCOMOTION

Simulation of Upward Jump Control for One-Legged Robot Based on QP Optimization

Dingkui Tian, Junyao Gao, Chuzhao Liu, Xuanyang Shi

Year
2021
Citations
8
Access
Open access

Abstract

An optimization framework for upward jumping motion based on quadratic programming (QP) is proposed in this paper, which can simultaneously consider constraints such as the zero moment point (ZMP), limitation of angular accelerations, and anti-slippage. Our approach comprises two parts: the trajectory generation and real-time control. In the trajectory generation for the launch phase, we discretize the continuous trajectories and assume that the accelerations between the two sampling intervals are constant and transcribe the problem into a nonlinear optimization problem. In the real-time control of the stance phase, the over-constrained control objectives such as the tracking of the center of moment (CoM), angle, and angular momentum, and constraints such as the anti-slippage, ZMP, and limitation of joint acceleration are unified within a framework based on QP optimization. Input angles of the actuated joints are thus obtained through a simple iteration. The simulation result reveals that a successful upward jump to a height of 16.4 cm was achieved, which confirms that the controller fully satisfies all constraints and achieves the control objectives.

Keywords

Control theory (sociology)Trajectory optimizationTrajectoryZero moment pointSlippageMoment (physics)AccelerationJumpSequential quadratic programmingQuadratic programming

Related papers

Browse all LOCOMOTION papers