面向受限不确定机器人操纵器跟踪的干扰抑制事件触发鲁棒模型预测控制

Disturbance Rejection Event-Triggered Robust Model Predictive Control for Tracking of Constrained Uncertain Robotic Manipulators

IEEE Transactions on Cybernetics · 2023
被引 32
ABS 3

中文导读

提出一种结合计算力矩控制和基于干扰观测器的事件触发鲁棒模型预测控制的分层框架,用于在存在有界干扰和约束下实现机器人操纵器的轨迹跟踪,同时降低计算复杂度并保证鲁棒性。

Abstract

A novel hierarchical control framework combining computed-torque-like control (CTLC) with disturbance-observer-based event-triggered robust model predictive control (DO-ET-RMPC) is proposed for the trajectory tracking control of robotic manipulators with bounded disturbances and state and control input constraints. The CTLC approach is first used to cancel the exact nonlinear dynamics of the original tracking error system to obtain a set of decoupling linear tracking error subsystems, thus reducing the optimization complexity of model predictive control (MPC). The composite DO-ET-RMPC scheme is then developed based on the so-called dual-mode MPC approach to robustly stabilize the tracking error subsystems, which could improve the robustness of MPC and save its computational resources simultaneously. The continuous-time theoretical properties of the DO-ET-RMPC scheme, considering disturbances and state and control input constraints simultaneously, are provided for the first time, including the avoidance of Zeno behavior, robust constraint satisfaction, recursive feasibility, and stability. In the end, the superiorities of the proposed control scheme are verified by the comparative simulations.

机器人控制模型预测控制轨迹跟踪鲁棒控制