首页 /研究 /Distilled neural state-dependent Riccati equation feedback controller for dynamic control of a cable-driven continuum robot
LEARNING

Distilled neural state-dependent Riccati equation feedback controller for dynamic control of a cable-driven continuum robot

Mohammadamin Samadi Khoshkho, Zahra Samadikhoshkho, Michael Lipsett

发表年份
2023
引用次数
9
访问权限
开放获取

摘要

This article presents a novel learning-based optimal control approach for dynamic control of continuum robots. Working and interacting with a confined and unstructured environment, nonlinear coupling, and dynamic uncertainty are only some of the difficulties that make developing and implementing a continuum robot controller challenging. Due to the complexity of the control design process, a number of researchers have used simplified kinematics in the controller design. The nonlinear optimal control technique presented here is based on the state-dependent Riccati equation and developed with consideration of the dynamics of the continuum robot. To address the high computational demand of the state-dependent Riccati equation controller, the distilled neural technique is adopted to facilitate the real-time controller implementation. The efficiency of the control scheme with different neural networks is demonstrated using simulation results.

关键词

Control theory (sociology)Computer scienceRiccati equationAlgebraic Riccati equationNonlinear systemRobotController (irrigation)Optimal controlKinematicsControl engineering

相关论文

查看 LEARNING 分类全部论文