Neuro-Adaptive Boundary Force Control of Dual One-Link Flexible Arms with Unmodeled Dynamics and Input Constraints
Mahdi Hejrati

TL;DR
This paper introduces a novel neuro-adaptive boundary force control method for dual one-link flexible arms, effectively handling unmodeled dynamics and input constraints to achieve safe grasping and robust motion control.
Contribution
It combines intelligent neural networks with robust control to address uncertainties and input constraints in dual flexible manipulators for the first time.
Findings
Achieves UUB stability using Lyapunov's method.
Demonstrates superior performance over existing controllers.
Effectively manages unmodeled dynamics and input saturation.
Abstract
The primary purpose of this article is to accomplish safe grasping task by means of dual one-link flexible manipulators. In order to design a force-sensor-less force control, the direct force control problem is reduced to common motion control problem, in a way that by satisfying new control objectives the grasping task is established. Afterwards, for the first time in the field of dual one-link flexible manipulators, intelligent control methods are combined with robust control approaches in an effort to; i) accomplish motion control objectives, ii) handle uncertainties in the system, and iii) consider unknown, mixed input constraints, resulting in NABFC (Neuro-Adaptive Boundary Force Control). Moreover, to deal with unknown model uncertainties as well as unknown input saturation and dead zones, Radial Basic Function Neural-Networks (RBFNNs) are used. In the same way, adaptive control…
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Taxonomy
TopicsTeleoperation and Haptic Systems · Dynamics and Control of Mechanical Systems · Robot Manipulation and Learning
