CaRoSaC: A Reinforcement Learning-Based Kinematic Control of Cable-Driven Parallel Robots by Addressing Cable Sag through Simulation
Journal:
arXiv
Published Date:
Apr 22, 2025
Abstract
This paper introduces the Cable Robot Simulation and Control (CaRoSaC)
Framework, which integrates a simulation environment with a model-free
reinforcement learning control methodology for suspended Cable-Driven Parallel
Robots (CDPRs), accounting for cable sag. Our approach seeks to bridge the
knowledge gap of the intricacies of CDPRs due to aspects such as cable sag and
precision control necessities by establishing a simulation platform that
captures the real-world behaviors of CDPRs, including the impacts of cable sag.
The framework offers researchers and developers a tool to further develop
estimation and control strategies within the simulation for understanding and
predicting the performance nuances, especially in complex operations where
cable sag can be significant. Using this simulation framework, we train a
model-free control policy in Reinforcement Learning (RL). This approach is
chosen for its capability to adaptively learn from the complex dynamics of
CDPRs. The policy is trained to discern optimal cable control inputs, ensuring
precise end-effector positioning. Unlike traditional feedback-based control
methods, our RL control policy focuses on kinematic control and addresses the
cable sag issues without being tethered to predefined mathematical models. We
also demonstrate that our RL-based controller, coupled with the flexible cable
simulation, significantly outperforms the classical kinematics approach,
particularly in dynamic conditions and near the boundary regions of the
workspace. The combined strength of the described simulation and control
approach offers an effective solution in manipulating suspended CDPRs even at
workspace boundary conditions where traditional approach fails, as proven from
our experiments, ensuring that CDPRs function optimally in various applications
while accounting for the often neglected but critical factor of cable sag.