Title :
Neural Network and Jacobian Method for Solving the Inverse Statics of a Cable-Driven Soft Arm With Nonconstant Curvature
Author :
Giorelli, Michele ; Renda, Federico ; Calisti, Marcello ; Arienti, Andrea ; Ferri, Gabriele ; Laschi, Cecilia
Author_Institution :
Res. Centre on Sea Technol. & Marine Robot., Scuola Superiore Sant´Anna, Pisa, Italy
Abstract :
The solution of the inverse kinematics problem of soft manipulators is essential to generate paths in the task space. The inverse kinematics problem of constant curvature or piecewise constant curvature manipulators has already been solved by using different methods, which include closed-form analytical approaches and iterative methods based on the Jacobian method. On the other hand, the inverse kinematics problem of nonconstant curvature manipulators remains unsolved. This study represents one of the first attempts in this direction. It presents both a model-based method and a supervised learning method to solve the inverse statics of nonconstant curvature soft manipulators. In particular, a Jacobian-based method and a feedforward neural network are chosen and tested experimentally. A comparative analysis has been conducted in terms of accuracy and computational time.
Keywords :
control engineering computing; feedforward neural nets; iterative methods; learning (artificial intelligence); manipulator kinematics; neurocontrollers; Jacobian-based method; cable-driven soft arm; closed-form analytical approach; feedforward neural network; inverse kinematics problem; inverse statics; iterative method; model-based method; neural network; nonconstant curvature manipulators; piecewise constant curvature manipulators; supervised learning method; Jacobian matrices; Kinematics; Manipulators; Mathematical model; Neural networks; Shape; Continuum robotics; inverse kinematics; neural network; soft robotics;
Journal_Title :
Robotics, IEEE Transactions on
DOI :
10.1109/TRO.2015.2428511