Minimizing Hexapod Robot Foot Deviations Using Multilayer Perceptron
Author(s) -
Vytautas Valaitis,
Tomas Luneckas,
Mindaugas Luneckas,
Dainius Udris
Publication year - 2015
Publication title -
international journal of advanced robotic systems
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 0.394
H-Index - 46
eISSN - 1729-8814
pISSN - 1729-8806
DOI - 10.5772/61675
Subject(s) - hexapod , computer science , robot , kinematics , artificial intelligence , inverse kinematics , slippage , multilayer perceptron , robotics , simulation , terrain , artificial neural network , computer vision , engineering , ecology , physics , structural engineering , classical mechanics , biology
Rough-terrain traversability is one of the most valuable characteristics of walking robots. Even despite their slower speeds and more complex control algorithms, walking robots have far wider usability than wheeled or tracked robots. However, efficient movement over irregular surfaces can only be achieved by eliminating all possible difficulties, which in many cases are caused by a high number of degrees of freedom, feet slippage, frictions and inertias between different robot parts or even badly developed inverse kinematics (IK). In this paper we address the hexapod robot-foot deviation problem. We compare the foot-positioning accuracy of unconfigured inverse kinematics and Multilayer Perceptron-based (MLP) methods via theory, computer modelling and experiments on a physical robot. Using MLP-based methods, we were able to significantly decrease deviations while reaching desired positions with the hexapod's foot. Furthermore, this method is able to compensate for deviations of the robot arising from any possible reason
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