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A Prediction Model for State Observation and Model Predictive Control of Biped Robots
Author(s) -
Wittmann Robert,
Rixen Daniel
Publication year - 2016
Publication title -
pamm
Language(s) - English
Resource type - Journals
ISSN - 1617-7061
DOI - 10.1002/pamm.201610021
Subject(s) - control theory (sociology) , robot , model predictive control , nonlinear system , nonlinear model , computer science , terrain , degrees of freedom (physics and chemistry) , stability (learning theory) , state (computer science) , control engineering , biped robot , simulation , engineering , control (management) , artificial intelligence , physics , algorithm , ecology , quantum mechanics , machine learning , biology
Biped walking robots present a class of mechanical systems with many different challenges such as nonlinear multi‐body dynamics, a large number of degrees of freedom and unilateral contacts. The latter impose constraints for physically feasible motions and in stabilization methods as the robot can only interact due to pressure forces with the environment. This limitation can cause the system to fall under unknown disturbances such as pushing or uneven terrain. In order to face such problems, an accurate and fast model of the robot to observe the current state and predict the state evolution into the future has to be used. This work presents a nonlinear prediction model with two passive degrees of freedom (dof), point masses and compliant unilateral contacts. We show that the model is applicable for real‐time model predictive optimization of the robot's motion. Experiments on the biped robot LOLA [1] underline the effectiveness of the proposed model to increase the system's long term stability under large unknown disturbances. (© 2016 Wiley‐VCH Verlag GmbH & Co. KGaA, Weinheim)