Abstract
Tracking control of underactuated balance robots needs to estimate balance profiles, that is, balance equilibrium manifold (BEM) of the unactuated subsystems. We present a learning-based approach to obtain the balance manifold for un- deractuated balance robots. We first establish the relationship between the BEM and the zero dynamics of the underactuated balance robots. The analysis shows that the BEM is a close approximation of the equilibria of the zero dynamics under perfectly tracking control. A Gaussian process learning-based method is proposed to estimate and obtain the BEM and zero dynamics, avoiding the direct inversion of the physics- based robot dynamic model. We demonstrate the analysis and applications experimentally on a rotary inverted pendulum and a bipedal robot.