Shayegan Omidshafiei, Shih-Yuan Liu, et al.
ICRA 2017
Many challenging real-world control problems require adaptation and learning in the presence of uncertainty. Examples of these challenging domains include aircraft adaptive control under uncertain disturbances [1], [2], multiple-vehicle tracking with space-dependent uncertain dynamics [3], [4], robotic-arm control [5], blimp control [6], [7], mobile robot tracking and localization [8], [9], cart-pole systems and unicycle control [10], gait optimization in legged robots [11] and snake robots [12], and any other system whose dynamics are uncertain and for which limited data are available for model learning. Classical model reference adaptive control (MRAC) [13]-[15] and reinforcement learning (RL) methods [16]-[23] have been developed to address these challenges and rely on parametric adaptive elements or control policies whose number of parameters or features are fixed and determined a priori. One example of such an adaptive model are radial basis function networks (RBFNs), with RBF centers pre-allocated based on expected operating domains [24], [25].
Shayegan Omidshafiei, Shih-Yuan Liu, et al.
ICRA 2017
Yu Fan Chen, Michael Everett, et al.
IROS 2017
Matthew Riemer, Miao Liu, et al.
NeurIPS 2018
Matthew Riemer, Ignacio Cases, et al.
ICLR 2019