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Nonlinear tracking control enabling a dynamical system to track a desired trajectory is fundamental to robotics, serving a wide range of civil and defense applications. In control engineering, designing tracking control requires complete knowledge of the system model and equations. We develop a model-free, machine-learning framework to control a two-arm robotic manipulator using only partially observed states, where the controller is realized by reservoir computing. Stochastic input is exploited for training, which consists of the observed partial state vector as the first and its immediate future as the second component so that the neural machine regards the latter as the future state of the former. In the testing (deployment) phase, the immediate-future component is replaced by the desired observational vector from the reference trajectory. We demonstrate the effectiveness of the control framework using a variety of periodic and chaotic signals, and establish its robustness against measurement noise, disturbances, and uncertainties.
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Zheng-Meng Zhai
Arizona State University
Mohammadamin Moradi
University of Chicago
Ling-Wei Kong
Cornell University
Nature Communications
Arizona State University
DEVCOM Army Research Laboratory
United States Army Combat Capabilities Development Command
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Zhai et al. (Thu,) studied this question.
synapsesocial.com/papers/6a030bf398cafe0df57569ee — DOI: https://doi.org/10.1038/s41467-023-41379-3