Learning Quadrotor Dynamics Using Neural Network for Flight Control

October 19, 2016 ยท Declared Dead ยท ๐Ÿ› IEEE Conference on Decision and Control

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Authors Somil Bansal, Anayo K. Akametalu, Frank J. Jiang, Forrest Laine, Claire J. Tomlin arXiv ID 1610.05863 Category eess.SY: Systems & Control (EE) Cross-listed cs.RO, math.OC Citations 160 Venue IEEE Conference on Decision and Control Last Checked 2 months ago
Abstract
Traditional learning approaches proposed for controlling quadrotors or helicopters have focused on improving performance for specific trajectories by iteratively improving upon a nominal controller, for example learning from demonstrations, iterative learning, and reinforcement learning. In these schemes, however, it is not clear how the information gathered from the training trajectories can be used to synthesize controllers for more general trajectories. Recently, the efficacy of deep learning in inferring helicopter dynamics has been shown. Motivated by the generalization capability of deep learning, this paper investigates whether a neural network based dynamics model can be employed to synthesize control for trajectories different than those used for training. To test this, we learn a quadrotor dynamics model using only translational and only rotational training trajectories, each of which can be controlled independently, and then use it to simultaneously control the yaw and position of a quadrotor, which is non-trivial because of nonlinear couplings between the two motions. We validate our approach in experiments on a quadrotor testbed.
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