We present an information-theoretic approach to stochastic optimal control problems that can be used to derive general sampling-based optimization schemes. This new mathematical method is used to develop a sampling-based model predictive control algorithm. We apply this information-theoretic model predictive control scheme to the task of aggressive autonomous driving around a dirt test track, and compare its performance with a model predictive control version of the cross-entropy method.
CITATION STYLE
Williams, G., Drews, P., Goldfain, B., Rehg, J. M., & Theodorou, Ie. A. (2018). Information-Theoretic Model Predictive Control: Theory and Applications to Autonomous Driving. IEEE Transactions on Robotics, 34(6), 1603–1622. https://doi.org/10.1109/TRO.2018.2865891
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