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Safe Optimal Control Using Stochastic Barrier Functions and Deep Forward-Backward SDEs

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This paper introduces a new formulation for stochastic optimal control and stochastic dynamic optimization that ensures safety with respect to state and control constraints. The proposed methodology brings together concepts such as Forward-Backward Stochastic Differential Equations, Stochastic Barrier Functions, Differentiable Convex Optimization and Deep Learning. Using the aforementioned concepts, a Neural Network architecture is designed for safe trajectory optimization in which learning can be performed in an end-to-end fashion. Simulations are performed on three systems to show the efficacy of the proposed methodology.

Marcus Aloysius Pereira, Ziyi Wang, Ioannis Exarchos, Evangelos A. Theodorou• 2020

Related benchmarks

TaskDatasetResultRank
Vision-based autonomous drivingVISTA (test)
Pass Rate100
9
Robot manipulation under joint and obstacle constraintsTwo-link manipulator (test)
QP Success Rate100
9
Obstacle Avoidance2D unicycle obstacle avoidance (three circular obstacles) 100 stochastic rollouts (test)
Success Rate (%)100
8
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