Abstract
In this paper, a reinforcement learning approach for designing feedback neural network controllers for nonlinear systems is proposed. Given a Signal Temporal Logic (STL) specification which needs to be satisfied by the system over a set of initial conditions, the neural network parameters are tuned in order to maximize the satisfaction of the STL formula. The framework is based on a max-min formulation of the robustness of the STL formula. The maximization is solved through a Lagrange multipliers method, while the minimization corresponds to a falsification problem. We present our results on a vehicle and a quadrotor model and demonstrate that our approach reduces the training time more than 50 percent compared to the baseline approach.
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CITATION STYLE
Yaghoubi, S., & Fainekos, G. (2019). Worst-case satisfaction of STL specifications using feedforward neural network controllers: A lagrange multipliers approach. In ACM Transactions on Embedded Computing Systems (Vol. 18). Association for Computing Machinery. https://doi.org/10.1145/3358239
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