Safe and Reliable Training of Learning-Based Aerospace Controllers

U Mandal, G Amir, H Wu, I Daukantas… - 2024 AIAA DATC …, 2024 - ieeexplore.ieee.org
2024 AIAA DATC/IEEE 43rd Digital Avionics Systems Conference (DASC), 2024ieeexplore.ieee.org
In recent years, deep reinforcement learning (DRL) approaches have generated highly
successful controllers for a myriad of complex domains. However, the opaque nature of
these models limits their applicability in aerospace systems and sasfety-critical domains, in
which a single mistake can have dire consequences. In this paper, we present novel
advancements in both the training and verification of DRL controllers, which can help ensure
their safe behavior. We showcase a design-for-verification approach utilizing k-induction …
In recent years, deep reinforcement learning (DRL) approaches have generated highly successful controllers for a myriad of complex domains. However, the opaque nature of these models limits their applicability in aerospace systems and sasfety-critical domains, in which a single mistake can have dire consequences. In this paper, we present novel advancements in both the training and verification of DRL controllers, which can help ensure their safe behavior. We showcase a design-for-verification approach utilizing k-induction and demonstrate its use in verifying liveness properties. In addition, we also give a brief overview of neural Lyapunov Barrier certificates and summarize their capabilities on a case study. Finally, we describe several other novel reachability-based approaches which, despite failing to provide guarantees of interest, could be effective for verification of other DRL systems, and could be of further interest to the community.
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