Neural network compression of ACAS Xu early prototype is unsafe: Closed-loop verification through quantized state backreachability

S Bak, HD Tran�- NASA Formal Methods Symposium, 2022 - Springer
NASA Formal Methods Symposium, 2022Springer
ACAS Xu is an air-to-air collision avoidance system designed for unmanned aircraft that
issues horizontal turn advisories to avoid an intruder aircraft. Due the use of a large lookup
table in the design, a neural network compression of the policy was proposed. Analysis of
this system has spurred a significant body of research in the formal methods community on
neural network verification. While many powerful methods have been developed, most work
focuses on open-loop properties of the networks, rather than the main point of the system�…
Abstract
ACAS Xu is an air-to-air collision avoidance system designed for unmanned aircraft that issues horizontal turn advisories to avoid an intruder aircraft. Due the use of a large lookup table in the design, a neural network compression of the policy was proposed. Analysis of this system has spurred a significant body of research in the formal methods community on neural network verification. While many powerful methods have been developed, most work focuses on open-loop properties of the networks, rather than the main point of the system—collision avoidance—which requires closed-loop analysis.
In this work, we develop a technique to verify a closed-loop approximation of the system using state quantization and backreachability. We use favorable assumptions for the analysis—perfect sensor information, instant following of advisories, ideal aircraft maneuvers and an intruder that only flies straight. When the method fails to prove the system is safe, we refine the quantization parameters until generating counterexamples where the original (non-quantized) system also has collisions.
Springer
Showing the best result for this search. See all results