Formal Analysis and Redesign of a Neural Network-Based Aircraft Taxiing System with VerifAI

May 14, 2020 ยท Declared Dead ยท ๐Ÿ› International Conference on Computer Aided Verification

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Authors Daniel J. Fremont, Johnathan Chiu, Dragos D. Margineantu, Denis Osipychev, Sanjit A. Seshia arXiv ID 2005.07173 Category cs.LG: Machine Learning Cross-listed cs.PL, eess.SY, stat.ML Citations 58 Venue International Conference on Computer Aided Verification Last Checked 1 month ago
Abstract
We demonstrate a unified approach to rigorous design of safety-critical autonomous systems using the VerifAI toolkit for formal analysis of AI-based systems. VerifAI provides an integrated toolchain for tasks spanning the design process, including modeling, falsification, debugging, and ML component retraining. We evaluate all of these applications in an industrial case study on an experimental autonomous aircraft taxiing system developed by Boeing, which uses a neural network to track the centerline of a runway. We define runway scenarios using the Scenic probabilistic programming language, and use them to drive tests in the X-Plane flight simulator. We first perform falsification, automatically finding environment conditions causing the system to violate its specification by deviating significantly from the centerline (or even leaving the runway entirely). Next, we use counterexample analysis to identify distinct failure cases, and confirm their root causes with specialized testing. Finally, we use the results of falsification and debugging to retrain the network, eliminating several failure cases and improving the overall performance of the closed-loop system.
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