ML-based Fault Injection for Autonomous Vehicles: A Case for Bayesian Fault Injection

July 01, 2019 ยท Declared Dead ยท ๐Ÿ› Dependable Systems and Networks

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Authors Saurabh Jha, Subho S. Banerjee, Timothy Tsai, Siva K. S. Hari, Michael B. Sullivan, Zbigniew T. Kalbarczyk, Stephen W. Keckler, Ravishankar K. Iyer arXiv ID 1907.01051 Category cs.LG: Machine Learning Cross-listed cs.SE, stat.ML Citations 134 Venue Dependable Systems and Networks Last Checked 4 months ago
Abstract
The safety and resilience of fully autonomous vehicles (AVs) are of significant concern, as exemplified by several headline-making accidents. While AV development today involves verification, validation, and testing, end-to-end assessment of AV systems under accidental faults in realistic driving scenarios has been largely unexplored. This paper presents DriveFI, a machine learning-based fault injection engine, which can mine situations and faults that maximally impact AV safety, as demonstrated on two industry-grade AV technology stacks (from NVIDIA and Baidu). For example, DriveFI found 561 safety-critical faults in less than 4 hours. In comparison, random injection experiments executed over several weeks could not find any safety-critical faults
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