GAS: Generating Fast and Accurate Surrogate Models for Autonomous Vehicle Systems
Keyur Joshi, Chiao Hsieh, Sayan Mitra, Sasa Misailovic

TL;DR
GAS introduces a two-stage method to create fast, accurate surrogate models of autonomous vehicle systems with complex perception and control components, enabling efficient safety analysis and sensitivity studies.
Contribution
This work is the first to develop surrogate models for entire autonomous vehicle systems with complex perception and control, using a novel two-stage approach with GPC.
Findings
Surrogate models achieve an average speedup of 3.7x in safety probability estimation.
Models maintain high accuracy despite speedup.
Approach is applicable across diverse vehicle scenarios.
Abstract
Modern autonomous vehicle systems use complex perception and control components. These components can rapidly change during development of such systems, requiring constant re-testing. Unfortunately, high-fidelity simulations of these complex systems for evaluating vehicle safety are costly. The complexity also hinders the creation of less computationally intensive surrogate models. We present GAS, the first approach for creating surrogate models of complete (perception, control, and dynamics) autonomous vehicle systems containing complex perception and/or control components. GAS's two-stage approach first replaces complex perception components with a perception model. Then, GAS constructs a polynomial surrogate model of the complete vehicle system using Generalized Polynomial Chaos (GPC). We demonstrate the use of these surrogate models in two applications. First, we estimate the…
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Taxonomy
TopicsProbabilistic and Robust Engineering Design
