Formal Estimation of Collision Risks for Autonomous Vehicles: A Compositional Data-Driven Approach
Abolfazl Lavaei, Luigi Di Lillo, Andrea Censi, Emilio Frazzoli

TL;DR
This paper introduces a data-driven, compositional approach for formally estimating collision risks in autonomous vehicle multi-agent systems, providing probabilistic guarantees based on collected trajectory data.
Contribution
It develops a novel framework combining sub-barrier certificates, scenario optimization, and small-gain reasoning for probabilistic collision risk estimation in stochastic multi-agent AVs.
Findings
Successfully applied to a platoon of 100 vehicles.
Provides probabilistic collision risk bounds with confidence levels.
Demonstrates effectiveness through simulation results.
Abstract
In this work, we propose a compositional data-driven approach for the formal estimation of collision risks for autonomous vehicles (AVs) while acting in a stochastic multi-agent framework. The proposed approach is based on the construction of sub-barrier certificates for each stochastic agent via a set of data collected from its trajectories while providing an a-priori guaranteed confidence on the data-driven estimation. In our proposed setting, we first cast the original collision risk problem for each agent as a robust optimization program (ROP). Solving the acquired ROP is not tractable due to an unknown model that appears in one of its constraints. To tackle this difficulty, we collect finite numbers of data from trajectories of each agent and provide a scenario optimization program (SOP) corresponding to the original ROP. We then establish a probabilistic bridge between the optimal…
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Taxonomy
TopicsBayesian Modeling and Causal Inference · Computational Drug Discovery Methods
