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Auteurs principaux: Zaker, Mahdieh, Blom, Henk A. P., Soudjani, Sadegh, Lavaei, Abolfazl
Format: Preprint
Publié: 2024
Sujets:
Accès en ligne:https://arxiv.org/abs/2405.01011
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author Zaker, Mahdieh
Blom, Henk A. P.
Soudjani, Sadegh
Lavaei, Abolfazl
author_facet Zaker, Mahdieh
Blom, Henk A. P.
Soudjani, Sadegh
Lavaei, Abolfazl
contents This paper offers a formal framework for the rare collision risk estimation of autonomous vehicles (AVs) with multi-agent situation awareness, affected by different sources of noise in a complex dynamic environment. In our proposed setting, the situation awareness is considered for one of the ego vehicles by aggregating a range of diverse information gathered from other vehicles into a vector. We model AVs equipped with the situation awareness as general stochastic hybrid systems (GSHS) and assess the probability of collision in a lane-change scenario where two self-driving vehicles simultaneously intend to switch lanes into a shared one, while utilizing the time-to-collision measure for decision-making as required. Due to the substantial data requirements of simulation-based methods for the rare collision risk estimation, we leverage a multi-level importance splitting technique, known as interacting particle system-based estimation with fixed assignment splitting (IPS-FAS). This approach allows us to estimate the probability of a rare event by employing a group of interacting particles. Specifically, each particle embodies a system trajectory and engages with others through resampling and branching, focusing computational resources on trajectories with the highest probability of encountering the rare event. The effectiveness of our proposed approach is demonstrated through an extensive simulation of a lane-change scenario.
format Preprint
id arxiv_https___arxiv_org_abs_2405_01011
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Rare Collision Risk Estimation of Autonomous Vehicles with Multi-Agent Situation Awareness
Zaker, Mahdieh
Blom, Henk A. P.
Soudjani, Sadegh
Lavaei, Abolfazl
Systems and Control
This paper offers a formal framework for the rare collision risk estimation of autonomous vehicles (AVs) with multi-agent situation awareness, affected by different sources of noise in a complex dynamic environment. In our proposed setting, the situation awareness is considered for one of the ego vehicles by aggregating a range of diverse information gathered from other vehicles into a vector. We model AVs equipped with the situation awareness as general stochastic hybrid systems (GSHS) and assess the probability of collision in a lane-change scenario where two self-driving vehicles simultaneously intend to switch lanes into a shared one, while utilizing the time-to-collision measure for decision-making as required. Due to the substantial data requirements of simulation-based methods for the rare collision risk estimation, we leverage a multi-level importance splitting technique, known as interacting particle system-based estimation with fixed assignment splitting (IPS-FAS). This approach allows us to estimate the probability of a rare event by employing a group of interacting particles. Specifically, each particle embodies a system trajectory and engages with others through resampling and branching, focusing computational resources on trajectories with the highest probability of encountering the rare event. The effectiveness of our proposed approach is demonstrated through an extensive simulation of a lane-change scenario.
title Rare Collision Risk Estimation of Autonomous Vehicles with Multi-Agent Situation Awareness
topic Systems and Control
url https://arxiv.org/abs/2405.01011