Collective Risk Minimization via a Bayesian Model for Statistical Software Testing

05/15/2020
by   Joachim Haensel, et al.
0

In the last four years, the number of distinct autonomous vehicles platforms deployed in the streets of California increased 6-fold, while the reported accidents increased 12-fold. This can become a trend with no signs of subsiding as it is fueled by a constant stream of innovations in hardware sensors and machine learning software. Meanwhile, if we expect the public and regulators to trust the autonomous vehicle platforms, we need to find better ways to solve the problem of adding technological complexity without increasing the risk of accidents. We studied this problem from the perspective of reliability engineering in which a given risk of an accident has severity and probability of occurring. Timely information on accidents is important for engineers to anticipate and reuse previous failures to approximate the risk of accidents in a new city. However, this is challenging in the context of autonomous vehicles because of the sparse nature of data on the operational scenarios (driving trajectories in a new city). Our approach was to mitigate data sparsity by reducing the state space through monitoring of multiple-vehicles operations. We then minimized the risk of accidents by determining proper allocation of tests for each equivalence class. Our contributions comprise (1) a set of strategies to monitor the operational data of multiple autonomous vehicles, (2) a Bayesian model that estimates changes in the risk of accidents, and (3) a feedback control-loop that minimizes these risks by reallocating test effort. Our results are promising in the sense that we were able to measure and control risk for a diversity of changes in the operational scenarios. We evaluated our models with data from two real cities with distinct traffic patterns and made the data available for the community.

READ FULL TEXT

page 3

page 7

research
04/23/2019

Estimating Risk Levels of Driving Scenarios through Analysis of Driving Styles for Autonomous Vehicles

In order to operate safely on the road, autonomous vehicles need not onl...
research
06/12/2023

Occlusion-aware Risk Assessment and Driving Strategy for Autonomous Vehicles Using Simplified Reachability Quantification

There are several unresolved challenges for autonomous vehicles. One of ...
research
06/08/2021

Don't Get Yourself into Trouble! Risk-aware Decision-Making for Autonomous Vehicles

Risk is traditionally described as the expected likelihood of an undesir...
research
11/17/2020

Control Strategies for Autonomous Vehicles

This chapter focuses on the self-driving technology from a control persp...
research
04/24/2021

Towards Improving Confidence in Autonomous Vehicle Software: A Study on Traffic Sign Recognition Systems

The application of artificial intelligence (AI) and data-driven decision...
research
11/08/2022

SOTIF Entropy: Online SOTIF Risk Quantification and Mitigation for Autonomous Driving

Autonomous driving confronts great challenges in complex traffic scenari...

Please sign up or login with your details

Forgot password? Click here to reset