Enhancing Safety Standards in Automated Systems Using Dynamic Bayesian Networks
By: Kranthi Kumar Talluri, Anders L. Madsen, Galia Weidl
Potential Business Impact:
Helps cars predict lane changes, avoiding crashes.
Cut-in maneuvers in high-speed traffic pose critical challenges that can lead to abrupt braking and collisions, necessitating safe and efficient lane change strategies. We propose a Dynamic Bayesian Network (DBN) framework to integrate lateral evidence with safety assessment models, thereby predicting lane changes and ensuring safe cut-in maneuvers effectively. Our proposed framework comprises three key probabilistic hypotheses (lateral evidence, lateral safety, and longitudinal safety) that facilitate the decision-making process through dynamic data processing and assessments of vehicle positions, lateral velocities, relative distance, and Time-to-Collision (TTC) computations. The DBN model's performance compared with other conventional approaches demonstrates superior performance in crash reduction, especially in critical high-speed scenarios, while maintaining a competitive performance in low-speed scenarios. This paves the way for robust, scalable, and efficient safety validation in automated driving systems.
Similar Papers
Advancing Autonomous Vehicle Safety: A Combined Fault Tree Analysis and Bayesian Network Approach
Systems and Control
Makes self-driving cars safer by finding weak spots.
Incorporating Failure of Machine Learning in Dynamic Probabilistic Safety Assurance
Artificial Intelligence
Makes self-driving cars safer by checking their "thinking."
A Dynamic, Context-Aware Framework for Risky Driving Prediction Using Naturalistic Data
Machine Learning (CS)
Makes cars spot dangerous driving before accidents happen.