I. Introduction
Intelligent safety technology offers active protection for vehicles by integrating environmental perception, decision-making algorithms, and risk prediction, thus becoming a vital enabler of autonomous driving. As a core element of intelligent safety technology, driving risk assessment aims to characterize and quantify the potential risks faced by autonomous vehicles at a specific moment in real-time and dynamically throughout their journey. The primary methods for assessing driving risks include deterministic assessment, probabilistic assessment, reachable set-based assessment, and assessments based on artificial potential field theory [1]. Among these, the artificial potential field method is notable for its comprehensive consideration of various factors and extensive content, providing significant advantages over alternative methods.