Model Predictive Instantaneous Safety Metric for Evaluation of Automated Driving Systems
This addresses the safety evaluation challenge for automated driving systems, offering a tractable real-time metric, but it is incremental as it builds on existing safety assessment methods.
The paper tackles the problem of evaluating operational safety for automated driving systems by introducing a Model Predictive Instantaneous Safety Metric (MPrISM) that assesses safety status based on worst-case scenarios and provides theoretical guarantees on time to collision, demonstrating its capabilities with synthesized and real-world test cases.
Vehicles with Automated Driving Systems (ADS) operate in a high-dimensional continuous system with multi-agent interactions. This continuous system features various types of traffic agents (non-homogeneous) governed by continuous-motion ordinary differential equations (differential-drive). Each agent makes decisions independently that may lead to conflicts with the subject vehicle (SV), as well as other participants (non-cooperative). A typical vehicle safety evaluation procedure that uses various safety-critical scenarios and observes resultant collisions (or near collisions), is not sufficient enough to evaluate the performance of the ADS in terms of operational safety status maintenance. In this paper, we introduce a Model Predictive Instantaneous Safety Metric (MPrISM), which determines the safety status of the SV, considering the worst-case safety scenario for a given traffic snapshot. The method then analyzes the SV's closeness to a potential collision within a certain evaluation time period. The described metric induces theoretical guarantees of safety in terms of the time to collision under standard assumptions. Through formulating the solution as a series of minimax quadratic optimization problems of a specific structure, the method is tractable for real-time safety evaluation applications. Its capabilities are demonstrated with synthesized examples and cases derived from real-world tests.