ROApr 29, 2021

Probabilistic Safety-Assured Adaptive Merging Control for Autonomous Vehicles

arXiv:2104.14159v146 citations
Originality Incremental advance
AI Analysis

This addresses safety-critical interactions for autonomous vehicles in uncertain environments, representing an incremental advance in control methods.

The paper tackles the problem of ensuring safety for autonomous vehicles during ramp merging with human-driven cars by proposing a real-time control framework using bi-level optimization and probabilistic control barrier functions, achieving provable chance-constrained safety guarantees.

Autonomous vehicles face tremendous challenges while interacting with human drivers in different kinds of scenarios. Developing control methods with safety guarantees while performing interactions with uncertainty is an ongoing research goal. In this paper, we present a real-time safe control framework using bi-level optimization with Control Barrier Function (CBF) that enables an autonomous ego vehicle to interact with human-driven cars in ramp merging scenarios with a consistent safety guarantee. In order to explicitly address motion uncertainty, we propose a novel extension of control barrier functions to a probabilistic setting with provable chance-constrained safety and analyze the feasibility of our control design. The formulated bi-level optimization framework entails first choosing the ego vehicle's optimal driving style in terms of safety and primary objective, and then minimally modifying a nominal controller in the context of quadratic programming subject to the probabilistic safety constraints. This allows for adaptation to different driving strategies with a formally provable feasibility guarantee for the ego vehicle's safe controller. Experimental results are provided to demonstrate the effectiveness of our proposed approach.

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