SOTAVerified

Priority-Driven Safe Model Predictive Control Approach to Autonomous Driving Applications

2025-05-09Unverified0· sign in to hype

Francesco Prignoli, Ying Shuai Quan, Mohammad Jeddi, Jonas Sjöberg, Paolo Falcone

Unverified — Be the first to reproduce this paper.

Reproduce

Abstract

This paper demonstrates the applicability of the safe model predictive control (SMPC) framework to autonomous driving scenarios, focusing on the design of adaptive cruise control (ACC) and automated lane-change systems. Building on the SMPC approach with priority-driven constraint softening -- which ensures the satisfaction of hard constraints under external disturbances by selectively softening a predefined subset of adjustable constraints -- we show how the algorithm dynamically relaxes lower-priority, comfort-related constraints in response to unexpected disturbances while preserving critical safety requirements such as collision avoidance and lane-keeping. A learning-based algorithm approximating the time consuming SMPC is introduced to enable real-time execution. Simulations in real-world driving scenarios subject to unpredicted disturbances confirm that this prioritized softening mechanism consistently upholds stringent safety constraints, underscoring the effectiveness of the proposed method.

Tasks

Reproductions