We address the challenge of reliable and efficient interaction in autonomous multi-agent systems, where agents must balance long-term strategic objectives with short-term dynamic adaptation. We propose context-triggered contingency games, a novel integration of strategic games derived from temporal logic specifications with dynamic contingency games solved in real time. Our two-layered architecture leverages strategy templates to guarantee satisfaction of high-level objectives, while a new factor-graph-based solver enables scalable, real-time model predictive control of dynamic interactions. The resulting framework ensures both safety and progress in uncertain, interactive environments. We validate our approach through simulations and hardware experiments in autonomous driving and robotic navigation, demonstrating efficient, reliable, and adaptive multi-agent interaction.
翻译:本文针对自主多智能体系统中可靠且高效交互的挑战,在该系统中智能体需在长期战略目标与短期动态适应之间取得平衡。我们提出上下文触发式应急博弈,这是一种将源自时序逻辑规范的战略博弈与实时求解的动态应急博弈相结合的新型集成方法。我们的双层架构利用策略模板保证高层级目标的满足,同时基于因子图的新型求解器实现了动态交互的可扩展实时模型预测控制。该框架确保了在不确定交互环境中的安全性与任务进展。我们通过在自动驾驶与机器人导航中的仿真与硬件实验验证了所提方法,展示了高效、可靠且自适应的多智能体交互能力。