基于运行时验证的安全 MARL,用于优化多机器人系统的安全策略生成

Yang Liu, Jiankun Li
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摘要

智能仓库是利用物联网、机器人、人工智能等技术实现自动化管理、优化仓储作业的现代物流管理系统。多机器人系统(MRS)是实现智能仓库的重要载体,它通过机器人之间的合作与协调完成仓库中的各种任务。作为强化学习的延伸和群集智能的一种,MARL(多代理强化学习)可以有效地创建智能仓库中的多机器人系统。然而,基于 MARL 的智能仓库多机器人系统面临着严重的安全问题,如碰撞、冲突和拥堵。针对这些问题,本文为智能仓库中的多机器人系统提出了一种基于运行时验证的安全 MARL 方法,即优化的安全策略生成框架。该框架包括三个阶段。第一阶段,定义智能仓库中多机器人系统的运行时模型 SCMG(安全约束马尔可夫博弈)。在第二阶段,使用 rPATL(带奖励的概率交替时间时间逻辑)来表达安全属性,并通过运行时验证(RV)对 SCMG 进行循环验证和完善,以确保安全。这一阶段保证了训练前机器人行为的安全性。在第三阶段,经过验证的 SCMG 指导 SCPO(安全约束策略优化),为机器人获取优化的安全策略。最后,使用多机器人仓库(RWARE)场景进行实验评估。结果表明,我们的框架所获得的策略比现有框架更安全,并包含一定程度的优化。
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Runtime Verification-Based Safe MARL for Optimized Safety Policy Generation for Multi-Robot Systems
The intelligent warehouse is a modern logistics management system that uses technologies like the Internet of Things, robots, and artificial intelligence to realize automated management and optimize warehousing operations. The multi-robot system (MRS) is an important carrier for implementing an intelligent warehouse, which completes various tasks in the warehouse through cooperation and coordination between robots. As an extension of reinforcement learning and a kind of swarm intelligence, MARL (multi-agent reinforcement learning) can effectively create the multi-robot systems in intelligent warehouses. However, MARL-based multi-robot systems in intelligent warehouses face serious safety issues, such as collisions, conflicts, and congestion. To deal with these issues, this paper proposes a safe MARL method based on runtime verification, i.e., an optimized safety policy-generation framework, for multi-robot systems in intelligent warehouses. The framework consists of three stages. In the first stage, a runtime model SCMG (safety-constrained Markov Game) is defined for the multi-robot system at runtime in the intelligent warehouse. In the second stage, rPATL (probabilistic alternating-time temporal logic with rewards) is used to express safety properties, and SCMG is cyclically verified and refined through runtime verification (RV) to ensure safety. This stage guarantees the safety of robots’ behaviors before training. In the third stage, the verified SCMG guides SCPO (safety-constrained policy optimization) to obtain an optimized safety policy for robots. Finally, a multi-robot warehouse (RWARE) scenario is used for experimental evaluation. The results show that the policy obtained by our framework is safer than existing frameworks and includes a certain degree of optimization.
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