Stochastic Prize-Collecting Games: Strategic Planning in Multi-Robot Systems
Malintha Fernando, Petter Ögren, Silun Zhang
- 发表年份
- 2025
- 访问权限
- 开放获取
摘要
The Team Orienteering Problem (TOP) generalizes many real-world multi-robot scheduling and routing tasks that occur in autonomous mobility, aerial logistics, and surveillance applications. While many flavors of the TOP exist for planning in multi-robot systems, they assume that all the robots cooperate toward a single objective; thus, they do not extend to settings where the robots compete in reward-scarce environments. We propose Stochastic Prize-Collecting Games (SPCG) as an extension of the TOP to plan in the presence of self-interested robots operating on a graph, under energy constraints and stochastic transitions. A theoretical study on complete and star graphs establishes that there is a unique pure Nash equilibrium in SPCGs that coincides with the optimal routing solution of an equivalent TOP given a rank-based conflict resolution rule. This work proposes two algorithms: Ordinal Rank Search (ORS) to obtain the ''ordinal rank'' --one's effective rank in temporarily-formed local neighborhoods during the games' stages, and Fictitious Ordinal Response Learning (FORL) to obtain best-response policies against one's senior-rank opponents. Empirical evaluations conducted on road networks and synthetic graphs under both dynamic and stationary prize distributions show that 1) the state-aliasing induced by OR-conditioning enables learning policies that scale more efficiently to large team sizes than those trained with the global index, and 2) Policies trained with FORL generalize better to imbalanced prize distributions than those with other multi-agent training methods. Finally, the learned policies in the SPCG achieved between 87% and 95% optimality compared to an equivalent TOP solution obtained by mixed-integer linear programming.
关键词
相关论文
基于嵌入式语言模型的多机器人系统动态重构
Shokhikha Amalana Murdivien, Jongsu Park, Jumyung Um
Robotics and Computer-Integrated Manufacturing · 2026
基于大语言模型增强的多智能体强化学习的无人机博弈分层决策
Xinyu Dong, Bo Li, Guangyu Zhang 等 5 位作者
Aerospace Science and Technology · 2026
水下残骸区域多UUV协同覆盖搜索的编队优化与避碰决策方法
Haomiao Yu, Zeyuan Zhang, Yantian Ma
Robotics and Autonomous Systems · 2026
人在回路中的群体机器人:一种用于真实土壤测绘的仿生群体方法
Petras Swissler, Mohammadali Rashidioun, Nicholas Sahu 等 6 位作者
2026