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Multi-Robot Coordination and Cooperation with Task Precedence Relationships

Walker Gosrich, Siddharth Mayya, Saaketh Narayan, Matthew Malencia, Saurav Agarwal, Vijay Kumar

Year
2023
Citations
14

Abstract

We propose a new formulation for the multi-robot task planning and allocation problem that incorporates (a) precedence relationships between tasks; (b) coordination for tasks allowing multiple robots to achieve increased efficiency; and (c) cooperation through the formation of robot coalitions for tasks that cannot be performed by individual robots alone. In our formulation, the tasks and the relationships between the tasks are specified by a task graph. We define a set of reward functions over the task graph's nodes and edges. These functions model the effect of robot coalition size on task performance while incorporating the influence of one task's performance on a dependent task. Solving this problem optimally is NP-hard. However, using the task graph formulation allows us to leverage min-cost network flow approaches to obtain approximate solutions efficiently. Additionally, we explore a mixed integer programming approach, which gives optimal solutions for small instances of the problem but is computationally expensive. We also develop a greedy heuristic algorithm as a baseline. Our modeling and solution approaches result in task plans that leverage task precedence relationships and robot coordination and cooperation to achieve high mission performance, even in large missions with many agents.

Keywords

RobotLeverage (statistics)Computer scienceTask (project management)Integer programmingGraphRobot kinematicsTask analysisLinear programmingDistributed computing

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