ROSCell: A ROS2-Based Framework for Automated Formation and Orchestration of Multi-Robot Systems
Jiangtao Shuai, Marvin Carl May, Sonja Schimmler, Manfred Hauswirth

TL;DR
ROSCell is a ROS2-based framework that enables flexible formation, deployment, and coordination of multi-robot systems, optimizing resource usage and adaptability in dynamic manufacturing environments.
Contribution
It introduces a scalable, low-overhead framework for multi-robot management that simplifies deployment and coordination in heterogeneous production settings.
Findings
Reduces CPU, memory, and network overhead compared to K3s-based solutions
Enhances energy efficiency and cost-effectiveness for large-scale deployment
Supports dynamic formation and reconfiguration of robot cells
Abstract
Modern manufacturing under High-Mix-Low-Volume requirements increasingly relies on flexible and adaptive matrix production systems, which depend on interconnected heterogeneous devices and rapid task reconfiguration. To address these needs, we present ROSCell, a ROS2-based framework that enables the flexible formation and management of a computing continuum across various devices. ROSCell allows users to package existing robotic software as deployable skills and, with simple requests, assemble isolated cells, automatically deploy skill instances, and coordinate their communication to meet task objectives. It provides a scalable and low-overhead foundation for adaptive multi-robot computing in dynamic production environments. Experimental results show that, in the idle state, ROSCell substantially reduces CPU, memory, and network overhead compared to K3s-based solutions on edge devices,…
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Taxonomy
TopicsRobotics and Automated Systems · Modular Robots and Swarm Intelligence · Real-Time Systems Scheduling
