首页 /研究 /Learning Connectivity-Maximizing Network Configurations
LEARNING

Learning Connectivity-Maximizing Network Configurations

Daniel Mox, Vijay Kumar, Alejandro Ribeiro

发表年份
2021
访问权限
开放获取

摘要

In this letter we propose a data-driven approach to optimizing the algebraic connectivity of a team of robots. While a considerable amount of research has been devoted to this problem, we lack a method that scales in a manner suitable for online applications for more than a handful of agents. To that end, we propose a supervised learning approach with a convolutional neural network (CNN) that learns to place communication agents from an expert that uses an optimization-based strategy. We demonstrate the performance of our CNN on canonical line and ring topologies, 105k randomly generated test cases, and larger teams not seen during training. We also show how our system can be applied to dynamic robot teams through a Unity-based simulation. After training, our system produces connected configurations over an order of magnitude faster than the optimization-based scheme for teams of 10-20 agents.

关键词

cs.ROcs.LGcs.MAcs.NI

相关论文

查看 LEARNING 分类全部论文