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Delay Tolerant Network Routing as a Machine Learning Classification Problem

机译:延迟容忍网络路由作为机器学习分类问题

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This paper discusses a machine learning-based approach to routing for delay tolerant networks (DTNs) [1]. DTNs are networks which experience frequent disconnections between nodes, uncertainty of an end-to-end path, long one-way trip times, and may have high error rates and asymmetric links. Such networks exist in deep space satellite networks, very rural environments, disaster areas and underwater environments. In this work, we use machine learning classifiers to predict a set of neighboring nodes which are the most likely to deliver a message to a desired location based on message history delivery information. We use the Common Open Research Emulator (CORE) [2] to emulate the DTN environment based on real-world location traces and collect network traffic statistics from the Bundle Protocol implementation IBR-DTN [3]. The software architecture for classification-based routing, analysis and preparation of the network history data and prediction results are discussed.
机译:本文讨论了一种基于机器学习的延迟容忍网络(DTN)路由方法[1]。 DTN是在节点之间频繁断开连接,端到端路径的不确定性,单向跳闸时间较长,并且可能具有较高的错误率和不对称链路的网络。这样的网络存在于深空卫星网络,非常农村的环境,灾区和水下环境中。在这项工作中,我们使用机器学习分类器基于消息历史传递信​​息来预测一组最有可能将消息传递到所需位置的相邻节点。我们使用通用开放研究仿真器(CORE)[2]来基于实际位置跟踪来仿真DTN环境,并从捆绑协议实现IBR-DTN [3]中收集网络流量统计信息。讨论了用于基于分类的路由,网络历史数据和预测结果的分析和准备的软件体系结构。

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