Kądziołka Bartosz, Jurkiewicz Piotr, Wójcik Robert, Domżał Jerzy
Institute of Telecommunications, AGH University of Krakow, 30-054 Krakow, Poland.
Entropy (Basel). 2024 Jun 22;26(7):537. doi: 10.3390/e26070537.
Rapid and precise detection of significant data streams within a network is crucial for efficient traffic management. This study leverages the TabNet deep learning architecture to identify large-scale flows, known as elephant flows, by analyzing the information in the 5-tuple fields of the initial packet header. The results demonstrate that employing a TabNet model can accurately identify elephant flows right at the start of the flow and makes it possible to reduce the number of flow table entries by up to 20 times while still effectively managing 80% of the network traffic through individual flow entries. The model was trained and tested on a comprehensive dataset from a campus network, demonstrating its robustness and potential applicability to varied network environments.
快速精确地检测网络内的重要数据流对于高效的流量管理至关重要。本研究利用TabNet深度学习架构,通过分析初始数据包头部五元组字段中的信息来识别大规模流量,即巨象流。结果表明,采用TabNet模型能够在流开始时就准确识别巨象流,并有可能将流表项数量减少多达20倍,同时仍可通过单个流条目有效地管理80%的网络流量。该模型在来自校园网络的综合数据集上进行了训练和测试,证明了其在不同网络环境中的稳健性和潜在适用性。