Please use this identifier to cite or link to this item: http://localhost:8080/xmlui/handle/123456789/5841
Title: Near-optimal responsive traffic engineering in software defined networks based on deep learning
Authors: Salman, Mohammed I.
Keywords: Traffic engineering
Software defined networking
Issue Date: May-2022
Publisher: Future Generation Computer Systems
Abstract: The routing problem for traffic engineering can be solved using different techniques. For example, the problem can be formulated as a linear program (LP) or a mixed-integer linear program (MILP) that requires solving a complex optimization problem. Thus, this approach typically cannot be used for solving a large problem in real time. Alternatively, heuristic algorithms may be devised that, though fast, do not guarantee an optimal decision. This work proposes a novel design of a system that employs a deep learning model trained on optimal decisions to solve the routing problem. The model learns to adapt to traffic dynamics by updating the traffic split ratios to distribute traffic to a few paths between a source and a destination instead of frequently computing a single path for a source and destination pair. This solves the problem of network disturbance and traffic disruption. Specifically, we train two deep learning models: DNN (MLP), which is fully connected layers of neurons, and DNN (LSTM) that consists of a few layers of LSTM neural network and a dense layer. The two models are evaluated in a TE simulator. The system offers two important features of a good traffic engineering system: producing close to optimal traffic engineering results and responding to traffic dynamics in real time. We perform simulations on two topologies, the ATT North America topology, and a 4x4 grid topology. The results show that our proposed system can learn from optimal decisions to attain a responsive traffic engineering system.
URI: http://localhost:8080/xmlui/handle/123456789/5841
ISSN: 0167-739X
Appears in Collections:مركز الحاسبة الالكترونية

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