AI-assisted framework for green-routing and load balancing in hybrid software-defined networking: Proposal, challenges and future perspective

被引:0
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作者
Etengu, Richard [1 ]
Tan, Saw Chin [1 ]
Kwang, Lee Ching [2 ]
Abbou, Fouad Mohammed [3 ]
Chuah, Teong Chee [2 ]
机构
[1] Faculty of Computing and Informatics, Multimedia University, Cyberjaya,63100, Malaysia
[2] Faculty of Engineering, Multimedia University, Cyberjaya,63100, Malaysia
[3] School of Science and Engineering, Al Akhawayn University, Ifrane,53000, Morocco
关键词
Balancing - Carbon footprint - Energy efficiency - Power management (telecommunication) - Energy utilization - Deep learning - Software defined networking - Learning systems - Internet protocols - Reinforcement learning;
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摘要
The explosive growth of IP networks, the advent of cloud computing, and the rapid progress in wireless communications witnessed today refiect significant progress towards meeting the explosive data traffic demands. Consequently, communications service providers should deploy efficient and intelligent network solutions to accommodate the huge traffic demands and to ease the capacity pressure on their network infrastructure. Besides, vendors should develop novel energy-efficient networks to reduce network utility costs and carbon footprint. Software-defined networking (SDN) provides a suitable solution, however, complete SDN deployment is currently unachievable in the short-term. An alternative is the hybrid SDN/ open shortest path forwarding (OSPF) network, which allows the deployment of SDN in legacy networks. Nevertheless, hybrid SDN/OSPF also faces several technical, economic and organizational challenges. Although many energy-efficiency routing solutions exist in hybrid SDN/OSPF networks, they are generic and reactive by design. Moreover, these solutions are characterized by manual control plane forwarding configurations, leading to sub-optimal performance. The recent promising combination of SDN and artificial intelligence (AI) techniques such as machine learning (ML) and deep learning (DL) in traffic management and control provides tremendous opportunities. In this paper, we first provide a review of the most recent optimization approaches for global energy-efficient routing and load balancing. Next, we investigate a scalable and intelligent integrated architectural framework that leverages deep reinforcement learning (DRL) techniques to realize predictive and rate adaptive energy-efficient routing with guaranteed quality of service (QoS), in transitional hybrid SDN/OSPF networks. Based on the need to minimize global network energy consumption and improve link performance, this paper provides key research insights into the current progress in hybrid SDN/OSPF, ML and AI in the hope of stimulating more research. © 2020 Institute of Electrical and Electronics Engineers Inc.. All rights reserved.
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页码:166384 / 166441
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