AI-Empowered Software-Defined WLANs

The complexity of wireless and mobile networks is growing at an unprecedented pace. This trend is proving current network control and management techniques based on analytical models and simulations to be impractical, especially if combined with the data deluge expected from future applications such as augmented reality. This is particularly true for software-defined wireless local area networks (SO-WLANs). It is our belief that to battle this growing complexity, future SO-WLANs must follow an artificial intelligence (AI) -native approach. In this article, we introduce aiOS, which is an AI-based platform that builds toward the autonomous management of SD-WLANs. Our proposal is aligned with the most recent trends in in-network AI promoted by the ITU Telecommunication Standardization Sector (ITU-T) and with the architecture for disaggregated radio access networks promoted by the Open Radio Access Network Alliance. We validate aiOS in a practical use case, namely frame size optimization in SD-WLANs, and we consider the long-term evolution, challenges, and scenarios for AI-assisted network automation in the wireless and mobile networking domain.

[1]  David López-Pérez,et al.  IEEE 802.11be Extremely High Throughput: The Next Generation of Wi-Fi Technology Beyond 802.11ax , 2019, IEEE Communications Magazine.

[2]  Nick Feamster,et al.  Improving network management with software defined networking , 2013, IEEE Commun. Mag..

[3]  Hamed Haddadi,et al.  Deep Learning in Mobile and Wireless Networking: A Survey , 2018, IEEE Communications Surveys & Tutorials.

[4]  Anatolij Zubow,et al.  ns-3 meets OpenAI Gym: The Playground for Machine Learning in Networking Research , 2019, MSWiM.

[5]  Wei Chen,et al.  The Roadmap to 6G: AI Empowered Wireless Networks , 2019, IEEE Communications Magazine.

[6]  Juergen Jasperneite,et al.  The Future of Industrial Communication: Automation Networks in the Era of the Internet of Things and Industry 4.0 , 2017, IEEE Industrial Electronics Magazine.

[7]  Cristina Cano,et al.  A Flexible Machine-Learning-Aware Architecture for Future WLANs , 2020, IEEE Communications Magazine.

[8]  Behnam Dezfouli,et al.  A Review of Software-Defined WLANs: Architectures and Central Control Mechanisms , 2018, IEEE Communications Surveys & Tutorials.

[9]  David Walker,et al.  Languages for software-defined networks , 2013, IEEE Communications Magazine.

[10]  Kemal Davaslioglu,et al.  DeepWiFi: Cognitive WiFi with Deep Learning , 2019, IEEE Transactions on Mobile Computing.

[11]  Cristina Cano,et al.  Usage of Network Simulators in Machine-Learning-Assisted 5G/6G Networks , 2020, IEEE Wireless Communications.

[12]  Roberto Riggio,et al.  aiOS: An Intelligence Layer for SD-WLANs , 2020, NOMS 2020 - 2020 IEEE/IFIP Network Operations and Management Symposium.