Open Access
Subscription Access
Ornstein Uhlenbeck Cache Obliviousness Neural Congestion Control in Wireless Network for IOT Data Transmission
Wireless Network is one of the Internet-of-Things (IoT) prototypes that come up with monitoring services, therefore, influencing the life of human beings. To ensure efficiency and robustness, Quality-of-Service (QoS) is of the predominant point at issue. Congestion in wireless networks will moreover minimize the anticipated QoS of the related applications. Motivated by this, a novel method called, Ornstein– Uhlenbeck Transition and Cache Obliviousness Neural Adaptive (OUT-CONA) to improve congestion control of wireless mesh networks is presented. Adaptive actor-critic deep reinforcement learning scheme on Ornstein–Uhlenbeck State Transition scheduling model to address handovers during data transmission for IoT-enabled Wireless Networks is first designed. Here, by employing the Ornstein–Uhlenbeck state transition scheduling model, both the advantages of the Gauss and Markov Processes are exploited, therefore reducing the energy consumption involved while performing the transition. Next, in the OUTCONA method, LSTM is imposed for learning the current state representation. The LSTM with the current state representation achieves the objective of controlling congestion with cache obliviousness. The Cache Obliviousness-based Congestion method is utilized for congestion control with obliviousness caching using coherent shielding among organized as well as disorganized data. Furthermore, the performance of the OUTCONA method is evaluated and compares the results with the performances of conventional techniques, adaptive aggregation as well as hybrid deep learning. The evaluation of the OUTCONA congestion control method attains better network using lesser misclassification rate, consumption of energy, delay as well as higher goodput using conventional methods in Wireless Mesh Networks.
Keywords
Internet of Things, Ornstein–Uhlenbeck, Transition, Cache Obliviousness, Neural Adaptive, Congestion Control
User
Font Size
Information
- Amin S. Ibrahim, Khaled Y. Youssef, Ahmed H. Eldeeb, Mohamed Abouelatta, Hesham Kamel, “Adaptive aggregation based IoT traffic patterns for optimizing smart city network performance”, Alexandria Engineering Journal, Elsevier, Volume 61, Issue 12, December 2022, Pages 9553-9568.
- Sulaiman Khan, Anwar Hussain, Shah Nazir, Fazlullah Khan, Ammar Oad, Mohammad Dahman Alshehr, “Efficient and reliable hybrid deep learning-enabled model for congestion control in 5G/6G networks”, Computer Communications, Elsevier, Volume 182, January 2022, Pages 31-40.
- Thilina N. Weerasinghe, Indika A. M. Balapuwaduge, Frank Y. Li, “Priority-based initial access for URLLC traffic in massive IoT networks: Schemes and performance analysis”, Computer Networks, Elsevier, Volume 178, September 2020, Pages 1-16.
- Muhammad Adi, “Congestion free opportunistic multipath routing load balancing scheme for Internet of Things (IoT)”, Computer Networks, Elsevier, Volume 184, January 2021, Pages 1-27.
- Fan Wang, Min Zhu, Maoli Wang , Mohammad R. Khosravi, Qiang Ni , Senior Member, IEEE, Shui Yu , Senior Member, IEEE, and Lianyong Qi, “6G-Enabled Short-Term Forecasting for Large-Scale Traffic Flow in Massive IoT Based on Time-Aware Locality-Sensitive Hashing”, IEEE Internet of Things Journal, Volume 8, Issue 7, April 2021, Pages 5321 - 5331.
- Lal Pratap Verma, Mahesh Kumar, “An IoT based Congestion Control Algorithm”, Internet of Things, Elsevier, Volume 9, March 2020, Pages 1-24.
- M. Swarna, T. Godhavari, “Enhancement of CoAP based congestion control in IoT network - a novel approach”, Materials Today: Proceedings, Elsevier, Volume 37, Issue 2, June 2020, Pages 775-784.
- Mohammed Aljubayri Zhaohui Yang Mohammad Shikh-Bahaei, “Cross-layer multipath congestion control, routing and scheduling design in ad hoc wireless networks”, Wiley, Volume 2021, Feb 2021, Pages 1-13.
- Youngjae Park and Sungwook Kim, “Game-based data offloading scheme for IoT system traffic congestion problems”, EURASIP Journal on Wireless Communications and Networking, Springer, Volume 198, October 2015, Pages 1-10.
- Shilpa P. Khedkar, R. Aroul Canessane, Moslem Lari Najafi, “Prediction of Traffic Generated by IoT Devices Using Statistical Learning Time Series Algorithms”, Wireless Communications and Mobile Computing, Wiley, Volume 2021, August 2021, Pages 1-12.
- Dawei Shen, Wei Yan, Yuhuai Peng, Yanhua Fu, and Qingxu Deng, “Congestion Control and Traffic Scheduling for Collaborative Crowdsourcing in SDN Enabled Mobile Wireless Networks”, Wireless Communications and Mobile Computing, Wiley, Volume 2018, February 2018, Pages 1-11.
- Muhannad Quwaider, Yousef Shatnawi, “Congestion control model for securing internet of things data flow”, Ad Hoc Networks, Elsevier, Volume 108, May 2020, Pages 1-12.
- Amin S. Ibrahim, Khaled Y Youssef, Mohamed Abouelatta, “Traffic Aggregation Techniques for Optimizing IoT Networks”, Advances in Science, Technology and Engineering Systems Journal, Volume 6, Issue 1, June 2021, Pages 509-518.
- Juan Pablo Astudillo Leon, Francisco J. Rico-Novella, Luis J. De La Cruz Lllopis, “Predictive Traffic Control and Differentiation on Smart Grid Neighborhood Area Networks”, IEEE Access, Volume 6, Issue 1, December 2020, Pages 216805 – 216821.
- Farhad Hassan, Amir Ijaz, Mubashir Ali, Zeshan Afzal, FarrukhArslan, “Iot Enabled Intelligent Traffic Congestion Handling System Empowered By Machine Learning”, International Journal of Scientific & Technology Research, Volume 10, Issue 06, June 2021, Pages 1-5.
- Sadaf Mokhtari, Hamid Barati, Alli Barati, “A Hierarchical Congestion Control Method in Clustered Internet of Things”, The Journal of Supercomputing, Springer, Volume 78, February 2022, Pages 11830–11855.
- Godfrey A. Akpakwu1 Gerhard P. Hancke, Adnan M. Abu-Mahfouz, “CACC: Context-aware congestion control approach for lightweight CoAP/UDP-based Internet of Things traffic”, Transactions of emerging telecommunications technologies, Volume 31, Issue 2, October 2019.
- Phet Aimtongkham, Tri Gia Nguyen, and Chakchai So-In, “Congestion Control and Prediction Schemes Using Fuzzy Logic System with Adaptive Membership Function in Wireless Sensor Networks”, Wireless Communications and Mobile Computing, Wiley, Volume 2018, August 2018, Pages 1-12.
- Zhi Hu, Xiaowei Wang, Yuxia Bie, “Game Theory Based Congestion Control for Routing in Wireless Sensor Networks”, IEEE Access, Volume 9, July 2021, Pages 103862 – 103874.
- Chansook Lim, “Improving Congestion Control of TCP for Constrained IoT Networks”, Sensors, Volume 20, Issue 17, August 2020, Pages 1- 16.
Abstract Views: 179
PDF Views: 2