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Ornstein Uhlenbeck Cache Obliviousness Neural Congestion Control in Wireless Network for IOT Data Transmission


Affiliations
1 School of Computer Science and Applications, REVA University, Bangalore, India
2 Department of Computer Science and Engineering, Jain University, Bangalore, India
3 Department of Computer Science, St. Francis College, Bangalore, India
 

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
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  • Ornstein Uhlenbeck Cache Obliviousness Neural Congestion Control in Wireless Network for IOT Data Transmission

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Authors

N Thrimoorthy
School of Computer Science and Applications, REVA University, Bangalore, India
Somashekhara Reddy D
Department of Computer Science and Engineering, Jain University, Bangalore, India
Chandramma R
Department of Computer Science and Engineering, Jain University, Bangalore, India
Soumya Unnikrishnan
Department of Computer Science, St. Francis College, Bangalore, India
Vanitha K
Department of Computer Science and Engineering, Jain University, Bangalore, India

Abstract


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

References





DOI: https://doi.org/10.22247/ijcna%2F2023%2F218512