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

Q4 Computer Science
N. Thrimoorthy, Somashekhara Reddy D, C. R., Soumya Unnikrishnan, Vanitha K
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引用次数: 0

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 OUT-CONA 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 OUT-CONA 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 OUT-CONA 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.
用于物联网数据传输的无线网络中的Ornstein-Uhlenbeck缓存遗忘神经拥塞控制
——无线网络是物联网(IoT)的雏形之一,可以提供监控服务,从而影响人类的生活。为了保证效率和鲁棒性,服务质量(QoS)是一个重要的问题。此外,无线网络中的拥塞将使相关应用的预期QoS最小化。在此基础上,提出了一种改进无线网状网络拥塞控制的新方法——Ornstein - Uhlenbeck转换和缓存遗忘神经自适应(OUT-CONA)。首先设计了基于Ornstein-Uhlenbeck状态转移调度模型的自适应actor-critic深度强化学习方案,以解决物联网无线网络数据传输过程中的切换问题。在这里,通过采用Ornstein-Uhlenbeck状态转移调度模型,利用了高斯过程和马尔可夫过程的优点,从而减少了执行转移时所涉及的能量消耗。接下来,在OUT-CONA方法中,施加LSTM来学习当前状态表示。具有当前状态表示的LSTM通过缓存遗忘实现了控制拥塞的目的。基于缓存遗忘的拥塞方法用于拥塞控制,使用在有组织和无组织数据之间使用一致屏蔽的遗忘缓存。此外,评估了OUT-CONA方法的性能,并将结果与传统技术、自适应聚合和混合深度学习的性能进行了比较。在无线Mesh网络中,对OUT-CONA拥塞控制方法进行了评价,以较低的误分类率、较低的能耗、较低的时延和较高的good - put获得了较好的网络效果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
International Journal of Computer Networks and Applications
International Journal of Computer Networks and Applications Computer Science-Computer Science Applications
CiteScore
2.30
自引率
0.00%
发文量
40
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