An Alleviation of Cloud Congestion Analysis of Fluid Retrial User on Matrix Analytic Method in IoT-based Application

K. Nandhini, V. Vidhya
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Abstract

Cloud Computing (CC) and Internet of Things (IoT) are upgrowing human intervention to enhance the daily lifestyle. Currently, the heavy loaded traffic congestion is a very big challenge over IoT-based applications. For that purpose, the researchers approached various ways to overcome the congestion mechanism in recent years. Even though, they have futile to acheive the best resource storage accessing capacity expectation other than, Cloud Computing. Data sharing is a key impediment of Cloud Computing as well as Internet of Things. These are the constituent that give rise to the combination of the IoT and cloud computing paradigm as IoT Cloud. Though, preserving the missed data during the execution time is a key factor to indulge the Retrial Queueing Theory (RQT), who is facing issue upon accessing Cloud Service Provider (CSP) enter into virtual pool to preserve the data for reuse. The paper imposes Markov Fluid analysis with Matrix Analytic Method (MAM) allows the data as continuous length of data rather than individual data to avoid the congestion. The virtual orbit queue follow constant retrial rate discipline, that is, head of the orbital users makes attempt to occupy the server are assumed to be independent and identically distributed (i.i.d). Steady-state expression presented to study the behaviour of congestion. An illustrative analysis is produced to gain deep perception into the system model.
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基于矩阵分析法的物联网应用中流体重审用户云拥塞缓解分析
云计算(CC)和物联网(IoT)正在发展人类干预,以改善日常生活方式。目前,高负载的流量拥塞是物联网应用面临的一大挑战。为此,近年来研究人员探索了各种方法来克服拥堵机制。即使如此,他们也无法实现云计算之外的最佳资源存储访问容量期望。数据共享是云计算和物联网的关键障碍。这些都是导致物联网和云计算范式结合为物联网云的组成部分。然而,在执行期间保留丢失的数据是满足RQT(重试排队理论)的一个关键因素,RQT在访问云服务提供商(CSP)进入虚拟池以保留数据以供重用时面临问题。本文采用矩阵分析法(MAM)进行马尔可夫流体分析,允许数据作为连续长度的数据而不是单个数据,以避免拥塞。虚拟轨道队列遵循恒重审率原则,即假设尝试占用服务器的轨道用户的头部是独立且同分布的。提出了研究拥塞行为的稳态表达式。一个说明性的分析产生了深入了解系统模型。
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