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A Lightweight Location-Aware Fog Framework (LAFF) for QoS in Internet of Things Paradigm

机译:用于互联网上的QoS的轻量级位置感知迷人框架(Laff)范式

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Realization of Internet of Things (IoT) has revolutionized the scope of connectivity and reachability ubiquitously. Under the umbrella of IoT, every object which is smart enough to communicate with other object leads to the enormous data generation of varying sizes and nature. Cloud computing (CC) employs centralized data centres for the provisioning of remote services and resources. However, for the reason of being far away from client devices, CC has their own limitations especially for time and resource critical applications. The remote and centralized characteristics of CC often result in creating bottle necks, being latent, and hence deteriorate the quality of service (QoS) in the provisioning of services. Here, the concept of fog computing (FC) emerges that tends to leverage CC and end devices for data congestion and processing locally in a distributed and decentralized way. However, addressing latency and bottleneck issues for time critical applications are still challenging. In this work, a lightweight framework is proposed which employs the concept of fog head node that keeps track of other fog nodes in terms of user registrations and location awareness. The proposed lightweight location-aware fog framework (LAFF) persistently satisfies QoS by providing an accurate location-aware algorithm. A comparative analysis is also presented to analyse network usage, service time, latency, and RAM and CPU utilization. The comparison results depicts that the LAFF reduces latency, network use, and service time by 11.01%, 7.51%, and 14.8%, respectively, in contrast to the state-of-the-art frameworks. Moreover, considering RAM and CPU utilization, the proposed framework supersedes IFAM and TPFC targeting IoT applications. The RAM consumption and CPU utilization are reduced by 8.41% and 16.23% as compared with IFAM and TPFC, respectively, making the framework lightweight. Hence, the proposed LAFF improves QoS while accessing remote computational servers for the outsourced applications in fog computing.
机译:事物互联网(物联网)的实现普遍彻底改变了连接和可达性的范围。在IoT的伞下,智能足以与其他物体通信的每个对象都会导致不同尺寸和自然的巨大数据生成。云计算(CC)采用集中式数据中心来提供远程服务和资源。但是,由于远离客户端设备的原因,CC对时间和资源关键应用程序有自己的限制。 CC的远程和集中化特征通常导致创建瓶颈,潜伏,因此在供应提供服务中劣化服务质量(QoS)。这里,雾计算(FC)的概念出现,倾向于利用CC和终端设备以分布式和分散的方式在本地的数据拥塞和处理。但是,解决时间关键申请的延迟和瓶颈问题仍然具有挑战性。在这项工作中,提出了一种轻量级框架,该框架采用了雾头节点的概念,该概念在用户注册和位置意识方面跟踪其他雾节点。通过提供准确的位置感知算法,所提出的轻量级位置感知雾框架(Laff)持续满足QoS。还提出了比较分析来分析网络使用,服务时间,延迟和RAM和CPU利用率。比较结果表明,与最先进的框架相比,LAFF将延迟,网络使用和服务时间降低了11.01%,7.51%和14.8%。此外,考虑RAM和CPU利用率,所提出的框架将取代IFAM和TPFC针对IOT应用程序。与IFAM和TPFC相比,RAM消耗和CPU利用率分别减少了8.41%和16.23%,使框架重量轻。因此,在访问雾计算中的外包应用程序访问远程计算服务器时,该提议的Laff可以提高QoS。

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