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A reliability-aware resource provisioning scheme for real-time industrial applications in a Fog-integrated smart factory

机译:集成了雾的智能工厂中用于实时工业应用的可靠性感知资源配置方案

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Timeliness and reliability are two major requirements of industrial applications. Hence, these two requirements should be carefully taken into account in design of a smart factory. Using a hybrid Cloud (combining a public Cloud with a private Cloud) is a well-known method to enable Cloud computing to provide reliability and timeliness. However, for strict time-sensitive applications using a hybrid Cloud is not enough to guarantee meeting their hard-deadlines. Supplying an intermediate computing layer-called Fog-between the factory and the Cloud is a promising solution to deal with reliability and latency requirements of strict time-sensitive applications. Integration of a Cloud data center, a private local Cloud, Fog nodes, and edge nodes constitute a very complex multilayer computing model in a smart factory. The goal of this paper is to provide a resource provisioning scheme for partitioning of a given workload among these multiple computing layers subject to reliability and real-time requirements. Partitioning of the workload can provide us prominent design decisions specifying how much computing resources are required to develop a local private Cloud in cooperating with Fog nodes like networking devices, how large should the minimum communication bandwidth be between the Fog and the public Cloud data center, and how many replicas for each application are required to satisfy the reliability requirement of the considered application. To evaluate the proposed method, we have conducted a set of experiments ranging from small scale to large scale scenarios. The results indicate that in 86 percent of the small scale experiments, the proposed algorithm exactly found the optimal solution achieved by a Branch and Bound (BB) based exhaustive search algorithm, while there is an improvement of around 85 percent on the execution time of our proposed method compared to the exhaustive search method. (C) 2019 Elsevier B.V. All rights reserved.
机译:及时性和可靠性是工业应用的两个主要要求。因此,在智能工厂的设计中应仔细考虑这两个要求。使用混合云(将公共云与私有云结合)是使云计算能够提供可靠性和及时性的一种众所周知的方法。但是,对于使用混合云的严格时间敏感型应用程序而言,不足以保证满足其严格要求。在工厂和云之间提供一个称为Fog的中间计算层是一种有前途的解决方案,可以满足对时间敏感的严格应用程序的可靠性和延迟要求。云数据中心,私有本地云,雾节点和边缘节点的集成构成了智能工厂中非常复杂的多层计算模型。本文的目的是提供一种资源配置方案,用于在可靠性和实时性要求较高的情况下,在这些多个计算层之间分配给定的工作负载。对工作负载进行分区可以为我们提供出色的设计决策,从而指定与网络设备之类的Fog节点合作开发本地私有云需要多少计算资源,Fog与公共云数据中心之间的最小通信带宽应为多大,以及每个应用程序需要多少个副本才能满足所考虑应用程序的可靠性要求。为了评估所提出的方法,我们进行了一系列实验,从小规模场景到大型场景。结果表明,在86%的小规模实验中,该算法准确地找到了基于基于分支和边界(BB)的穷举搜索算法所获得的最佳解决方案,而我们的执行时间却缩短了约85%提出的方法与穷举搜索方法相比。 (C)2019 Elsevier B.V.保留所有权利。

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