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Adaptive Computing Optimization in Software-Defined Network-Based Industrial Internet of Things with Fog Computing

机译:基于软件定义的基于网络的工业物联网与雾计算的自适应计算优化

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摘要

In recent years, cloud computing and fog computing have appeared one after the other, as promising technologies for augmenting the computing capability of devices locally. By offloading computational tasks to fog servers or cloud servers, the time for task processing decreases greatly. Thus, to guarantee the Quality of Service (QoS) of smart manufacturing systems, fog servers are deployed at network edge to provide fog computing services. In this paper, we study the following problems in a mixed computing system: (1) which computing mode should be chosen for a task in local computing, fog computing or cloud computing? (2) In the fog computing mode, what is the execution sequence for the tasks cached in a task queue? Thus, to solve the problems above, we design a Software-Defined Network (SDN) framework in a smart factory based on an Industrial Internet of Things (IIoT) system. A method based on Computing Mode Selection (CMS) and execution sequences based on the task priority (ASTP) is proposed in this paper. First, a CMS module is designed in the SDN controller and then, after operating the CMS algorithm, each task obtains an optimal computing mode. Second, the task priorities can be calculated according to their real-time performance and calculated amount. According to the task priority, the SDN controller sends a flow table to the SDN switch to complete the task transmission. In other words, the higher the task priority is, the earlier the fog computing service is obtained. Finally, a series of experiments and simulations are performed to evaluate the performance of the proposed method. The results show that our method can achieve real-time performance and high reliability in IIoT.
机译:近年来,云计算和雾计算相继出现,作为用于增强本地设备的计算能力的有前途的技术。通过将计算任务卸载到雾服务器或云服务器,任务处理时间大大减少。因此,为了保证智能制造系统的服务质量(QoS),将雾服务器部署在网络边缘以提供雾计算服务。在本文中,我们研究混合计算系统中的以下问题:(1)在本地计算,雾计算或云计算中应为任务选择哪种计算模式? (2)在雾计算模式下,任务队列中缓存的任务的执行顺序是什么?因此,为了解决上述问题,我们在基于工业物联网(IIoT)系统的智能工厂中设计了软件定义网络(SDN)框架。提出了一种基于计算模式选择(CMS)和基于任务优先级(ASTP)的执行序列的方法。首先,在SDN控制器中设计一个CMS模块,然后,在操作CMS算法后,每个任务都会获得最佳计算模式。其次,可以根据任务的实时性能和计算量来计算任务优先级。根据任务优先级,SDN控制器将流表发送到SDN交换机以完成任务传输。换句话说,任务优先级越高,雾计算服务的获取越早。最后,进行了一系列实验和仿真,以评估该方法的性能。结果表明,该方法可以在工业物联网中实现实时性和高可靠性。

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