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Modeling industry 4.0 based fog computing environments for application analysis and deployment

机译:基于行业4.0的雾计算环境建模,以进行应用程序分析和部署

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The extension of the Cloud to the Edge of the network through Fog Computing can have a significant impact on the reliability and latencies of deployed applications. Recent papers have suggested a shift from VM and Container based deployments to a shared environment among applications to better utilize resources. Unfortunately, the existing deployment and optimization methods pay little attention to developing and identifying complete models to such systems which may cause large inaccuracies between simulated and physical run-time parameters. Existing models do not account for application interdependence or the locality of application resources which causes extra communication and processing delays. This paper addresses these issues by carrying out experiments in both cloud and edge systems with various scales and applications. It analyses the outcomes to derive a new reference model with data driven parameter formulations and representations to help understand the effect of migration on these systems. As a result, we can have a more complete characterization of the fog environment. This, together with tailored optimization methods than can handle the heterogeneity and scale of the fog can improve the overall system run-time parameters and improve constraint satisfaction. An Industry 4.0 based case study with different scenarios was used to analyze and validate the effectiveness of the proposed model. Tests were deployed on physical and virtual environments with different scales. The advantages of the model based optimization methods were validated in real physical environments. Based on these tests, we have found that our model is 90% accurate on load and delay predictions for application deployments in both cloud and edge. (C) 2018 Elsevier B.V. All rights reserved.
机译:通过雾计算将云扩展到网络边缘可能会对部署的应用程序的可靠性和延迟产生重大影响。最近的论文建议从基于VM和Container的部署转移到应用程序之间的共享环境,以更好地利用资源。不幸的是,现有的部署和优化方法很少关注为此类系统开发和识别完整的模型,这可能会导致模拟的运行时参数与物理的运行时参数之间存在很大的误差。现有模型不考虑应用程序的相互依赖性或应用程序资源的局部性,这会导致额外的通信和处理延迟。本文通过在具有不同规模和应用程序的云和边缘系统中进行实验来解决这些问题。它分析结果以得出一个新的参考模型,其中包含数据驱动的参数公式和表示形式,以帮助了解迁移对这些系统的影响。结果,我们可以更全面地描述雾化环境。这与可处理雾的异质性和规模的量身定制的优化方法一起,可以改善整个系统的运行时参数并提高约束满意度。基于工业4.0的案例研究具有不同的场景,用于分析和验证所提出模型的有效性。测试已部署在不同规模的物理和虚拟环境中。在实际物理环境中验证了基于模型的优化方法的优点。根据这些测试,我们发现我们的模型对于云和边缘中的应用程序部署的负载和延迟预测的准确性为90%。 (C)2018 Elsevier B.V.保留所有权利。

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