基于物联网计算架构的自适应流移动瓶颈检测

Hannaneh Najdataei, Mukund Subramaniyan, Vincenzo Gulisano, A. Skoogh, M. Papatriantafilou
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引用次数: 3

摘要

云计算正在彻底改变数据分析应用程序的主干,包括工业应用程序。其主要支柱之一是将访问数据的逻辑(例如,研究制造系统的效率)与维护和分析数据的实际硬件(例如,服务器)分离开来。尽管如此,由物联网(IoT)等其他技术支持的大型分布式网络物理系统清楚地表明,“如何处理”数据和“在哪里处理”并不是互不相关的问题;也就是说,云计算本身是不够的。雾计算和边缘计算已经作为互补选项出现,以分发分析,通过接近源的数据分析来帮助应对挑战。我们展示了工业过程的一个关键问题,即转移瓶颈检测,如何利用这种多层计算架构,对来自制造执行系统的数据进行连续和可配置的分析。我们提出了一个处理框架STRATUM和一个算法AMBLE,用于连续的数据流处理。STRATUM无缝地分布和并行处理跨层和AMBLE保证一致的分析,尽管时间波动,这通常是由于引入例如通信系统;它还通过适当的数据结构实现内存中处理的效率。在真实世界的数据集上进行的实验研究显示,该解决方案在实现可配置和高效分析方面具有优势,该数据集取自一条生产线,历时两年,包含850万个条目。
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Adaptive Stream-based Shifting Bottleneck Detection in IoT-based Computing Architectures
Cloud computing is revolutionizing the backbone of data analysis applications, including industrial ones. One of its main pillars is the separation of the logic with which data is accessed (e.g., to study the efficiency of a manufacturing system) from the actual hardware (e.g., server) that maintains and analyses the data. Large distributed cyber-physical systems enabled by, among other technologies, the Internet of Things (IoT), made nonetheless clear that “what to do” with the data and “where to do it” are not disjoint problems; i.e., cloud computing on its own is not enough. Fog and edge computing have emerged as complementary options, to distribute the analysis, helping with challenges by means of close-to-the-source data analysis.We show for a key problem for industrial processes, that of shifting bottleneck detection, how to take advantage of such multi-tier computing architectures, to perform continuous and configurable analysis of data from Manufacturing Execution Systems. We propose a processing framework, STRATUM, and an algorithm, AMBLE, for continuous, data stream processing. STRATUM seamlessly distributes and parallelizes the processing across the tiers and AMBLE guarantees consistent analysis in spite of timing fluctuations, which are commonly introduced due to e.g. the communication system; it also achieves efficiency through appropriate data structures for in-memory processing. The experimental study on a real-world dataset, taken from a production line over two years and including 8.5 million entries, shows the benefits of the proposed solution in enabling configurable and efficient analysis.
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