Towards Big Data Solutions for Industrial Tomography Data Processing

Aleksandra Kowalska, Piotr Łuczak, Dawid Sielski, T. Kowalski, A. Romanowski, D. Sankowski
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引用次数: 3

Abstract

This paper presents an overview of what Big Data can bring to the modern industry. Through following the history of contemporary Big Data frameworks the authors observe that the tools available have reached sufficient maturity so as to be usable in an industrial setting. The authors propose the concept of a system for collecting, organising, processing and analysing experimental data obtained from measurements with process tomography. Process tomography is used for noninvasive flow monitoring and data acquisition. The measurement data is collected, stored and processed to identify process regimes and process threats. Further general examples of solutions that aim to take advantage of the existence of such tools are presented as proof of viability of such approach. As the first step in the process of creating the proposed system, a scalable, distributed, containerisation-based cluster has been constructed, with consumer-grade hardware.
面向工业层析成像数据处理的大数据解决方案
本文概述了大数据对现代工业的影响。通过跟踪当代大数据框架的历史,作者观察到可用的工具已经达到足够的成熟度,可以在工业环境中使用。作者提出了一个系统的概念,用于收集、组织、处理和分析从过程层析成像测量中获得的实验数据。过程断层扫描用于无创血流监测和数据采集。测量数据被收集、存储和处理,以识别过程制度和过程威胁。进一步的解决方案的一般例子旨在利用这些工具的存在,以证明这种方法的可行性。作为创建所建议的系统过程的第一步,已经使用消费者级硬件构建了一个可伸缩的、分布式的、基于容器的集群。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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