Petrochemical Production Big Data and its Four Typical Application Paradigms

Hu Shaolin, Z. Qinghua, Sun NaiQuan, Li Xiwu
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Abstract

In recent years, the big data has attracted more and more attention. It can bring us more information and broader perspective to analyse and deal with problems than the conventional situation. However, so far, there is no widely acceptable and measurable definition for the term “big data”. For example, what significant features a data set needs to have can be called big data, and how large a data set is can be called big data, and so on. Although the "5V" description widely used in textbooks has been tried to solve the above problems in many big data literatures, "5V" still has significant shortcomings and limitations, and is not suitable for completely describing big data problems in practical fields such as industrial production. Therefore, this paper creatively puts forward the new concept of data cloud and the data cloud-based "3M" descriptive definition of big data, which refers to a wide range of data sources (Multisource), ultra-high dimensions (Multi-dimensional) and a long enough time span (Multi-spatiotemporal). Based on the 3M description of big data, this paper sets up four typical application paradigms for the production big data, analyses the typical application of four paradigms of big data, and lays the foundation for applications of big data from petrochemical industry.
石化生产大数据及其四种典型应用范式
近年来,大数据越来越受到人们的关注。它可以给我们带来比传统情况更多的信息和更广阔的视角来分析和处理问题。然而,到目前为止,“大数据”一词还没有一个被广泛接受和可衡量的定义。例如,一个数据集需要具备哪些重要的特征才能被称为大数据,一个数据集有多大才能被称为大数据,等等。虽然教科书中广泛使用的“5V”描述在很多大数据文献中都试图解决上述问题,但“5V”仍然存在明显的缺陷和局限性,并不适合完全描述工业生产等实际领域的大数据问题。因此,本文创造性地提出了数据云的新概念和基于数据云的“3M”大数据描述性定义,即数据源范围广(Multisource)、维度超高(Multi-dimensional)、时间跨度足够长(Multi-spatiotemporal)。基于3M对大数据的描述,构建了生产大数据的四种典型应用范式,分析了四种大数据范式的典型应用,为石化行业大数据的应用奠定了基础。
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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