Establishment of corrosion big data standard acquisition platform for refining process

Liangchao Chen, Jianfeng Yang, Guanghai Li, Xin-yuan Lu
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引用次数: 1

Abstract

The advent of the internet of things and big data era has brought new ideas for corrosion analysis and prediction of refining units. With the establishment and application of all kinds of information systems, refining enterprises have accumulated a large number of structured, unstructured, corrosion influencing factors and corrosion result data sources, but all kinds of system data are independent, and the traditional storage methods are limited in calculation, processing and analysis and mining ability, which do not have the conditions of big data analysis and utilization, so it is urgent to study the standardized collection method of corrosion data and establish a unified data center. Based on the whole life process of equipment, this paper studies the data content, data characteristics and current main data acquisition and management forms of corrosion related data in each link of the equipment through-life. In addition, this paper puts forward the overall structure of corrosion big data standard acquisition system for refining process in the enterprise as a whole. The big data acquisition system, which is suitable for corrosion big data comprehensive collection, efficient storage and open interface, is established to carry on the data acquisition step by step, and lays a foundation for the acquisition and analysis and utilization of corrosion big data from refining process.
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建立精炼过程腐蚀大数据标准采集平台
物联网和大数据时代的到来,为炼油装置腐蚀分析与预测带来了新的思路。随着各类信息系统的建立和应用,炼油企业积累了大量的结构化、非结构化、腐蚀影响因素和腐蚀结果数据源,但各类系统数据相互独立,传统的存储方式在计算、处理分析和挖掘能力方面受到限制,不具备大数据分析利用的条件。因此,研究腐蚀数据的标准化采集方法,建立统一的腐蚀数据中心已迫在眉睫。本文从设备全寿命过程出发,研究了设备全寿命各环节腐蚀相关数据的数据内容、数据特点及目前主要的数据采集和管理形式。此外,本文提出了企业整体炼化过程腐蚀大数据标准采集系统的总体结构。建立适合于腐蚀大数据综合采集、高效存储、开放接口的大数据采集系统,分步进行数据采集,为提炼过程腐蚀大数据的采集、分析和利用奠定基础。
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