基于数据挖掘的 ASP 洪水规模预测模型研究

IF 0.5 Q4 ENGINEERING, MULTIDISCIPLINARY Journal of Computational Methods in Sciences and Engineering Pub Date : 2023-12-15 DOI:10.3233/jcm227003
Yanan Hu, Mingyang Lv
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引用次数: 0

摘要

油气田碱ASP水淹导致地层和管线严重结垢,对原油生产的正常运行构成威胁。针对现有缩径预测方法指向性强、泛化能力差、应用效果不佳等问题,我们提出了一种用于动态缩径预测的智能知识推理模型。模型框架包括知识获取层,主要涉及缩放预测知识的人工获取和知识库的智能训练;还包括知识建模层,利用本体建模技术提供一套标准领域通用本体和知识组织体系;还包括知识推理层,即模型的应用层。三层相互协作,通过推理和表达最终完成缩放预测。该模型在杏树岗油田北部开发区共选取了 238 口井进行实验。实验结果表明,该模型的准确率最高,达到 91.87%。此外,六种离子的时间序列预测趋势与缩放状态下离子浓度的变化趋势相吻合,验证了模型预测的准确性。
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Research on prediction model of scaling in ASP flooding based on data mining
As a result of alkali ASP flooding in oil and gas fields, strata and pipelines become seriously scaled, which poses a threat to the normal operation of crude oil production. We propose an intelligent knowledge reasoning model for dynamic scaling prediction in order to address the problems of high directivity, poor generalization ability, and poor application effect of existing scaling prediction methods. The model framework includes the knowledge acquisition layer which mainly relates to the manual acquisition of scaling prediction knowledge and the intelligent training of the knowledge base, and it includes the knowledge modeling layer that provides a set of standard domain common ontology and knowledge organization system using the ontology modeling technology, it also includes the knowledge inference layer which is the application layer of the model. The three layers collaborate and finally complete the scaling prediction through inference and expression. A total of 238 wells were selected for experimentation in the northern development area of the Xingshugang Oilfield. Experimental results indicate that the model has the highest accuracy of 91.87%. Additionally, the time series prediction trend for the six ions matches the trend of change in ion concentration in the scaling state, verifying the accuracy of the model’s predictions.
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来源期刊
CiteScore
0.80
自引率
0.00%
发文量
152
期刊介绍: The major goal of the Journal of Computational Methods in Sciences and Engineering (JCMSE) is the publication of new research results on computational methods in sciences and engineering. Common experience had taught us that computational methods originally developed in a given basic science, e.g. physics, can be of paramount importance to other neighboring sciences, e.g. chemistry, as well as to engineering or technology and, in turn, to society as a whole. This undoubtedly beneficial practice of interdisciplinary interactions will be continuously and systematically encouraged by the JCMSE.
期刊最新文献
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