基于人工神经网络的流型识别专家系统

J. A. Gomez Camperos, Carlos Mauricio Ruiz Diaz, Marlon Mauricio Hernández Cely
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引用次数: 0

摘要

在这项工作中,开发了人工智能在油气工业中的应用,以识别油和水两相流的水平和垂直管道中的流动模式,通过开发人工神经网络将单词信息归一化并将其转换为数值,其输入层由每种流体的表面速度,混合物的速度,物质的体积分数组成。管道的直径和倾斜度以及油的粘度。人工神经网络(ANN)有两个隐藏层,由45个神经元组成。用于训练、验证和测试模型的数据库有6993行信息,这些信息与智能系统的输入相对应,并专门用于水平管道的环空流动和垂直管道的DO/W。请注意,这些信息是在对12位和18位作者分别针对水平和垂直管道提出的信息进行重新设计后获得的。最后,模型得到的均方误差在1.38%左右,最大决定系数为0.79。
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SPECIALIST SYSTEM IN FLOW PATTERN IDENTIFICATION USING ARTIFICIAL NEURAL NETWORKS
In this work, an application of artificial intelligence in the oils & gas industry is developed to iden-tify flow patterns in horizontal and vertical pipes of two-phase flow of oil and water, normalizing the word information and converting it to numerical values through the development of an artifi-cial neural network, whose input layer is composed of the surface velocities of each fluid, the ve-locity of the mixture, the volumetric fraction of the substances, diameter and the inclination of pipelines and the oil viscosity. The Artificial Neural Networks (ANN) has two hidden layers composed of 45 neurons. The database with which the model was trained, validated, and tested has 6993 rows of information corresponding to the inputs of the intelligent system and particular-ized for annular flow in horizontal pipes and DO/W in vertical pipelines. Notice that the infor-mation was obtained after re-engineering the information presented by 12 and 18 authors for hor-izontal and vertical piping, respectively. Finally, the mean square error obtained by the model was around 1.38%, with a maximum coefficient of determination of 0.79.
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来源期刊
Journal of Applied Engineering Science
Journal of Applied Engineering Science Engineering-Engineering (all)
CiteScore
2.00
自引率
0.00%
发文量
122
审稿时长
12 weeks
期刊介绍: Since 2002 iipp build cooperation with its clients established on wealthy experience, interchangeable respect and trust and permanently arrangement with the purpose of successfully realization of projects recognizable according to good organization and high quality of provided favors. Working as unique team of highly motivated experts, Institute iipp provides to its customers the most high-quality solutions in domain of engineering consulting.
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