| 注册
首页|期刊导航|石油科学通报|基于聚类及长短时记忆神经网络预测油田产量

基于聚类及长短时记忆神经网络预测油田产量

王洪亮 林霞 蒋丽维 刘宗尚

石油科学通报2024,Vol.9Issue(1):62-72,11.
石油科学通报2024,Vol.9Issue(1):62-72,11.DOI:10.3969/j.issn.2096-1693.2024.01.005

基于聚类及长短时记忆神经网络预测油田产量

An oilfield production prediction method based on clustering and long short-term memory neural network

王洪亮 1林霞 1蒋丽维 1刘宗尚1

作者信息

  • 1. 中国石油勘探开发研究院,北京 100083
  • 折叠

摘要

Abstract

The accuracy of predicting oilfield production via machine learning algorithms is closely related to the representa-tiveness and quantity of training samples.Generally,oilfield production data or oil well production data are used to construct training samples.There is the"small sample"problem when the oilfield is used for the training samples.To use oil wells as training samples,it is difficult and time-consuming to manually mark training samples that can represent the oilfield production decline,because old oil fields generally have many development layers,long production history and many production batches of oil wells.The production data of oilfield and oil well production data are organically integrated to construct training samples,and the production intelligent prediction model is established to predict the production of the oilfield.Firstly,the K-means clustering algorithm of unsupervised learning is used to perform cluster analysis on oil wells based on effective thickness,porosity,perme-ability,saturation and other observed values,identify the production decline category,and convert each type of oil well into a typical oil well as a representative of this type of oil well.Secondly,typical wells are taken as prediction objects,and the number of training samples is increased by randomly extracting wells proportionally from each type of well,that is,the production data of typical wells and wells are fused to construct training samples.Finally,a model is built based on LSTM neural network to pre-dict the production of typical wells,and then predict the oilfield production.The research results show that this method not only solves the"small sample"problem of oilfield data as training samples,but also reduces the difficulty and workload of labeling oil well data as training samples,and the accuracy meets the requirements of field production,which has certain guiding significance for the engineering application of intelligent prediction of oil and gas production.

关键词

油井产量/K-Means聚类/样本标注/神经网络/人工智能

Key words

oil well production/K-Means clustering/sample labeling/neural network/artificial intelligence

引用本文复制引用

王洪亮,林霞,蒋丽维,刘宗尚..基于聚类及长短时记忆神经网络预测油田产量[J].石油科学通报,2024,9(1):62-72,11.

基金项目

国家重点研发计划课题"战略性资源开发区风险评估应用示范"(2022YFF0801204)和中国石油天然气股份有限公司重大统建项目"中国石油认知计算平台"(2019-40210-000020-02)联合资助 (2022YFF0801204)

石油科学通报

OACSTPCD

2096-1693

访问量6
|
下载量0
段落导航相关论文