Machine learning prediction of bottomhole flowing pressure as a time series in the volve field

Olugbenga Olamigoke, David Chinweuba Onyeali
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Abstract

Bottomhole flowing pressure (BHFP) is a critical parameter in analyzing oil and gas well performance, production forecasting and reservoir management. This study is focused on obtaining feature combinations towards low-error prediction of time-series BHFP in two wells in the Volve field. Three machine learning (ML) models (support vector regression (SVR), a distance-based model; random forest (RF), a tree-based ensemble model and Long Short-Term Memory (LSTM), a type of recurrent neural network) are used for BHFP prediction in two wells of the Volve field. The data for each well was split such that the first 70% is used in training the model, the next 15% as validation data for selecting the optimal hyperparameters and the last 15% for testing the models. The train and validation sets were used to train the models before making predictions on the test sets. While the SVR and RF models reasonably predicted the BHFP in both wells with a maximum Mean Absolute Percentage Error (MAPE) of 5.0% and 4.3% respectively, the LSTM model performed best across both wells with the MAPE less than 2.9% in both wells. ML model performance was superior for the well with the data distributed more uniformly. The three feature combinations with superior ML model performance for BHFP prediction all have five features in common namely: bottomhole temperature, oil flow rate, gas flow rate, choke size, onstream hours. The workflow in this work can be adopted for fieldwide BHFP prediction.
井底流动压力作为时间序列的机器学习预测
井底流动压力(BHFP)是油气井动态分析、产量预测和油藏管理的重要参数。该研究的重点是获得特征组合,以实现Volve油田两口井时间序列BHFP的低误差预测。三种机器学习(ML)模型(基于距离的支持向量回归(SVR)模型;随机森林(RF)是一种基于树的集成模型,长短期记忆(LSTM)是一种循环神经网络,用于Volve油田两口井的BHFP预测。每口井的数据被分割,前70%用于训练模型,后15%作为选择最优超参数的验证数据,后15%用于测试模型。在对测试集进行预测之前,使用训练集和验证集来训练模型。尽管SVR和RF模型对这两口井的BHFP进行了合理的预测,最大平均绝对百分比误差(MAPE)分别为5.0%和4.3%,但LSTM模型在这两口井中表现最好,MAPE均小于2.9%。对于数据分布较均匀的井,ML模型的性能较好。用于BHFP预测的三种特征组合具有卓越的ML模型性能,它们都有五个共同特征,即井底温度、油流量、气流量、节流孔尺寸、投产时间。该工作流程可用于全油田BHFP预测。
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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