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Production performance forecasting method based on multivariate time series and vector autoregressive machine learning model for waterflooding reservoirs

机译:基于多变量时间序列的生产性能预测方法与灌溉水库的载体自回转机学习模型

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摘要

A forecasting method of oil well production based on multivariate time series(MTS)and vector autoregressive(VAR)machine learning model for waterflooding reservoir is proposed,and an example application is carried out.This method first uses MTS analysis to optimize injection and production data on the basis of well pattern analysis.The oil production of different production wells and water injection of injection wells in the well group are regarded as mutually related time series.Then a VAR model is established to mine the linear relationship from MTS data and forecast the oil well production by model fitting.The analysis of history production data of waterflooding reservoirs shows that,compared with history matching results of numerical reservoir simulation,the production forecasting results from the machine learning model are more accurate,and uncertainty analysis can improve the safety of forecasting results.Furthermore,impulse response analysis can evaluate the oil production contribution of the injection well,which can provide theoretical guidance for adjustment of waterflooding development plan.
机译:提出了一种基于多变量时间序列(MTS)和向量自回归(VAR)机器学习模型的油井生产的预测方法,并进行了示例应用。该方法首先使用MTS分析来优化注射和生产数据在井模式分析的基础上。井组中不同生产井的石油产量和注射井的注射井的产量被认为是相互相关的时间序列。该var模型建立了从MTS数据的线性关系和预测通过模型拟合生产的油井。历史生产数据的水库储层的分析表明,与数值储层模拟的历史匹配结果相比,机器学习模型的生产预测结果更准确,不确定性分析可以提高安全性预测结果。更多,脉动响应分析可以评估油生产对照注射井的沟槽,可以为调整水上发展计划提供理论指导。

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