提高采收率的水驱模型开发

Jetina J. Tsvaki, Dmitry Tailakov, Evgeny Nikolaevich Pavlovskiy
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引用次数: 1

摘要

任何行业的主要目标都是提高生产力,在油气田中,通过有效和经济地生产石油来增加油藏石油资产。该研究的目的是利用人工神经网络开发提高产油量的水驱模型,并提供一个在给定注水条件下最大化产油量的模型,从而延长成熟油田的寿命,降低运营成本。利用2004年至2016年期间577口注水井、1344口生产井和36个过程中发生的事件的日注水量、产油量、产水量和产气量数据。对多层感知、卷积神经网络、长短期记忆和门控递归神经网络等深层神经模型进行了对比分析,门控递归神经网络的表现优于它们。为了减少水驱模型的损失,提高水驱模型的性能,上述模型均采用表格数据混合。结果表明,混合门控递归神经网络的性能优于其他所有模型。为实现采收率最大化,采用了Nelder-Mead优化方法,寻找合适的注水速度。采用简单的两层多层感知器对注水采油非线性关系进行建模,避免了函数复杂性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Development of water flood model for oil production enhancement
Main goal of any industry is to increase productivity which in oil and gas field is to increase reservoir oil asset by producing oil in an effective and economically efficient manner. The objective of the study is to develop a water flood model for oil production enhancement using artificial neural networks and provide a model that maximizes oil production for a given water injection that in turn will extend mature fields life and decrease operational costs. Using the data comprising of daily water injection rates, oil production rates, water production, and gas production from the year 2004 to 2016 for 577 injection wells, 1344 production wells, and 36 events which had occurred during the course. Comparative analysis on the deep neural models such as Multi-Layer Perception, Convolutional Neural Networks, Long Short-Term Memory, and Gated Recurrent Neural Networks are used, and Gated Recurrent Neural Networks outperformed them. To minimize the loss and improve the performance of the water flood model tabular data mix-up was adopted on all the models above. The results showed that the data mixed up Gated Recurrent Neural Network outperformed all the other models. To maximize the oil production Nelder-Mead optimization method was adopted to find appropriate water injection rates. A simple two-layered multi-layer perceptron was used in modeling the nonlinear relationship between water injection and oil production to avoid function complexity.
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