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首页> 外文期刊>Computers & geosciences >Designing cyclic pressure pulsing in naturally fractured reservoirs using an inverse looking recurrent neural network
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Designing cyclic pressure pulsing in naturally fractured reservoirs using an inverse looking recurrent neural network

机译:使用逆向看起来的递归神经网络设计天然裂缝储层的循环压力脉动

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摘要

In this paper, an inverse looking approach is presented to efficiently design cyclic pressure pulsing (huff 'n' puff) with N_2 and CO_2, which is an effective improved oil recovery method in naturally fractured reservoirs. A numerical flow simulation model with compositional, dual-porosity formulation is constructed. The model characteristics are from the Big Andy Field, which is a depleted, naturally fractured oil reservoir in Kentucky. A set of cyclic pulsing design scenarios is created and run using this model. These scenarios and corresponding performance indicators are fed into the recurrent neural network for training. In order to capture the cyclic, time-dependent behavior of the process, recurrent neural networks are used to develop proxy models that can mimic the reservoir simulation model in an inverse looking manner. Two separate inverse looking proxy models for N_2 and CO_2 injections are constructed to predict the corresponding design scenarios, given a set of desired performance characteristics. Predictive capabilities of developed proxy models are evaluated by comparing simulation outputs with neural-network outputs. It is observed that networks are able to accurately predict the design parameters, such as the injection rate and the duration of injection, soaking and production periods.
机译:本文提出了一种反求方法,可以有效地利用N_2和CO_2设计循环压力脉动(huff'n'puff),这是对天然裂缝性油藏有效的改进采油方法。建立了具有双孔组成的数值流模拟模型。该模型的特征来自Big Andy油田,该油田是肯塔基州的一个自然裂缝的贫油油藏。使用此模型创建并运行了一组循环脉冲设计方案。这些场景和相应的性能指标被输入到递归神经网络中进行训练。为了捕获过程的周期性,时间相关行为,使用递归神经网络来开发代理模型,该代理模型可以以逆向方式模拟储层模拟模型。在给定一组所需的性能特征的情况下,针对N_2和CO_2注入建立了两个独立的逆向代理模型,以预测相应的设计方案。通过将模拟输出与神经网络输出进行比较,可以评估已开发代理模型的预测能力。可以看出,网络能够准确地预测设计参数,例如注入速率和注入持续时间,均热和生产周期。

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