Deep Recurrent Neural Network DRNN Model for Real-Time Step-Down Analysis

S. Madasu, Keshava P. Rangarajan
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引用次数: 1

Abstract

A new real-time machine learning model has been developed based on the deep recurrent neural network (DRNN) model for performing step-down analysis during the hydraulic fracturing process. During a stage of the stimulation process, fluids are inserted at the top of the wellhead, while the flow is primarily driven by the difference between the bottomhole pressure (BHP) and reservoir pressure. The major physics and engineering aspects involved are complex and, quite often, there is a high level of uncertainty related to the accuracy of the measured data, as well as intrinsic noise. Consequently, using a machine learning-based method that can resolve both the temporal and spatial non-linear variations has advantages over a pure engineering model. The approach followed provides a long short-term memory (LSTM) network-based methodology to predict BHP and temperature in a fracturing job, considering all commonly known surface variables. The surface pumping data consists of real-time data captured within each stage, such as surface treating pressure, fluid pumping rate, and proppant rate. The accurate prediction of a response variable, such as BHP, is important because it provides the basis for decisions made in several well treatment applications, such as hydraulic fracturing and matrix acidizing, to ensure success. Limitations of the currently available modeling methods include low resolution BHP predictions and an inability to properly capture non-linear effects in the BHP/temperature time series relationship with other variables, including surface pressure, flow rate, and proppant rate. In addition, current methods are further limited by lack of accuracy in the models for fluid properties; the response of the important sub-surface variables strongly depends on the modeled fluid properties. The novel model presented in this paper uses a deep learning neural network model to predict the BHP and temperature, based on surface pressure, flow rate, and proppant rate. This is the first attempt to predict response variables, such as BHP and temperature, in real time during a pumping stage, using a memory-preserving recurrent neural network (RNN) variant, such as LSTM. The results show that the LSTM can successfully model the BHP and temperature in a hydraulic fracturing process. The BHP and temperature predictions obtained were within 5% relative error. The current effort to model BHP can be used for step-down analysis in real time, thereby providing an accurate representation of the subsurface conditions in the wellbore and in the reservoir. The new method described in this paper avoids the need to manage the complex physics of the present methods; it provides a robust, stable, and accurate numerical solution throughout the pumping stages. The method described in this paper is extended to manage step-down analysis using surface-measured variables to predict perforation and tortuosity friction.
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实时降压分析的深度递归神经网络DRNN模型
基于深度递归神经网络(DRNN)模型,开发了一种新的实时机器学习模型,用于水力压裂过程中的降压分析。在增产过程的某一阶段,流体被注入井口顶部,而流动主要由井底压力(BHP)和油藏压力之间的差异驱动。所涉及的主要物理和工程方面是复杂的,而且往往与测量数据的准确性以及固有噪声有关,存在高度的不确定性。因此,使用基于机器学习的方法可以解决时间和空间非线性变化,比纯工程模型具有优势。接下来的方法提供了一种基于长短期记忆(LSTM)网络的方法,可以在考虑所有已知的地面变量的情况下预测压裂作业中的BHP和温度。地面泵送数据包括在每个阶段捕获的实时数据,如地面处理压力、流体泵送速率和支撑剂速率。对响应变量(如BHP)的准确预测非常重要,因为它为水力压裂和基质酸化等几种井处理应用的决策提供了基础,以确保成功。目前可用的建模方法的局限性包括低分辨率BHP预测,以及无法正确捕捉BHP/温度时间序列与其他变量(包括地面压力、流量和支撑剂用量)之间的非线性影响。此外,目前的方法还受到流体性质模型精度不足的限制;重要地下变量的响应在很大程度上取决于模拟的流体性质。本文提出的新模型使用深度学习神经网络模型,根据地面压力、流量和支撑剂用量来预测BHP和温度。这是第一次尝试在泵送阶段实时预测响应变量,如BHP和温度,使用记忆保留递归神经网络(RNN)变体,如LSTM。结果表明,LSTM可以很好地模拟水力压裂过程中的BHP和温度。得到的BHP和温度预测的相对误差在5%以内。目前对BHP的建模可以用于实时降压分析,从而提供井眼和油藏地下状况的准确表示。本文描述的新方法避免了对现有方法复杂物理特性的管理;它在整个泵送阶段提供了一个强大、稳定和准确的数值解决方案。本文所描述的方法被扩展到管理降压分析,使用表面测量的变量来预测射孔和扭曲摩擦。
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