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Estimation of Rock Mechanical Parameters using Artificial Intelligence Tools

机译:人工智能工具估计岩石力学参数

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Good understanding of the mechanical behavior of reservoir rock is very important in reducing the problems related to wellbore stability, sand production and reservoir subsidence. To carry out any operation, a continuous profile of rock mechanical parameters is needed. Retrieving reservoir rock samples throughout the depth of the reservoir and performing laboratory tests are extremely expensive and time consuming. Therefore, these parameters are estimated from the sonic and compressional wave velocities obtained from well-logs. Parameters obtained from laboratory tests are termed as static parameters while those obtained from sonic logs are dynamic parameters. The former case represents closely the condition in the reservoir. Since the well-logs provide a continuous profile of parameters, they have to be calibrated with respect to the static parameters. This paper presents a rigorous empirical correlations based on the weights and biases of Artificial Neural Network to predict sonic logs (compressional and shear wave travel times), elastic parameters (static Young's modulus and Poisson's ratio) and failure parameter (Unconfined compressive strength).The testing of new correlations on real field data resulted in less error between actual and predicted values, suggesting that the proposed correlations are very robust and accurate, and can help geo-mechanical engineers to construct representative earth model.
机译:对水库岩石的力学行为的良好理解对于减少与井筒稳定性,砂生产和水库沉降有关的问题非常重要。为了进行任何操作,需要一种岩石机械参数的连续轮廓。在整个水库深度和执行实验室测试的储层岩石样本中检索水库岩石样本非常昂贵且耗时。因此,这些参数估计从良好的日志中获得的声波和压缩波速度。从实验室测试获得的参数称为静态参数,而从声波日志获得的那些是动态参数。前案例尤其是储存器中的条件。由于良好的日志提供了参数的连续轮廓,因此必须相对于静态参数校准它们。本文介绍了基于人工神经网络的重量和偏差的严格的经验相关性,以预测声波测井(压缩和剪切波行程时间),弹性参数(静态杨氏模量和泊松比)和故障参数(不包含狭窄的抗压强度)。该测试实地数据上的新相关性导致实际和预测值之间的误差较少,表明所提出的相关性是非常坚固和准确的,并且可以帮助地球机械工程师构建代表性地球模型。

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