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Application of Computational Intelligence in Generating Synthetic Reservoir Rock Mechanical Parameters for Building Geo-Models.

机译:计算智能在建筑地质模型产生合成储层岩石力学参数中的应用。

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Oil field Operations such as wellbore stability Management and variety of other activities in the upstream petroleum industry require geo-mechanical models for their analysis. Sometimes, the required subsurface measurements used to estimate rock parameters for building such models are unavailable. On this premise, past studies have offered variety of methods and investigative techniques such as empirical correlations, statistical analysis and numerical models to generate these data from available information. However, the complexity of the relationships that exists between the natural occurring variables make the aforementioned techniques limited. This work involves the application of Artificial Neural Networks (ANNs) to generating rock properties. A three-layer back-propagation neural network model was applied predicting pseudo-sonic data using conventional wireline log data as input. Four well data from a Niger-Delta field were used in this study, one for training, one for validating and the two others for generating and testing results. The network was trained with different sets of initial random weights and biases using various learning algorithms. Root mean square error (RMSE) and correlation coefficient (CC) were used as key performance indicators. This Neural-Network-Generated-Sonic-log was compared with those generated with existing correlations and statistical analysis. The results showed that the most influential input vectors with various configurations for predicting sonic log were Depth-Resistivity-Gamma ray-Density (with correlating coefficient between 0.7 and 0.9). The generated sonic was subsequently used to compute for other elastic properties needed to build mechanical earth model for evaluating the strength properties of drilled formations, hence optimise drilling performance. The models are useful in Minimizing well cost, as well as reducing Non Productive Time (NPT) caused by wellbore instability. This technique is particularly useful for mature fields, especially in situations where obtaining this well logs are usually not practicable.
机译:油田操作,如井筒稳定性管理和上游石油工业中其他活动的各种活动需要地地理机械模型进行分析。有时,用于估计用于建立这种模型的岩石参数的所需的地下测量是不可用的。在这个前提下,过去的研究提供了各种方法和调查技术,例如经验相关性,统计分析和数值模型,以从可用信息生成这些数据。然而,天然变量之间存在的关系的复杂性使得上述技术有限。这项工作涉及将人工神经网络(ANNS)应用于产生岩石属性。使用传统的电缆日志数据作为输入应用三层背部传播神经网络模型预测伪声学数据。本研究中使用了来自尼日尔Δ领域的四个井数据,一个用于训练,一个用于验证和两个其他用于产生和测试结果的训练。使用各种学习算法,用不同的初始随机权重和偏差训练网络培训。均均方误差(RMSE)和相关系数(CC)用作关键性能指标。将该神经网络生成的Sonic-Log与现有相关性和统计分析的统计分析进行了比较。结果表明,具有用于预测声波日志的各种配置的最有影响力的输入载体是深度电阻率-γ射线密度(相关系数之间为0.7和0.9)。随后使用产生的声音来计算用于构建用于评估钻孔地层的强度特性所需的用于构建机械地球模型所需的其他弹性特性,因此优化钻井性能。该模型可用于最小化井成本,以及减少由井眼不稳定引起的非生产时间(NPT)。这种技术对于成熟的领域特别有用,尤其是在获得这种井日志的情况下通常不可行的情况。

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