Sonic Well-Log Imputation Through Machine-Learning-Based Uncertainty Models

Eduardo Maldonado-Cruz, J. Foster, M. Pyrcz
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Abstract

Sonic well logs provide critical information to calibrate seismic data and support geomechanical characterization. Advanced subsurface data analytics and machine learning enable new methods and workflows for property estimation, regression, and classification for geoscience and subsurface engineering applications. However, current applications for imputation of well-logging values rely only on model accuracy and low error predictions. T raditional model validation techniques are not enough to validate models and account for the substantial uncertainty in the subsurface. Well-logging imputation estimates and their associated uncertainty models are essential to the field development planning and decision-making workflows, such as reservoir modeling, volumetric resource assessment, predrill prediction with uncertainty, remaining resource mapping, and production allocation. When performing subsurface feature imputation with machine learning, we must expand our machine-learning model training and complexity tuning workflows to check the entire uncertainty model to ensure uncertainty distributions are precise and accurate. We propose a workflow that integrates the goodness metric to calculate accurate and precise uncertainty models of sonic well-log predictions based on ensembles of the machine-learning estimates. Our workflow combines model evaluation and visualization of the estimates and the uncertainty model with respect to measured depth. Our proposed method provides intuitive diagnostics and metrics to evaluate estimation accuracy and uncertainty model goodness.
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基于机器学习的不确定性模型的声波测井输入
声波测井为校准地震数据和支持地质力学表征提供了关键信息。先进的地下数据分析和机器学习为地球科学和地下工程应用的属性估计、回归和分类提供了新的方法和工作流程。然而,目前的测井值推算应用仅依赖于模型精度和低误差预测。传统的模型验证技术不足以验证模型并解释地下的大量不确定性。测井估算及其相关的不确定性模型对于油田开发规划和决策工作流程至关重要,例如储层建模、体积资源评估、不确定性钻前预测、剩余资源映射和产量分配。在使用机器学习进行地下特征插值时,我们必须扩展机器学习模型训练和复杂性调优工作流程,以检查整个不确定性模型,以确保不确定性分布的精确和准确。我们提出了一个集成了优度度量的工作流程,以计算基于机器学习估计集合的声波测井预测的准确和精确的不确定性模型。我们的工作流程结合了模型评估和估计的可视化以及关于测量深度的不确定性模型。我们提出的方法提供了直观的诊断和度量来评估估计精度和不确定性模型的良好性。
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