基于条件去噪扩散概率模型的缺失井记录推算方法

SPE Journal Pub Date : 2024-02-01 DOI:10.2118/219452-pa
Han Meng, Botao Lin, Ruxin Zhang, Yan Jin
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引用次数: 0

摘要

测井记录包括详细记录钻井过程中遇到的不同深度地层地质特性的连续数据。它们是石油工业各种应用的基础。然而,获取的测井记录往往包含噪声和缺失数据,这妨碍了它们的实用性。为了解决这个问题,人们开发了许多方法来弥补测井记录中的缺失部分,从传统的确定性方法到现代的数据驱动模型,不一而足。尽管这些方法很有效,但也面临着一些挑战。首先,许多方法都是确定性的,无法捕捉和表示数据中固有的不确定性。此外,这些方法通常需要完整的测井数据作为输入,这给数据集的大量缺失带来了挑战。此外,大多数预测模型都是针对特定目标设计的,需要针对不同变量进行重新训练,这限制了它们处理具有各种缺失成分的数据集的通用性。这项工作提出使用基于条件去噪扩散概率模型(CDDPM)的生成模型来弥补测井记录中的缺失成分。条件去噪扩散概率模型有几个优点。其固有的概率性质使其能够捕捉数据中的不确定性,以概率分布而非单点估计的形式提供预测。这有助于工程师在实践中做出更稳健、更明智的决策,从而降低潜在风险。更重要的是,由于其生成性,该模型在训练时学习的是底层数据分布,而不是具体的输入-输出图,这使其能够同时补偿所有缺失数据。通过对真实世界数据集的实验,我们证明了我们提出的方法在性能上超越了传统的数据驱动技术。定性和定量评估都证实了该模型在补偿缺失成分方面的有效性。这项研究凸显了现代深度生成模型在石油工程应用中的潜力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Missing Well-Logs Imputation Method Based on Conditional Denoising Diffusion Probabilistic Models
Well logs comprise sequential data detailing the geological properties of formations at varying depths encountered during drilling. They are fundamental for various applications in the petroleum industry. However, acquired well logs often contain noise and missing data, which impedes their utility. To address this, numerous methods have been developed to impute missing components in well logs, ranging from traditional deterministic methods to modern data-driven models. Despite their effectiveness, these methods face several challenges. First, many are deterministic, lacking the ability to capture and represent the inherent uncertainties in the data. In addition, they often require complete logging data as input, which presents challenges in data sets with substantial missing data. Moreover, most are predictive models designed with specific targets that require retraining for different variables, which limits their versatility in handling data sets with diverse missing components. This work proposes the use of a generative model based on the conditional denoising diffusion probabilistic model (CDDPM) to impute missing components within well logs. The CDDPM offers several advantages. Its inherent probabilistic nature allows it to capture uncertainties in the data, providing predictions in the form of probability distributions rather than single-point estimates. This helps engineers make more robust and informed decisions in practice, thus mitigating potential risks. More importantly, due to its generative nature, the model is trained to learn the underlying data distribution, not the specific input-output map, which enables it to impute all missing data simultaneously. Through experiments on a real-world data set, we demonstrate that our proposed method surpasses conventional data-driven techniques in performance. Both qualitative and quantitative evaluations confirm the effectiveness of the model in imputing missing components. This research highlights the potential of modern deep generative models in petroleum engineering applications.
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