Automatic Depth Shifting by Identifying and Matching Events on Well Logs Chicheng Xu

Chicheng Xu, Lei Fu, Tao Lin, Weichang Li, Yaser Alzayer, Zainab Al Ibrahim
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Abstract

Depth matching or depth shifting between well logs acquired from different runs or between core scans and well logs is a critical data quality control task to ensure subsequent accurate petrophysical interpretation and modeling. Conventional depth-shifting workflow heavily relies on human expertise to manually match a series of peaks and troughs between log curves, which is often subjective, error-prone, and cumbersome. Therefore, it is necessary to establish an automatic depth-shifting workflow to perform this routine yet important task accurately in a consistent and efficient manner. We implemented an automatic workflow to emulate human expertise to identify important “events” such as peaks, troughs, and bed boundaries on log curves and then intelligently match the identified series of events between log curves with local maximum correlation criteria to generate a depth shift table. We applied the automatic workflow in a field case to shift the well log and core gamma ray and delivered a depth shift table comparable to manual depth matching. The final shifted log achieved a significantly enhanced correlation with the reference log. The events identifying and matching method presents a white-box solution that still follows the conventional petrophysical wisdom and allows more user interaction to fine-tune the results. The users have full control of the parameters for optimal results.
通过识别和匹配油井测井曲线上的事件实现自动深度移动 Chicheng Xu
在不同运行采集的测井曲线之间或岩心扫描与测井曲线之间进行深度匹配或深度移动,是一项关键的数据质量控制任务,可确保随后进行准确的岩石物理解释和建模。传统的深度移动工作流程严重依赖于人类的专业技能来手动匹配测井曲线之间的一系列波峰和波谷,这往往是主观的、容易出错的,而且非常繁琐。因此,有必要建立一个自动深度移动工作流程,以一致、高效的方式准确执行这项常规而重要的任务。我们实施了一个自动工作流程,模仿人类的专业技能来识别重要的 "事件",如测井曲线上的峰值、谷值和床层边界,然后根据局部最大相关性标准智能匹配测井曲线之间识别出的一系列事件,生成深度偏移表。我们在一个油田案例中应用了自动工作流程,对测井曲线和岩心伽马射线进行了偏移,并生成了与人工深度匹配相当的深度偏移表。最终转换后的测井曲线与参考测井曲线的相关性明显增强。事件识别和匹配方法提供了一种白盒解决方案,它仍然遵循传统的岩石物理智慧,并允许用户进行更多互动,以对结果进行微调。用户可以完全控制参数,以获得最佳结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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