Application of Machine Learning to Estimate Sonic Data for Seismic Well Ties, Bongkot Field, Thailand

N. Sukkee, T. Ketmalee, Nattapon Jalernsuk, Renaud Lemaire, P. Bandyopadhyay
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Abstract

Seismic well tie is a critical process to verify the time-depth relationship of a well. This process requires density and sonic transit time data. However, sonic logs are usually not acquired due to cost saving, unfavorable well path, or other operational issues. Attempts to generate synthetic logs by Gardner equation, porosity correlation, or depth correlation did not provide the required accuracy. Therefore, the goal of our project was to generate synthetic sonic logs using machine learning technique for seismic well ties. This paper will compare the different methods tested, compare the results and lists the advantages of using Machine Learning. This approach uses machine learning technique to create synthetic sonic logs. The machine learning model is trained to predict sonic log from other relevant logs. The model representativeness is confirmed by blind tests, which consists of two steps. The first step compares the synthetic sonic logs to the actual sonic logs. In the second step, four synthetic seismograms are generated from actual sonic, machine learning synthetic sonic, Gardner predicted sonic, and averaged constant sonic. The seismic well ties are compared between those four synthetic seismograms. Once the machine learning synthetic and actual logs show similar results, the model is deemed good and can be applied on wells that do not have sonic logs. The synthetic seismograms are then generated using synthetic sonic logs for all the wells that do not have actual sonic logs. The use of synthetic sonic logs gives us the ability to Generate synthetic seismogram to tie wells that do not have sonic dataReduce the number sonic data acquisition, saving time and moneyReduce the risk of long logging string getting stuck in the hole that would requires fishing operations and its associated cost.
机器学习在泰国Bongkot油田地震井系声波数据估计中的应用
地震井算是验证井的时间-深度关系的关键过程。这个过程需要密度和声波传输时间数据。然而,由于节省成本、不利的井眼轨迹或其他操作问题,通常不会获取声波测井数据。通过Gardner方程、孔隙度相关性或深度相关性生成合成测井曲线的尝试无法提供所需的精度。因此,我们项目的目标是利用机器学习技术生成地震井的合成声波测井。本文将比较不同的测试方法,比较结果并列出使用机器学习的优点。这种方法使用机器学习技术来创建合成声波测井。机器学习模型经过训练,可以从其他相关日志中预测声波日志。通过盲测验证模型的代表性,盲测分为两个步骤。第一步是将合成声波测井与实际声波测井进行比较。在第二步中,由实际声波、机器学习合成声波、Gardner预测声波和平均恒定声波生成四个合成地震图。比较了四种合成地震图的地震井连。一旦机器学习合成测井曲线和实际测井曲线显示出相似的结果,该模型就被认为是好的,可以应用于没有声波测井曲线的井。然后,对所有没有实际声波测井的井,使用合成声波测井生成合成地震图。使用合成声波测井,我们能够生成合成地震图来连接没有声波数据的井,减少了声波数据采集的次数,节省了时间和金钱,降低了长测井管柱卡在井眼中的风险,减少了打捞作业的风险,降低了相关成本。
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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