Seismic Driven Machine Learning to Improve Precision and Accelerate Screening Shallow Gas Potentials in Tunu Shallow Gas Zone, Mahakam Delta, Indonesia

R. Herbet, M. I. Hibatullah, D. Restiadi, Cepi M.Adam, Andrean Satria, T. Rusady, M. Mordekhai, Khairul Ummah
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Abstract

Tunu Shallow Zone (TSZ) is one of producing zone in Tunu Field. Tunu Field is a giant gas field located in the present-day Mahakam Delta, East Kalimantan, Indonesia. The gas reservoirs are scattered along the Tunu Shallow Zone and correspond with fluvio-deltaic series and main lithologies are shale, sand and coal layes. The development of TSZ heavily relies on seismic to access and identify gas sand reservoirs as drilling targets. Anomaly seismic is correspond with the gas sand reservoirs, however with the conventional use of seismic that is difficult for differentiating the gas sands from the coal layers. We established Tunu reliable technology which is comprised four different analyses on stacks, CDP Gathers, AVA/AVO, and litho-seismic cube. We are hit high success rate in identifying gas but requires a lot of time to assess the prospect. But the challenge is to access more than 20, 000 shallow geobodies in time manner, faster and more efficient to fulfill our drilling sequences target and speed-up the development phase. Therefore, we are developing seismic driven supervised machine learning to fit learn geological Tunu characteristic to be gas reservoirs. Several machine learning algorithm has been tested and selected based on several criteria such as AVA/AVO, and amplitude of seismic. The algorithm used to learn behavior of seismic correspond with gas reservoir from data training then applied it to validation and blind dataset for evaluating final models. The final machine learning output is gas probability cube with precision of 70-80% precision from well drilled result in term of gas occurence. Furthermore, unsupervised machine learning has been used to extract potential prospecting targets as geobody targets. Initial test showed encouraging result to extract geobody targets in the shorter time compare with the conventional geomodeling. The final goals are optimizing our current workflow for screening shallow gas potentials, accelerate screening in the future well targets with more efficient, effective way and independent of subjectivity, allowing 2G (geologist and geophysicists) explore deeper and confident way when targeting next future shallow gas target. Usage of seismic driven machine learning for targeting shallow gas reservoir is one big step in the current oil and gas industry and in the same time opening more opportunity to maximize powerful machine learning in 4.0 industry era which is need accuracy, more precise, robust, faster and efficient.
地震驱动机器学习提高精度,加速印度尼西亚Mahakam三角洲Tunu浅层气区的浅层天然气潜力筛选
土努浅层是土努油田的主要生产带之一。Tunu气田是一个巨大的天然气田,位于今天的印度尼西亚东加里曼丹的Mahakam三角洲。气藏分布于土奴浅区,与河流三角洲系列相对应,主要岩性为页岩、砂岩和煤层。TSZ的开发在很大程度上依赖于地震来获取和识别天然气砂岩储层作为钻井目标。地震异常与含气砂岩储层相对应,但常规地震方法难以将含气砂岩与煤层区分开。我们建立了Tunu可靠的技术,该技术包括四种不同的堆栈分析、CDP收集分析、AVA/AVO分析和岩震立方体分析。我们在天然气识别方面取得了很高的成功率,但需要大量的时间来评估前景。但挑战在于如何及时、更快、更有效地获取超过2万个浅层地质体,以完成我们的钻井序列目标,加快开发阶段。因此,我们正在开发地震驱动的监督式机器学习来拟合学习图努气藏的地质特征。基于AVA/AVO和地震振幅等标准,对几种机器学习算法进行了测试和选择。该算法从数据训练中学习地震对应气藏的行为,然后将其应用于验证和盲数据集,对最终模型进行评价。最终的机器学习输出是天然气概率立方,根据天然气产率,其精度为70-80%。此外,利用无监督机器学习提取潜在找矿目标作为地质体目标。初步试验表明,与传统的地质建模方法相比,该方法在较短的时间内提取出了较好的地质体目标。最终目标是优化我们目前筛选浅层天然气潜力的工作流程,以更高效、更有效的方式和独立的主观性加速筛选未来的井目标,使2G(地质学家和地球物理学家)在寻找下一个未来浅层天然气目标时能够更深入、更自信地探索。利用地震驱动的机器学习来定位浅层气藏是当前油气行业迈出的一大步,同时也为工业4.0时代最大限度地发挥强大的机器学习提供了更多机会,这需要更准确、更精确、更稳健、更快、更高效。
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