深度学习辅助多普勒传感烃类井下流速估计

Klemens Katterbauer, A. Marsala, V. Schoepf, Linda Abbassi
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引用次数: 0

摘要

井的测井产烃潜力一直是提高油气勘探水平、实现油气储层产能最大化的前沿技术。由于基于机械旋丝器的传感器设备的重要性,在生产测井中,准确测量井下流体相流速是一个主要挑战。基于超声多普勒的传感器更坚固,可在电缆或随钻测井(LWD)条件下部署;然而,由于不同的传感物理,测量结果可能不等效。在这项工作中,我们提出了一个创新的深度学习框架,用于从基于多普勒的传感器速度估计旋转器相位速度。该框架在基准数据集上的测试显示出较强的估计结果。这使得无论是在常规的电缆生产测井技术(plt)中,还是在井在欠平衡状态下流动的随钻测井条件下,都可以实现实时自动解释框架的实施和流速估计。
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Deep Learning Assisted Doppler Sensing for Hydrocarbon Downhole Flow Velocity Estimation
Logging hydrocarbon production potential of wells has been at the forefront of enhancing oil and gas exploration and maximize productivity from oil and gas reservoirs. A major challenge is accurate downhole fluid phases flow velocity measurements in production logging due to the criticality of mechanical spinner-based sensor devices. Ultrasonic Doppler based sensors are more robust and deployable either in wireline or logging while drilling (LWD) conditions; however, due to the different sensing physics, the measurement results may not be equivalent. We present in this work an innovative deep learning framework to estimate spinner phase velocities from Doppler based sensor velocities. Tests of the framework on a benchmark dataset displayed strong estimation results. This allows for the real-time automatic interpretative framework implementation and flow velocity estimations either in conventional wireline production logging technologies (PLTs) and potentially also in LWD conditions, when the well is flowing in underbalanced conditions.
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