Detection of deep reservoir via various frequencies in CSEM survey

M. R. Jamal, H. M. Zaid, N. Yahya, A. Shafie
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Abstract

A new exploration technology, called Seabed Logging (SBL) method has been developed to detect the location of hydrocarbon beneath seabed using Electromagnetic (EM) wave. Although this method has been able to detect reservoir up to 1000 m deep, it is less effective on the detection of deeper reservoir. This paper discusses the effectiveness of SBL method for the detection of deep hydrocarbon reservoir using various frequencies of EM wave via Computer Simulation Technology (CST) software. Simulation using CST software was conducted to determine the Magnitude of EM wave Versus Offset (MVO) for various depth of target and various EM frequencies. The simulation result shows that less effective results were shown in deep target when high frequency EM was used due to the attenuation of the waves as it reflected from the target. It was observed that while high frequency EM is able to detect shallow reservoirs, low frequency EM is more effective for deeper targets beneath the seabed.
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CSEM中不同频率的深层储层探测
海底测井(SBL)是一种利用电磁波探测海底油气位置的新勘探技术。尽管该方法能够探测深度达1000 m的储层,但在探测更深的储层时效果较差。本文通过计算机模拟技术(CST)软件,讨论了SBL方法在利用不同频率的电磁波探测深层油气藏中的有效性。利用CST软件进行了仿真,确定了不同目标深度和不同EM频率下的电磁波相对偏移量(MVO)大小。仿真结果表明,在深部目标中使用高频电磁时,由于目标反射波的衰减,效果较差。据观察,高频电磁能够探测浅层储层,而低频电磁对于海底深处的目标更有效。
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