成熟油田薄层低电阻率储层表征

S. Rajput, I. Abdullah, A. Roy, Aizuddin Khalid, C. Onn, A. Khalil
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引用次数: 0

摘要

低电阻率和低对比储层(LRLC)产层由层状薄层组成,含油气聚集层被非储层包围,表明缺乏电阻率对比。由于垂向和横向分辨率较低,这些产油层很难在地震和测井尺度上进行区分。传统上,LRLC层的深部电阻率测井读数为0.5 ~ 5 ω -m。低对比产层主要发生在地层水较新鲜或矿化度较低时,导致油层和水层的电阻率对比非常小。LRLC油藏面临的主要挑战包括油气层段的识别、表征和评价,通常由于缺乏油气层和水层之间的电阻率对比而被掩盖。电阻率产层的识别和表征对于成熟资产的再开发、提高采收率至关重要。本文研究了棕地低电阻率含油气薄层储层的特征。为了释放马来西亚Sarawak近海LRLC油砂的潜在潜力,有效整合地下学科,包括岩石物理学、地质学和地震分析的定量衍生工具至关重要。本研究涵盖了位于马来西亚沙捞越近海较低海岸平原的海上油田低对比储层的地质视角。通过采用整体和多学科的方法,提高了对地质、岩石物理和地球物理参数的理解。这包括岩心、测井曲线、岩石物理模型参数、地层、沉积和岩相信息以及随机反演导数的整合。声阻抗显示了产层和非产层之间更广泛的相变化。量化了储层岩石物理参数的不确定性,建立了储层表征框架。随机反演得到的p阻抗和Vp/Vs比值用于预测LRLC储层的流体和相概率(Rajput S., 2014),然后进一步将其与地层信息相结合。研究结果为建立LRLC产区和非产区模拟物提供了有效途径。流体和相概率导数驱动的表面属性分析是一种地震方法,可以潜在地帮助指示LRLC储层连续性相对较好或较差的区域。已确定的LRLC储层已被证明具有商业质量,多年来已将石油产量提高了数十万桶,目前正在生产。包括AI和Vp/Vs在内的岩石物理模型参数对LRLC产层非常敏感,它们与图像测井、岩相和地震反演的有效结合减少了充填钻井方案的不确定性。为了评估石油和天然气,需要对LRLC发生的可能性进行地质了解。详细的地质特征在高分辨率成像测井中得到清晰的解析。通过综合低伽马、低阻抗和低电阻率的信息,可以识别出主要储层中的低电阻率产层。本文的研究结果显示了综合方法的价值,并改进了从随机反演到储层模型的储层描述。
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Characterizing Thinly-Bedded Low Resistivity Reservoirs in Mature Fields
Low electrical resistivity and low contrast reservoirs (LRLC) pay zones are composed of thinly-bedded laminated layers containing hydrocarbon accumulations surrounded by non-reservoir layers indicating lack of resistivity contrast. These pay zones are difficult to be distinguished at seismic and log scale due to lower vertical and lateral resolution. Traditionally, deep-resistivity logs in LRLC zones read 0.5 to 5 ohm-m. Low contrast pay zone occurs mainly when the formation waters are fresh or having low salinity resulting in a very little resistivity contrast between oil and water zones. Major challenges imposed in LRLC reservoirs include identification, characterization, and evaluation of the hydrocarbon interval, which is usually masked by the lack of resistivity contrast between the hydrocarbon and water zones. The identification and characterization of the lowdown on resistivity pay is essential for the re-development of mature assets for improved oil recovery. This paper deals with the characterization of low resistivity hydrocarbon-bearing thinly-bedded reservoirs from a brownfield. To unlock the hidden potential of LRLC pay sands in the offshore Sarawak Malaysia, the effective integration of subsurface disciplines including petrophysics, geology and quantitative derivatives from the seismic analysis is vital. This study covers the geological perspective of low contrast reservoirs from an offshore oil field deposited in lower coastal plain settings located within offshore Sarawak Malaysia. An improved understanding of the geological, petrophysical and geophysical parameters was achieved by adopting a holistic and multidisciplinary approach. This includes the integration of core, logs, rock physics modeled parameters, stratigraphic, depositional and lithofacies information along with stochastic inversion derivatives. Acoustic Impedance shows the facies changes in broader terms between producing and non-producing zone. The paper quantifies rock physics parameter uncertainties for LRLC pay zones and establishes a framework for LRLC reservoir characterization. Stochastic inversion derived P-Impedance and Vp/Vs ratio are used to predict fluid and facies probabilities (Rajput S., 2014) for LRLC reservoirs, which then further integrated with stratigraphic information. The results offered an effective way of establishing analogs of producing and non-producing LRLC zones. Analysis of fluid and facies probabilities derivatives driven surface attributes is a way seismic can potentially contribute to indicating areas of relatively better or worse LRLC reservoir continuity. Identified LRLC reservoirs proved to be of commercial-quality and increased oil production to the extent of several hundred thousands of barrels over the years and currently producing. Rock physics modeled parameters including AI and Vp/Vs are sensitive to LRLC pay zones and their effective integration with image logs, lithofacies, and seismic inversion lead to reduce uncertainties in infill drilling programs. Geological understanding of the possibility of LRLC occurrences is required to assess oil and gas bypassed oil. Detailed geological features are clearly resolved in high-definition image logs. Low resistivity pay zones present in the main reservoir intervals can be identified by integrating the information from low gamma ray, low impedance, and low resistivity zones collectively. The results of this study show the value of integrated approaches and improvements in reservoir description from stochastic inversion into reservoir models.
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