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Integrated study of seismic and well data for porosity estimation using multi-attribute transforms: a case study of Boonsville Field, Fort Worth Basin, Texas, USA

机译:使用多属性变换对地震和井眼数据进行孔隙度评估的综合研究:以美国德克萨斯州沃思堡盆地Boonsville油田为例

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摘要

This study represents part of a research project focused on the Runaway Surface (MFS53), which is one of the reservoir levels in the Boonsville Field of the Fort Worth Basin in north central Texas, USA. This reservoir system is a subunit of the Bend Conglomerate section, which is a productive series of gas reservoirs deposited during the Middle Pennsylvanian fluvio-deltaic environment. This paper adopts an integrated approach to the seismic and well log data, using a combination of geostatistical and multi-attribute regression transform methods. The main focus of the research is to accurately predict the porosity distribution of the Runaway Formation away from the well locations. The input data consists of 32 wells (of which six wells contain porosity logs) together with a 3D seismic volume of Boonsville Field. The 3D seismic volume was inverted to obtain the acoustic impedance cube of the study area. Secondly, six multi-attribute data slices were extracted from both surface seismic and inverted acoustic impedance volumes. Subsequently, the porosity distribution of a selected reservoir level was estimated over the full extent of the study area using both acoustic impedance alone, and multi-attributes. Initially, the multi-attribute transform algorithm was trained using the well log data. The porosity at each well location was averaged over a particular depth zone of interest, and then compared with six extracted attribute slices averaged over the same depth window. In order to select the appropriate number of attributes for analysis, a cross-validation process was followed. The results of this cross-validation process and the training of the multi-attribute transforms were applied to the extracted attribute slices in order to produce the final porosity map of the Runaway Formation. The cross-plot between the seismically derived porosity and the well porosity values showed that accuracy of porosity prediction was increased from 75 %, when using a single attribute (acoustic impedance (AI)), to 90 % when multiple attributes are used. Additionally, when the actual well-derived porosities were overlaid onto the final predicted porosity maps from both techniques, a significant amount of mismatching was observed on the porosity map derived from AI alone, whereas the predicted porosity with the multi-attribute regression transform was a close match to the actual well-derived porosities. Beside this, the subsurface geology (i.e., karst collapse features) were not clear in the porosity map deduced from AI. Based on these cross-correlation results, the porosity map derived from multi-attribute regression transform was selected. The high level of correlation (90 %) with the actual and derived porosity indicates that the seismic multi-attributes were reliably transformed to the reservoir porosity log. The derived porosity map for the Runaway Formation indicates high lithological variation within the reservoir level with a porosity generally varying between 2 and 32 %. The western portion of the Runaway Formation is highly porous and can be considered for future exploration purposes. Although this study retains a certain level of uncertainty, which can be attributed to the well and seismic data used, due to data limitations, uncertainty analysis was not included in the current study, but this should be considered in future studies so as to improve the porosity prediction.
机译:这项研究是一项针对失控地表(MFS53)的研究项目的一部分,失控地表是美国德克萨斯州中北部Fort Fort Worth盆地Boonsville油田的储层之一。该储集层系统是本德砾岩段的一个子单元,这是在宾夕法尼亚州中部三角洲-三角洲环境中沉积的一系列高产气藏。本文采用地统计学和多属性回归变换方法相结合的方式,对地震和测井数据进行了综合处理。研究的主要重点是准确预测远离井眼位置的失控地层的孔隙度分布。输入数据包括32口井(其中6口包含孔隙度测井)以及Boonsville Field的3D地震体。反转3D地震体,以获得研究区域的声阻抗立方。其次,从地表地震和反声阻抗体中提取了六个多属性数据切片。随后,使用单独的声阻抗和多种属性来估计研究区域整个范围内选定储层水平的孔隙度分布。最初,使用测井数据训练了多属性变换算法。将每个井位置的孔隙度在特定的特定深度区域内取平均值,然后与在相同深度窗口取平均值的六个提取的属性切片进行比较。为了选择适当数量的属性进行分析,遵循了交叉验证过程。交叉验证过程的结果和多属性变换的训练被应用于提取的属性切片,以生成失控地层的最终孔隙度图。地震得出的孔隙度与井孔隙度值之间的交叉图表明,孔隙度预测的准确性从使用单个属性(声阻抗(AI))时的75%提高到使用多个属性时的90%。此外,当将两种方法的实际良好孔隙度叠加到最终预测的孔隙度图上时,在仅源自AI的孔隙度图上会观察到大量的不匹配,而使用多属性回归变换预测的孔隙度是与实际的孔隙率非常匹配。除此之外,从AI推导的孔隙度图中还不清楚地下地质(即岩溶塌陷特征)。基于这些互相关结果,选择了从多属性回归变换得到的孔隙度图。与实际孔隙度和导出孔隙度的高度相关性(90%)表明,地震多属性已可靠地转换为储层孔隙度测井。导出的失控地层孔隙度图表明储层内的岩性变化很大,孔隙度通常在2%至32%之间变化。失控组的西部是高度多孔的,可以考虑用于将来的勘探目的。尽管该研究保留了一定程度的不确定性,这可以归因于所使用的井和地震数据,但由于数据的局限性,目前的研究未包括不确定性分析,但是在未来的研究中应考虑这一点,以改善孔隙率预测。

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