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Qualitative and quantitative comparison of geostatistical techniques of porosity prediction from the seismic and logging data: a case study from the Blackfoot Field, Alberta, Canada

机译:地震和伐木数据孔隙率预测地质统计技术的定性和定量比较 - 以加拿大艾伯塔省黑脚场的一个案例研究

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摘要

In present study, three recently developed geostatistical methods, single attribute analysis, multi-attribute analysis and probabilistic neural network algorithm have been used to predict porosity in inter well region for Blackfoot field, Alberta, Canada, an offshore oil field. These techniques make use of seismic attributes, generated by model based inversion and colored inversion techniques. The principle objective of the study is to find the suitable combination of seismic inversion and geostatistical techniques to predict porosity and identification of prospective zones in 3D seismic volume. The porosity estimated from these geostatistical approaches is corroborated with the well log porosity. The results suggest that all the three implemented geostatistical methods are efficient and reliable to predict the porosity but the multi-attribute and probabilistic neural network analysis provide more accurate and high resolution porosity sections. A low impedance (6000-8000m/sg/cc) and high porosity (>15%) zone is interpreted from inverted impedance and porosity sections respectively between 1060 and 1075ms time interval and is characterized as reservoir. The qualitative and quantitative results demonstrate that of all the employed geostatistical methods, the probabilistic neural network along with model based inversion is the most efficient method for predicting porosity in inter well region.
机译:在目前的研究中,三个最近开发的地统计方法,单个属性分析,多属性分析和概率神经网络算法已被用于预测黑脚场,加拿大艾伯塔省艾伯塔省的井区孔隙率。这些技术利用了基于模型的反转和彩色反转技术产生的地震属性。该研究的原理目的是找到地震反转和地统计技术的合适组合,以预测3D地震体积中潜在区域的孔隙率和识别。从这些地质统计方法估计的孔隙率与井数孔隙率有关。结果表明,所有三种实施的地统计方法都是有效可靠的,以预测孔隙度,但多属性和概率神经网络分析提供更准确和高分辨率的孔隙率部分。低阻抗(6000-8000m / g / cc)和高孔隙率(> 15%)区分别从分别在1060和1075ms的时间间隔之间分别解释为倒置阻抗和孔隙率部分,并被表征为储层。定性和定量结果表明,所有采用的地质统计方法,概率神经网络以及基于模型的反转是最有效的方法,用于预测阱区内孔隙率。

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