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Look-ahead vertical seismic profiling inversion approach for density and compressional wave velocity in Bayesian framework

机译:贝叶斯框架中密度和压缩波速度的超前垂直地震剖面反演方法

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摘要

To reduce drilling uncertainties, zero-offset vertical seismic profiles can be inverted to quantify acoustic properties ahead of the bit. In this work, we propose an approach to invert vertical seismic profile corridor stacks in Bayesian framework for look-ahead prediction. The implemented approach helps to successfully predict density and compressional wave velocity using prior knowledge from drilled interval. Hence, this information can be used to monitor reservoir depth as well as quantifying high-pressure zones, which enables taking the correct decision during drilling. The inversion algorithm uses Gauss-Newton as an optimization tool, which requires the calculation of the sensitivity matrix of trace samples with respect to model parameters. Gauss-Newton has quadratic rate of convergence, which can speed up the inversion process. Moreover, geo-statistical analysis has been used to efficiently utilize prior information supplied to the inversion process. The algorithm has been tested on synthetic and field cases. For the field case, a zero-offset vertical seismic profile data taken from an offshore well were used as input to the inversion algorithm. Well logs acquired after drilling the prediction section was used to validate the inversion results. The results from the synthetic case applications were encouraging to accurately predict compressional wave velocity and density from just a constant prior model. The field case application shows the strength of our proposed approach in inverting vertical seismic profile data to obtain density and compressional wave velocity ahead of a bit with reasonable accuracy. Unlike the commonly used vertical seismic profile inversion approach for acoustic impedance using simple error to represent the prior covariance matrix, this work shows the importance of inverting for both density and compressional wave velocity using geo-statistical knowledge of density and compressional wave velocity from the drilled section to quantify the prior covariance matrix required during Bayesian inversion.
机译:为了减少钻探的不确定性,可以将零偏移垂直地震剖面反演以量化钻头之前的声学特性。在这项工作中,我们提出了一种在贝叶斯框架中反转垂直地震剖面走廊堆栈以进行超前预测的方法。所实施的方法有助于使用钻探间隔中的先验知识成功地预测密度和压缩波速度。因此,该信息可用于监视储层深度以及量化高压区域,从而可以在钻井过程中做出正确的决定。反演算法将高斯-牛顿算法用作优化工具,需要计算痕量样品相对于模型参数的敏感度矩阵。高斯-牛顿算法的收敛速度为二次方,可以加快反演过程。此外,地统计分析已被用来有效地利用提供给反演过程的先验信息。该算法已在综合案例和现场案例中进行了测试。对于现场案例,将从海上钻井中获取的零偏移垂直地震剖面数据用作反演算法的输入。钻完预测段后获得的测井资料用于验证反演结果。综合案例应用的结果令人鼓舞,它仅根据一个恒定的先验模型就可以准确地预测压缩波的速度和密度。现场案例显示了我们提出的方法在反转垂直地震剖面数据以获得合理精度之前获得密度和压缩波速度方面的优势。不同于常用的利用简单误差表示先前协方差矩阵的声阻抗垂直地震剖面反演方法,这项工作显示了利用钻探得到的密度和压缩波速度的地统计学知识对密度和压缩波速度进行反演的重要性。部分量化贝叶斯反演期间所需的先验协方差矩阵。

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