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Prediction of shear wave velocity using empirical correlations and artificial intelligence methods

机译:基于经验相关性和人工智能方法的剪切波速度预测

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Good understanding of mechanical properties of rock formations is essential during the development and production phases of a hydrocarbon reservoir. Conventionally, these properties are estimated from the petrophysical logs with compression and shear sonic data being the main input to the correlations. This is while in many cases the shear sonic data are not acquired during well logging, which may be for cost saving purposes. In this case, shear wave velocity is estimated using available empirical correlations or artificial intelligent methods proposed during the last few decades. In this paper, petrophysical logs corresponding to a well drilled in southern part of Iran were used to estimate the shear wave velocity using empirical correlations as well as two robust artificial intelligence methods knows as Support Vector Regression (SVR) and Back-Propagation Neural Network (BPNN). Although the results obtained by SVR seem to be reliable, the estimated values are not very precise and considering the importance of shear sonic data as the input into different models, this study suggests acquiring shear sonic data during well logging. It is important to note that the benefits of having reliable shear sonic data for estimation of rock formation mechanical properties will compensate the possible additional costs for acquiring a shear log.
机译:在油气储层的开发和生产阶段,对岩层力学性能的充分了解至关重要。通常,这些性质是从岩石物理测井中估算的,压缩和剪切声波数据是相关性的主要输入。而在许多情况下,在测井期间未获取剪切声波数据,这可能是出于节省成本的目的。在这种情况下,使用最近几十年提出的经验相关性或人工智能方法估算剪切波速度。在本文中,利用经验相关性以及两种强大的人工智能方法(即支持向量回归(SVR)和反向传播神经网络( BPNN)。尽管通过SVR获得的结果似乎是可靠的,但估计值并不十分精确,并且考虑到剪切声波数据作为输入不同模型的重要性,这项研究建议在测井期间获取剪切声波数据。重要的是要注意,拥有可靠的剪切声波数据来估计岩层力学性能的好处将补偿获取剪切测井曲线的可能额外费用。

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