经验相关与人工神经网络估计声波剪切波时间的比较

Jassim Mohammed Al Said Naji, Ghassan H. Abdul-Majeed, Ali K. Alhuraishawy
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引用次数: 1

摘要

声波剪切波时间(SSW)对井筒不稳定性和出砂初期建模的影响很大。在任何油田,由于测量成本高,SSW并不适用于所有井。许多作者利用来自世界范围内选定领域的信息发展了经验相关性,用于SSW预测。最近,研究人员使用了不同的人工智能方法来估计SSW。本文利用Carroll、Freund和Brocher三个已有的经验相关来估计SSW,并建立了第四个新的经验相关。为了与经验相关结果进行比较,我们使用了另一项研究的人工神经网络(ANN)。该研究采用了与ANN研究相同的数据,其中包括来自伊拉克一口定向井的1922个SSW测点以及伽马射线、压缩声波、井径仪、中子测井、密度测井、深部电阻率、方位角、倾角和真垂深等9个参数。现有的三个经验相关性仅基于压缩声波时间(CSW)来预测SSW。与开发先前相关性的方法相同,利用SSW和CSW的所有测量数据点开发了第四个经验相关性。比较表明,利用人工神经网络预测SSW的效果较好,其R2为0.966,其他统计系数较低,其中Carroll、Freund、Brocher和develdfourth的相关系数R2分别为0.7826、0.7636、0.6764和0.8016,其他统计参数显示新开发的相关性较其他三个统计参数更好。在未来的SSW计算中,由于许多限制和目标SSW的准确性,使用人工神经网络或新开发的相关性与决策者相关。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Comparison of Estimation Sonic Shear Wave Time Using Empirical Correlations and Artificial Neural Network
Wellbore instability and sand production onset modeling are very affected by Sonic Shear Wave Time (SSW). In any field, SSW is not available for all wells due to the high cost of measuring. Many authors developed empirical correlations using information from selected worldwide fields for SSW prediction. Recently, researchers have used different Artificial Intelligence methods for estimating SSW. Three existing empirical correlations of Carroll, Freund, and Brocher are used to estimate SSW in this paper, while a fourth new empirical correlation is established. For comparing with the empirical correlation results, another study's Artificial Neural Network (ANN) was used. The same data that was adopted by the ANN study was used here where it is comprised of 1922 measured points of SSW and the other nine parameters of Gamma Ray, Compressional Sonic, Caliper, Neutron Log, Density Log, Deep Resistivity, Azimuth Angle, Inclination Angle, and True Vertical Depth from one Iraqi directional well. Three existing empirical correlations are based only on Compressional Sonic Wave Time (CSW) for predicting SSW. In the same way of developing previous correlations, a fourth empirical correlation was developed by using all measured data points of SSW and CSW. A comparison demonstrated that utilizing ANN was better for SSW predicting with a higher R2 equal to 0.966 and lower other statistical coefficients than utilizing four empirical correlations, where correlations of Carroll, Freund, Brocher, and developed fourth had R2 equal to 0.7826, 0.7636, 0.6764, and 0.8016, respectively, with other statistical parameters that show the new developed correlation best than the other three existing. The use of ANN or new developed correlation in future SSW calculations is relevant to decision makers due to a number of limitations and target SSW accuracy.
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