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Comparing 5-Different Artificial Intelligence Techniques to Predict Z-factor

机译:比较5不同人工智能技术预测Z因子

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Gas compressibility factor plays an important role in reservoir engineering applications. A lot of techniques have been proposed to predict Z-factor. Standing-Katz (S-K) Z-factor chart is the most common and popular among them and is being used since 1941. Many correlations have been proposed after S-K chart to regenerate and increase its range in an accurate manner. Some of these models are direct models such as Papp Correlation, Shell Oil Company Correlation, and Beggs and Brill Correlation, others are indirect correlations such as Hall-Yarborough and Dranchuk-Abu-Kassem Correlation. In this study, five different artificial intelligence techniques are implemented to predict Z-factor. These techniques are neural network, radial basis function network, fuzzy logic, functional network, and support vector machine. To build and test these techniques, Standing-Katz charts data was used in which about 70% of the data was used for training and 30% for testing. Results from this work show that artificial intelligence techniques can predict Z-factor with low error such as Neural network, Radial basis function, Fuzzy logic, and Support vector machine. Neural network is the best technique among others in predicting Z-factor. This work will help in selecting the best artificial intelligence technique for predicting Z-factor.
机译:气体可压缩因子在水库工程应用中起着重要作用。已经提出了许多技术来预测Z因子。站立katz(s-k)z因子图是最常见的,并且自1941年以来正在使用。在S-K图表之后提出了许多相关性,以准确的方式再生和增加其范围。其中一些模型是PAPP相关,壳牌油公司相关性等的直接模型,并以BEGG和BRILL相关性,其他是间接相关性,如Hall-Yarborough和Dranchuk-Abu-Kassem相关性。在这项研究中,实施了五种不同的人工智能技术以预测Z因子。这些技术是神经网络,径向基函数网络,模糊逻辑,功能网络和支持向量机。为了构建和测试这些技术,使用Standal-Katz图表数据,其中约70%的数据用于培训和30%进行测试。这项工作的结果表明,人工智能技术可以预测具有低误差的Z因子,例如神经网络,径向基函数,模糊逻辑和支持向量机。神经网络是预测Z因子中的最佳技术。这项工作将有助于选择用于预测Z因子的最佳人工智能技术。

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