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Keywords: testing data
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Proceedings Papers
Publisher: Society of Petroleum Engineers (SPE)
Paper presented at the SPE North Africa Technical Conference and Exhibition, September 14–16, 2015
Paper Number: SPE-175724-MS
... and the error was 3.8% for ANN, 4.5% for ANFIS, 4.3% for SVM, and 3% for DT for the tubing model. machine learning flow rate pressure drop neural network actual pressure drop Mohaghegh AAPE Artificial Intelligence correlation testing data flow line model low error SVM multiphase flow...
Proceedings Papers
Publisher: Society of Petroleum Engineers (SPE)
Paper presented at the SPE North Africa Technical Conference and Exhibition, September 14–16, 2015
Paper Number: SPE-175867-MS
... was the “Recovery Factor”. Testing both the simple and sophisticated networks showed prediction capabilities of 9.5% and 8.0% of actual recovery factor, respectively. recovery factor sophisticated ann artificial neural network Artificial Intelligence reserves evaluation testing data neural network...
Proceedings Papers
Publisher: Society of Petroleum Engineers (SPE)
Paper presented at the North Africa Technical Conference and Exhibition, February 20–22, 2012
Paper Number: SPE-150662-MS
... Expectations (ACE). The transformations are totally data-driven and do not assume any a priori functional form. The data set used in this study consists of training and testing data points. The testing points are used to predict outputs from inputs that are not included in the training process. To assure...