--> Facies Classification Based on Well Logs by Using an Convolutional Neural Network
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Previous HitFaciesNext Hit Previous HitClassificationNext Hit Based on Well Logs by Previous HitUsingNext Hit an Convolutional Neural Network

Abstract

Previous HitFaciesNext Hit Previous HitclassificationNext Hit, assigning a rock type or class to specific rock samples on the basis of measured properties, is fundamental in geologic investigations. Core observation is the most widely used method to identify the lithofacies accurately, however accessing to cores is time and cost limit. Thus, fast and accurate Previous HitfaciesNext Hit Previous HitclassificationNext Hit is a significant step in reservoir characterization and reservoir simulation. Conventional statistical and Previous HitmachineNext Hit Previous HitlearningNext Hit approaches such as principal component analysis (PCA), artificial neural network (BPNN), and support vector Previous HitmachineNext Hit (SVM), have been used to identify lithofacies. However, the results of such a method by Previous HitusingNext Hit imbalanced dataset may not result in higher accuracy in lithofacies prediction. In this research, we introduce a deep Previous HitlearningNext Hit algorithm-convolutional neural network (CNN) to classify the complex lithofacies from Kansas and compare its performance to a few common Previous HitmachineNext Hit Previous HitlearningNext Hit algorithms. In order to train the CNN model, all of the feature vectors are transformed into geological feature images. CNN shows significantly high lithofacies Previous HitclassificationNext Hit accuracy compared to other algorithms, which indicate that CNN has a good performance on Previous HitfaciesNext Hit Previous HitclassificationTop and strong generalization ability.