--> A Comparison of Popular Neural Network Facies Classification Schemes
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A Comparison of Popular Previous HitNeuralNext Hit Network Facies Classification Schemes

Abstract

There are two learning Previous HitnetworksNext Hit commonly used for seismic facies classification: unsupervised and supervised Previous HitneuralNext Hit Previous HitnetworksNext Hit. While unsupervised Previous HitneuralNext Hit Previous HitnetworksNext Hit have been proven effective processes in macro- and meso-scale depositional facies characterizations, published results from supervised Previous HitneuralNext Hit Previous HitnetworksNext Hit have more often demonstrated effective reservoir-scale characterization studies, using Previous HitneuralNext Hit network mapping rather than Previous HitneuralNext Hit network classification methods. Previous HitNeuralNext Hit Previous HitnetworksNext Hit are sophisticated techniques that reduce data dimensionality and assist in seismic interpretation for exploration, exploitation and production projects. In essence, Previous HitneuralNext Hit Previous HitnetworksNext Hit for seismic interpretation map multiple seismic attributes to an output attribute or attributes, that incorporate combined facets of the input data sets that yield a more accurate interpretation of the subsurface. Selecting an appropriate Previous HitneuralNext Hit network is a crucial to maximize interpretation benefits, yielding an accurate representation of the subsurface, such that it can be used meaningfully to effectively support exploration and production efforts. A comparison of these two classification techniques is performed using Oligocene Catahoula oil-bearing sands overlying a shallow salt structure along the Gulf Coast, where well control is abundant, and used to ground-truth the seismic classifications of shale, brine-sands and oil sand extent and thickness. Extraction of the seismic facies traces at various wells within the 3D volume permits direct comparison of the two techniques with known geology, permitting an unbiased evaluation, and inferring the advantages of supervised Previous HitneuralNext Hit Previous HitnetworksTop for the classification of pertinent geologies. The advantages of the supervised network are further demonstrated by horizon and stratal slices that properly identifying productive fault blocks while minimizing false positives of single seismic attributes.