--> ABSTRACT: Seismic Attribute Calibration Using Neural Networks, by ; #91020 (1995).
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Previous HitSeismicNext Hit Previous HitAttributeNext Hit Calibration Using Neural Networks

David H. Johnson

Neural networks are used to predict sand percent from Previous HitseismicNext Hit attributes for several intervals in a Cretaceous basin. Neural networks are hightly simplified computer models of biological neural systems and have found applications in a number of areas including pattern recognition, classification, and signal processing. These networks are not programmed but rather are trained by repeated presentation of input data (Previous HitseismicNext Hit attributes extracted at well locations) and the corresponding desired output (sand percent measured in the wells). In this context of Previous HitseismicNext Hit Previous HitattributeNext Hit analysis, training a network is equivalent to a calibration.

Nineteen Previous HitseismicNext Hit attributes related to reflection continuity and geometry, amplitude, and frequency are extracted from the Previous HitseismicNext Hit data. The neural network calibration of these attributes to sand percent derived at 11 well locations shows that, in general, this rock property can be estimated away from well control to within the well measurement accuracy using Previous HitseismicNext Hit data. Such a neural network approach should be considered for Previous HitseismicNext Hit Previous HitattributeTop calibration if there are a large number of attributes to analyze and where the correlations between individual attributes and the desired rock properties is weak.

AAPG Search and Discovery Article #91020©1995 AAPG Annual Convention, Houston, Texas, May 5-8, 1995