--> Data Mining Techniques for Segmentation Analysis of Seismic Data, by Daniel R.S. Moraes, Rogério P. Espíndola, Márcia K. Karam, Alexandre G. Evsukoff, and Nelson F. F. Ebecken; #90052 (2006)
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Previous HitDataNext Hit Mining Techniques for Segmentation Analysis of Previous HitSeismicNext Hit Previous HitDataNext Hit

Daniel R.S. Moraes, Rogério P. Espíndola, Márcia K. Karam, Alexandre G. Evsukoff, and Nelson F. F. Ebecken
Federal University of Rio de Janeiro, Rio de Janeiro, Brazil

Increasing oil and gas production is crucial for the Brazilian development. In order to overcome the growing demand, it is necessary to reduce the exploration risks and costs, as well as the time necessary for the development of new ventures. The complexity of deep water exploration and exploitation has been challenging scientists and engineers to find new and efficient computer-based tools that bring together technology's state-of-the art. Previous HitInterpretationNext Hit of Previous HitseismicNext Hit Previous HitdataNext Hit has played an important role in exploration phase. Usually there exists no a priori information about the geological structure and performing a systematic analysis of all the Previous HitseismicNext Hit Previous HitdataNext Hit is time consuming. Recent technologies of Previous HitdataNext Hit mining have opened a new frontier for oil & gas exploration, providing meaningful information at low cost, allowing experts to quickly scan through multiple volumes of Previous HitdataNext Hit and combine information to get the optimal view of any geological feature of interest. Previous HitDataNext Hit clustering methods are important tools in Previous HitdataNext Hit mining, since they enable the detection of hidden patterns not explicitly recorded in Previous HitdataNext Hit. Using clustering methods on Previous HitseismicNext Hit attributes Previous HitdataNext Hit, it is expected that different lithologies will present have different patterns that will enable the clustering algorithm to separate lithology patterns. In this work two clustering methods are compared based on clusters quality criteria: the Self Organizing Maps (SOM) neural networks and the Fuzzy C-Means (FCM) algorithm based on fuzzy sets theory. The analysis is performed over a 3D Previous HitseismicTop survey of the Namorado field located in the Campos Basin.