Unsupervised neural networks such as the Kohonen Self-Organizing Maps (SOM) have been widely used for searching natural clusters in multidimensional and massive data. One example where the data available for analysis can be extremely large is seismic interpretation for hydrocarbon exploration. In order to assist the interpreter in identifying characteristics of interest confined in the seismic data, the authors present a set of data attributes that can be used to train a SOM in such a way that zones of interest can be automatically identified or segmented, reducing time in the interpretation process. The authors show how to associate SOM to 2D color maps to visually identify the clustering structure of the input seismic data, and apply the ...
Time series clustering of GPS sensor data in order to identify meaningful geological features and ev...
Seismic interpretation is a fundamental process for hydrocarbon exploration. This activity comprises...
The following paper describes the application of self-organizing neural networks on the analysis and...
Interpretation of seismic reflection data routinely involves powerful multiple-central-processing-un...
Interpretation of seismic reflection data routinely involves powerful multiple-central-processing-un...
This work consists of three main parts. In chapter 1 the Self-Organizing Maps (SOMs), proposed by T....
This work improves the proposed (Carniel et al., 2009) use of Self-Organizing Maps (SOM: Kohonen, 19...
Modern acquisition of seismic data on receiver networks worldwide produces an increasing amount of c...
The computing techniques currently available for the seismic monitoring allow advanced analysis. Ho...
In seismology, when dealing with low signal-to-noise recordings, traditional event detection methods...
In seismology, when dealing with low signal-to-noise recordings, traditional event detection methods...
In seismology, when dealing with low signal-to-noise recordings, traditional event detection methods...
In seismology, when dealing with low signal-to-noise recordings, traditional event detection methods...
In seismology, when dealing with low signal-to-noise recordings, traditional event detection methods...
Unsupervised seismic facies analysis provides an effective way to estimate reservoir properties by c...
Time series clustering of GPS sensor data in order to identify meaningful geological features and ev...
Seismic interpretation is a fundamental process for hydrocarbon exploration. This activity comprises...
The following paper describes the application of self-organizing neural networks on the analysis and...
Interpretation of seismic reflection data routinely involves powerful multiple-central-processing-un...
Interpretation of seismic reflection data routinely involves powerful multiple-central-processing-un...
This work consists of three main parts. In chapter 1 the Self-Organizing Maps (SOMs), proposed by T....
This work improves the proposed (Carniel et al., 2009) use of Self-Organizing Maps (SOM: Kohonen, 19...
Modern acquisition of seismic data on receiver networks worldwide produces an increasing amount of c...
The computing techniques currently available for the seismic monitoring allow advanced analysis. Ho...
In seismology, when dealing with low signal-to-noise recordings, traditional event detection methods...
In seismology, when dealing with low signal-to-noise recordings, traditional event detection methods...
In seismology, when dealing with low signal-to-noise recordings, traditional event detection methods...
In seismology, when dealing with low signal-to-noise recordings, traditional event detection methods...
In seismology, when dealing with low signal-to-noise recordings, traditional event detection methods...
Unsupervised seismic facies analysis provides an effective way to estimate reservoir properties by c...
Time series clustering of GPS sensor data in order to identify meaningful geological features and ev...
Seismic interpretation is a fundamental process for hydrocarbon exploration. This activity comprises...
The following paper describes the application of self-organizing neural networks on the analysis and...