In this paper, to separate regional-residual anomaly maps and to detect borders of buried geological bodies, we applied the Cellular Neural Network (CNN) approach to gravity and magnetic anomaly maps. CNN is a stochastic image processing technique, based optimization of templates, which imply relationships of neighborhood pixels in 2-Dimensional (2D) potential anomalies. Here, CNN performance in geophysics, tested by various synthetic examples and the results are compared to classical methods such as boundary analysis and second vertical derivatives. After we obtained satisfactory results in synthetic models, we applied CNN to Bouguer anomaly map of Konya-Beysehir Region, which has complex tectonic structure with various fault combinations....
The paper introduces a new methodology for real-time monitoring of active volcanoes, which is based ...
Determination of discontinuities in rock mass requires scan-line surveys performed in in-situ that c...
In this paper, a supervised algorithm, Mufti-Level Cellular Neural Network (ML-CNN) is introduced, d...
In this paper, to separate regional-residual anomaly maps and to detect borders of buried geological...
In this study, structural features in the Aegean Sea were investigated by application of Cellular Ne...
Anomaly analysis is used for various geophysics applications such as determination of geophysical st...
In this paper, a supervised algorithm for the evaluation of geophysical sites using a multi-level ce...
In this paper, multi-level genetic cellular neural networks (ML-GCNN) are applied to the geophysical...
All anomalies are important in the interpretation of gravity and magnetic data because they indicate...
Abstract: In this paper, a contamporary stochastic image processing novel, Genetic Cellular Neural N...
In this study De-noising of Magnetic anomaly maps from Archeological areas are applied Cellular Neur...
In recent years, geophysical approaches are being commonly used in modeling and pre-processing of ex...
In this paper, we introduce a new method called Forced Neural Network (FNN) to find the parameters o...
Gravity surveys in regional geophysical research can be used to estimate the depth of the sediment-b...
This paper presents a new approach for interpretation of residual gravity anomaly profiles, assuming...
The paper introduces a new methodology for real-time monitoring of active volcanoes, which is based ...
Determination of discontinuities in rock mass requires scan-line surveys performed in in-situ that c...
In this paper, a supervised algorithm, Mufti-Level Cellular Neural Network (ML-CNN) is introduced, d...
In this paper, to separate regional-residual anomaly maps and to detect borders of buried geological...
In this study, structural features in the Aegean Sea were investigated by application of Cellular Ne...
Anomaly analysis is used for various geophysics applications such as determination of geophysical st...
In this paper, a supervised algorithm for the evaluation of geophysical sites using a multi-level ce...
In this paper, multi-level genetic cellular neural networks (ML-GCNN) are applied to the geophysical...
All anomalies are important in the interpretation of gravity and magnetic data because they indicate...
Abstract: In this paper, a contamporary stochastic image processing novel, Genetic Cellular Neural N...
In this study De-noising of Magnetic anomaly maps from Archeological areas are applied Cellular Neur...
In recent years, geophysical approaches are being commonly used in modeling and pre-processing of ex...
In this paper, we introduce a new method called Forced Neural Network (FNN) to find the parameters o...
Gravity surveys in regional geophysical research can be used to estimate the depth of the sediment-b...
This paper presents a new approach for interpretation of residual gravity anomaly profiles, assuming...
The paper introduces a new methodology for real-time monitoring of active volcanoes, which is based ...
Determination of discontinuities in rock mass requires scan-line surveys performed in in-situ that c...
In this paper, a supervised algorithm, Mufti-Level Cellular Neural Network (ML-CNN) is introduced, d...