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논문검색

Deep learning classifier for the number of layers in the subsurface structure

초록

영어

In this paper, we propose a deep learning classifier for estimating the number of layers in the Earth's structure. When installing a grounding system, knowledge of the subsurface in the area is absolutely necessary. The subsurface structure can be modeled by the earth parameters. Knowing the exact number of layers can significantly reduce the amount of computation to estimate these parameters. The classifier consists of a feedforward neural network. Apparent resistivity curves were used to train the deep learning classifier. The apparent resistivity at 20 equally spaced log points in each curve are used as the features for the input of the deep learning classifier. Apparent resistivity curve data sets are collected either by theoretical calculations or by Wenner's measurement method. Deep learning classifiers are coded by Keras, an open source neural network library written in Python. This model has been shown to converge with close to 100% accuracy.

목차

Abstract
1. Introduction
2. Wenner’s Test and Apparent Soil Resistivity
3. Deep learning Classifier for the number of layers
3. 1 Deep learning model for classifier
3. 2 Dataset
4. Simulation and Results
5. Conclusion
Acknowledgement
References

저자정보

  • Ho-Chan Kim Professor, Department of Electrical Engineering, Jeju National University, Korea
  • Min-Jae Kang Professor, Department of Electronic Engineering, Jeju National University, Korea

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