4.6 Article

Earthquake Prediction for the Duzce Province in the Marmara Region Using Artificial Intelligence

期刊

APPLIED SCIENCES-BASEL
卷 13, 期 15, 页码 -

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MDPI
DOI: 10.3390/app13158642

关键词

earthquake; recurrent neural network; prediction; artificial neural network

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An earthquake is a natural event that can cause significant damage, loss of life, and economic effects. This study focuses on earthquake prediction using the RNN method and incorporates the calculation of b and d values for improved performance. The importance of this study lies in its detection of earthquakes in the Marmara region, classification of seismic data, and generation of future predictions using artificial neural networks.
By definition, an earthquake is a naturally occurring event. This natural event may be a disaster that causes significant damage, loss of life, and other economic effects. The possibility of predicting a natural event such as an earthquake will minimize the negative effects mentioned above. In this study, data collection, processing, and data evaluation regarding earthquakes were carried out. Earthquake forecasting was performed using the RNN (recurrent neural network) method. This study was carried out using seismic data with a magnitude of 3.0 and above of the Duzce Province between 1990 and 2022. In order to increase the learning potential of the method, the b and d values of earthquakes were calculated. The detection of earthquakes within a specific time interval in the Marmara region of Turkey, the classification of earthquake-related seismic data using artificial neural networks, and the generation of predictions for the future highlight the importance of this study. Our results demonstrated that the prediction performance could be significantly improved by incorporating the b and d coefficients of earthquakes, as well as the data regarding the distance between the Moon and the Earth, along with the use of recurrent neural networks (RNNs).

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