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Maria Heinrich #9

@MHeini

Description

@MHeini

Author

  • Name: Maria Heinrich

  • Affiliation: FH Kufstein

Keywords

  • earthquake prediction
  • radon anomalies time series prediction
  • earthquake likelihood
  • natural science
  • machine learning

Abstract
Earthquake prediction is currently the most important task required for probability, hazard, risk mapping, and mitigation. In the past, various traditional and machine learning models have been used for risk assessment. It is unlikely that anyone will ever be able to accurately predict earthquakes, but with the advancement of deep learning algorithms, predictions can be made more accurately and with less distance to the natural disaster. Different machine learning approaches and deep learning models based on radon anomaly detection have been compared, opening the field for further developments

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earthquake prediction-maria-heinrich.pdf

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