Please use this identifier to cite or link to this item: http://ir.futminna.edu.ng:8080/jspui/handle/123456789/4902
Title: Predicting the Time Lag between Primary and Secondary Waves for Earthquakes Using Artificial Neural Network
Authors: Inalegwu, C. O.
Muhammad, S.
Bima, M. E.
Folorunso, T. A.
Nuhu, B. K.
Keywords: Earthquake
Neural Network
Seismic Waves
Issue Date: 2016
Publisher: Big Data Analytics and Innovation conference
Citation: Ogbole C. I., Muhammed, S., Muhammad, E. B, Folorunso, T. A. and Nuhu, B. K. (2016) “Predicting the Time Lag between Primary and Secondary Waves for Earthquakes Using Artificial Neural Network” 4th Big Data Analytics and Innovation conference. PP. 165-175
Abstract: Seismic waves experienced prior to earthquake are the primary and the secondary waves. This paper investigates the time lag after the primary wave before the occurrence of the secondary (destructive) wave. The aim is to allow for necessary warning signals and safety steps to be taken prior to the impending disaster. Seismometer records from previous earthquakes were used in this investigation, putting into consideration the time lag between the primary and secondary waves. Other parameters considered include the magnitude, the epicenter distance, the seismic station‘s distance and the direction (in azimuths). Consequently, a prediction model was developed from the derived data using Artificial Neural Network (ANN). Data obtained from earthquakes of magnitude 6.0 to 7.0, based on Richter‘s scale, was used to train the ANN. The results therein showed high performance, with regression values greater than 0.9 and root mean squared errors of 0.1003-0.1148 for the most satisfactory architecture. The final results showed that the developed ANN model achieved a high performance, hence, adequate for this type of application.
URI: http://repository.futminna.edu.ng:8080/jspui/handle/123456789/4902
Appears in Collections:Mechatronics Engineering

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