Robust Multi-Output Machine Learning Regression for Seismic Hazard Model Using Peak Crust Acceleration Case Study, Turkey, Iraq and Iran

被引:5
作者
Ahmed, Shaheen Mohammed Saleh [1 ]
Guneyli, Hakan [2 ]
机构
[1] Kirkuk Univ, Coll Sci, Dept Geol, Kirkuk 36001, Iraq
[2] Cukurova Univ, Fac Engn, Dept Geol, TR-01330 Balcali Adana, Turkiye
关键词
robust multi-output regressor; tomography; peak crust acceleration; NETCDF; machine learning; hazards; PREDICTION;
D O I
10.1007/s12583-022-1616-2
中图分类号
P [天文学、地球科学];
学科分类号
07 ;
摘要
This paper for the first time improved a Robust Multi-Output machine learning regression model for seismic hazard zoning of Turkey, Iraq and Iran using constructed 3-D shear-wave velocity (Vs), seismic tomography dataset model for the crust and uppermost mantle beneath the study area. The focus of this paper's opportunity is to develop a scientific framework leveraging machine learning that will ultimately provide the rapid and more complete characterization of earthquake properties. This work can be targeted at improving the seismic hazard zones system ability to detect and associate seismic signals, or at estimating other seismic characteristics (crust acceleration and crust energy) while traditionally, methods cannot monitor the earthquakes system. This work has derived some physical equations for extraction of many variables as inputs for our developed machine learning model based on a reliable understanding of the tomography data to physical variables by preparing huge dataset from different physical conditions of crust. We have extracted the velocity values of the shear waves from the original NETCDF file, which contains the S velocity values for every one km of the depths of the crust for the study area from one km down to the uppermost mantle beneath the Middle East. For the first time, this study calculated new seismic hazard parameter called Peak Crust Acceleration (PCA) for seismic hazard analysis by considering the transmitted initial seismic energy through the Earth's crust layers from hypocenter. All machine learning algorithms in this study wrote in python language using anaconda platform the open-source Individual Edition (Distribution).
引用
收藏
页码:1447 / 1464
页数:18
相关论文
共 33 条
[1]   Zagros orogeny: a subduction-dominated process [J].
Agard, P. ;
Omrani, J. ;
Jolivet, L. ;
Whitechurch, H. ;
Vrielynck, B. ;
Spakman, W. ;
Monie, P. ;
Meyer, B. ;
Wortel, R. .
GEOLOGICAL MAGAZINE, 2011, 148 (5-6) :692-725
[2]  
Aho T, 2009, J MACH LEARN RES, V373, P2055
[3]   Orogenic plateau growth: Expansion of the Turkish-Iranian Plateau across the Zagros fold-and-thrust belt [J].
Allen, M. B. ;
Saville, C. ;
Blanc, E. J-P. ;
Talebian, M. ;
Nissen, E. .
TECTONICS, 2013, 32 (02) :171-190
[4]  
Appice A, 2007, STEPWISE INDUCTION M, DOI [10.1007/978-3-540-74958-5_46, DOI 10.1007/978-3-540-74958-5_46]
[5]   Earthquake magnitude prediction in Hindukush region using machine learning techniques [J].
Asim, K. M. ;
Martinez-Alvarez, F. ;
Basit, A. ;
Iqbal, T. .
NATURAL HAZARDS, 2017, 85 (01) :471-486
[6]   TOWARDS A PALEOGEOGRAPHY AND TECTONIC EVOLUTION OF IRAN [J].
BERBERIAN, M ;
KING, GCP .
CANADIAN JOURNAL OF EARTH SCIENCES, 1981, 18 (02) :210-265
[7]   Real-time Finite Fault Rupture Detector (FinDer) for large earthquakes [J].
Boese, Maren ;
Heaton, Thomas H. ;
Hauksson, Egill .
GEOPHYSICAL JOURNAL INTERNATIONAL, 2012, 191 (02) :803-812
[8]   A survey on multi-output regression [J].
Borchani, Hanen ;
Varando, Gherardo ;
Bielza, Concha ;
Larranaga, Pedro .
WILEY INTERDISCIPLINARY REVIEWS-DATA MINING AND KNOWLEDGE DISCOVERY, 2015, 5 (05) :216-233
[9]   Predicting multivariate responses in multiple linear regression [J].
Breiman, L ;
Friedman, JH .
JOURNAL OF THE ROYAL STATISTICAL SOCIETY SERIES B-METHODOLOGICAL, 1997, 59 (01) :3-37
[10]   ADAPTIVE MULTIVARIATE RIDGE-REGRESSION [J].
BROWN, PJ ;
ZIDEK, JV .
ANNALS OF STATISTICS, 1980, 8 (01) :64-74