Inverse modeling of gravity field data due to finite vertical cylinder using modular neural network and least-squares standard deviation method
Subject Areas :
Mineralogy
Ata Eshaghzadeh
1
,
Sanaz Seyedi Sahebari
2
,
Roghayeh Alsadat Kalantari
3
1 - Postgraduate of geophysics, Zima company, Chaloos, Iran
2 - Roshdiyeh Higher Education Institute, Tabriz, Iran
3 - Postgraduate of geophysics, Zima company, Chaloos, Iran
Received: 2018-02-04
Accepted : 2019-05-17
Published : 2019-10-01
Keywords:
References:
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