Seismic activity prediction using computational intelligence techniques in northern Pakistan
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Title
Seismic activity prediction using computational intelligence techniques in northern Pakistan
Authors
Keywords
Earthquake prediction, Computational intelligence, Seismic activity, Seismic precursors
Journal
Acta Geophysica
Volume 65, Issue 5, Pages 919-930
Publisher
Springer Nature
Online
2017-09-14
DOI
10.1007/s11600-017-0082-1
References
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Related references
Note: Only part of the references are listed.- Radon as an earthquake precursor in and around northern Pakistan: A case study
- (2017) Adnan Barkat et al. GEOCHEMICAL JOURNAL
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- (2013) A. Morales-Esteban et al. TECTONOPHYSICS
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- Stress field evolution in the northwest Himalayan syntaxis, northern Pakistan
- (2008) A. Pêcher et al. TECTONICS
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