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Artificial Accelerograms to Estimate Damage of Dams by Using Failure Criteria

Scientia Iranica
doi 10.24200/sci.2018.50699.1824
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Abstract

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Date

December 4, 2018

Authors
Enrico ZaccheiJosé Luis Molina
Publisher

SciTech Solutions


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