Subsidence risk zoning in Varamin County based on effective criteria using TOPSIS and VIKOR techniques
Subject Areas : EnvironmentAli Taheri 1 , Moslem Dehnavi Eelagh 2
1 - Master's student of Geospatial Information Systems, School of Surveying Engineering and Geospatial Information College of Engineering, University of Tehran
2 - PhD student of Geospatial Information Systems, School of Surveying Engineering and Geospatial Information, College of Engineering, University of Tehran, Tehran, Iran
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Abstract :
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