TOSHKENT VILOYATIDA JAR EROZIYASI XAVFI: DEM VA GIS TAHLILI
DOI:
https://doi.org/10.56292/SJFSU/vol31_iss6/a265Kalit so‘zlar:
jar eroziyasi, GIS, DEM, Weighted Overlay, qiyalik, oqim to‘planishi, yonbag‘ir ekspozitsiyasi,Toshkent viloyati.Annotatsiya
Maqolada Toshkent viloyatida jar eroziyasi xavfi GIS asosida baholanib, Weighted Overlay modeli natijalari Google Earth Pro’dan olingan jarlar inventari bilan solishtiriladi. DEMdan olingan qiyalik, oqim to‘planishi va ekspozitsiya 40–40–20 % vaznlar bilan indeksga birlashtirilib, hudud past, o‘rta va yuqori xavf zonalariga ajratiladi. Model “yuqori xavf” sinfi real jarliklarning 78–82 % qismini qamrab olib, eroziyaga qarshi choralarni rejalashtirish uchun ishonchli asos bo‘ladi.
Adabiyotlar
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Mualliflik huquqi (c) 2025 Scientific journal of the Fergana State University

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