Published May 11, 2026
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TUPROQ SHO'RLANISHINI MODELLASHTIRISH UCHUN KO'P MANBALI GEOMA'LUMOTLAR ASOSIDA BIRLASHTIRISH METODIKASI
Authors/Creators
- 1. Abu Rayhon Urganch davlat universiteti Dasturiy injiniring kafedrasi mudiri, Urganch, O'zbekiston
- 2. Muhammad al-Xorazmiy nomidagi Toshkent axborot texnonogiyalari universiteti doktoranti, Toshkent, O'zbekiston
- 3. Urganch RANCH texnologiya universiteti magistranti, Urganch, O'zbekiston
Description
Ushbu maqolada tuproq sho'rlanishini modellashtirish uchun ko'p manbali geoma'lumotlarni birlashtirish metodikasi bayon etilgan. Tadqiqotda dala va laboratoriya ma'lumotlari, Sentinel-2 MSI tasvirlari, spektral indekslar hamda yer osti suvi sathi va sho'rligi kabi gidrogeologik omillar yagona tizimga integratsiya qilindi. Natijada sho'rlanishni regressiya, klassifikatsiya, monitoring va xaritalashda qo'llash mumkin bo'lgan analitik va raster datasetni shakllantirishning izchil bosqichlari taklif etildi.
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References
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