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Abstract

Summary

The research examines the water balance of the Dniester River Basin using Google Earth Engine (GEE) to assess the impacts of recent droughts on water availability. Water distribution and consumption across the basin have been quantified by integrating satellite-derived precipitation and evapotranspiration data. This research is the first to apply GEE to this region, offering novel insights into water resource dynamics. The findings will support sustainable water management strategies and enhance understanding of hydrological responses to climate variability.

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/content/papers/10.3997/2214-4609.2025510109
2025-04-14
2026-02-11
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