Abstract
Истощение водных ресурсов Приаралья вследствие усыхания Аральского моря представляет собой одну из наиболее острых экологических проблем Центральной Азии. В условиях климатических изменений и сокращения водного стока эффективный мониторинг водных объектов становится жизненно важным для устойчивого развития региона.
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