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    المساهمون: This work was performed with the support of the project «Application of remote sensing technology and unmanned aerial vehicle to assess the change of wetland ecosystems» chaired by the Institute of Tropical Ecology, Joint Vietnam-Russia Tropical Science and Technology Research Center.

    المصدر: GEOGRAPHY, ENVIRONMENT, SUSTAINABILITY; Vol 16, No 4 (2023); 14-25 ; 2542-1565 ; 2071-9388

    وصف الملف: application/pdf

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