GAO Mengxu1, WANG Juanle1, 3, *, BAI Zhongqiang1, 2
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|||WU Xue, GAO Jungang, ZHANG Yili, LIU Linshan, ZHAO Zhilong, Basanta PAUDEL. Land Cover Status in the Koshi River Basin, Central Himalayas [J]. Journal of Resources and Ecology, 2017, 8(1): 10-19.|