| Citation: | GUO Huadong, DOU Changyong, JIANG Nijun, TANG Yunwei. Recent Advances of the SDGSAT-1 for Supporting Global SDG Monitoring and Evaluation. Chinese Journal of Space Science, 2026, 46(4): 1-9 doi: 10.11728/cjss2026.04.2026-yg11 |
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