The correlation between GNSS-derived precipitable water vapor and sea surface temperature and its responses to El Niño–Southern Oscillation
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Li Li | Hong Yuan | Yingyan Cheng | Kefei Zhang | Suqin Wu | Xiaoming Wang | Zishen Li | Xiaoming Wang | Kefei Zhang | Xiaoming Wang | Yingyan Cheng | Suqin Wu | Zishen Li | Li Li | Xiaoming Wang | H. Yuan | Hong Yuan
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