Sea‐ice loss accelerates carbon cycling and enhances seasonal extremes of acidification in the Arctic Chukchi Sea

Author:

Zhang Yixing123,Wu Yingxu12ORCID,Cai Wei‐Jun4ORCID,Yi Xiangqi1,Gao Xiang1,Bi Haibo5,Zhuang Yanpei1,Chen Liqi12,Qi Di12

Affiliation:

1. Polar and Marine Research Institute Jimei University Xiamen China

2. Key Laboratory of Global Change and Marine‐Atmospheric Chemistry of Ministry of Natural Resources (MNR), Third Institute of Oceanography, MNR Xiamen China

3. School of Oceanography Shanghai Jiao Tong University Shanghai China

4. School of Marine Science and Policy University of Delaware Newark Delaware USA

5. Key Laboratory of Marine Geology and Environment, Institute of Oceanology, Chinese Academy of Sciences Qingdao China

Abstract

AbstractThe Chukchi Sea shelf (CSS) is a highly productive region in the Arctic Ocean and it is highly efficient for absorbing atmospheric carbon dioxide and exporting and retaining carbon in the deep sea. However, with global warming, the carbon retention time in CSS may decrease, leading to less efficient carbon export. Here, we investigate the seasonal variability of carbonate chemistry in CSS using three sets of late‐ vs. early‐summer reoccupations of the same transect. Our findings demonstrate substantially increased and rapid degradation of biologically produced organic matter and therefore acidification over time in the southern CSS due to earlier sea‐ice retreat, resulting in significantly shorter carbon retention time. In sharp contrast, no increased degradation has been observed in the northern CSS where photosynthesis has just commenced. In the future, climate change would further diminish the carbon export capacity and exacerbate seasonal acidification not only within CSS but also across other polar coastal oceans.

Funder

National Key Research and Development Program of China

National Natural Science Foundation of China

Natural Science Foundation of Fujian Province

Publisher

Wiley

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