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Get Free AccessNational Center For Atmospheric Research
Understanding observed changes to the global water cycle is key to predicting future climate changes and their impacts. While many datasets document crucial variables such as precipitation, ocean salinity, runoff, and humidity, most are uncertain for determining long-term changes. In situ networks provide long time series over land, but are sparse in many regions, particularly the tropics. Satellite and reanalysis datasets provide global coverage, but their long-term stability is lacking. However, comparisons of changes among related variables can give insights into the robustness of observed changes. For example, ocean salinity, interpreted with an understanding of ocean processes, can help cross-validate precipitation. Observational evidence for human influences on the water cycle is emerging, but uncertainties resulting from internal variability and observational errors are too large to determine whether the observed and simulated changes are consistent. Improvements to the in situ and satellite observing networks that monitor the changing water cycle are required, yet continued data coverage is threatened by funding reductions. Uncertainty both in the role of anthropogenic aerosols and because of the large climate variability presently limits confidence in attribution of observed changes.
Gabriele C. Hegerl, Emily Black, Richard P. Allan, William Ingram, Debbie Polson, Kevin E Trenberth, Robin Chadwick, Phillip A. Arkin, Beena Balan Sarojini, Andreas Becker, Aiguo Dai, Paul J. Durack, David R. Easterling, Hayley J. Fowler, Elizabeth Kendon, George J. Huffman, Chunlei Liu, Robert Marsh, Mark New, Timothy J. Osborn, Nikolaos Skliris, Peter A. Stott, Pier Luigi Vidale, Susan Wijffels, Laura J. Wilcox, Kate M. Willett, Xuebin Zhang (2014). Challenges in Quantifying Changes in the Global Water Cycle. Bulletin of the American Meteorological Society, 96(7), pp. 1097-1115, DOI: 10.1175/bams-d-13-00212.1.
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Type
Article
Year
2014
Authors
27
Datasets
0
Total Files
0
Language
English
Journal
Bulletin of the American Meteorological Society
DOI
10.1175/bams-d-13-00212.1
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