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On the consistency in variations of the South China Sea Warm Pool as revealed by three sea surface temperature datasets

The areal and intensity indices of the South China Sea Warm Pool (SCSWP) derived from three datasets, the Advanced Very High Resolution Radiometer (AVHRR), Tropical Rainfall Measuring Mission's Microwave Imager (TMI) and Optimum Interpolation Version 2 (OI.v2) sea surface temperature (SST), are...

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Published in:Remote sensing of environment 2007-07, Vol.109 (1), p.118-125
Main Authors: Li, N., Shang, S.P., Shang, S.L., Zhang, C.Y.
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Language:English
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description The areal and intensity indices of the South China Sea Warm Pool (SCSWP) derived from three datasets, the Advanced Very High Resolution Radiometer (AVHRR), Tropical Rainfall Measuring Mission's Microwave Imager (TMI) and Optimum Interpolation Version 2 (OI.v2) sea surface temperature (SST), are generally consistent with each other at monthly, seasonal and interannual scales. However, the three records are different in some cases. First, minor differences among the monthly records of intensity index are observed in the period July to September. Secondly, the interannual records of SCSWP intensity derived from AVHRR and OI.v2 are different in autumn during the period 1990–1996. The reason is not yet clear and nor is it clear which record best represents fluctuations in SCSWP intensity. These suggest that various drawbacks of the three datasets, such as low resolution of OI.v2, and cloud and rain contamination on AVHRR and TMI data, would be serious enough to allow deviation from each other to appear. Merging AVHRR and TMI SST data might be the way leading to a more convincing time series of SCSWP. In addition, changes of areal and intensity indices are not always consistent with each other, for example, they have different monthly patterns. Although the three interannual records of intensity index in three seasons all capture the main Multivariate ENSO Index (MEI) signals at a half-year lag, only those which are in the summer significantly correlated with MEI.
doi_str_mv 10.1016/j.rse.2006.12.012
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subjects Animal, plant and microbial ecology
Applied geophysics
AVHRR
Biological and medical sciences
Earth sciences
Earth, ocean, space
ENSO
Exact sciences and technology
Fundamental and applied biological sciences. Psychology
General aspects. Techniques
Index
Internal geophysics
Marine
OI.v2
Remote sensing
Sea surface temperature
South China Sea Warm Pool
Teledetection and vegetation maps
TMI
Variation
title On the consistency in variations of the South China Sea Warm Pool as revealed by three sea surface temperature datasets
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