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Estimating the storage of anthropogenic carbon in the subtropical Indian Ocean: a comparison of five different approaches

Authors :
M. Álvarez
C. Lo Monaco
T. Tanhua
A. Yool
A. Oschlies
J. L. Bullister
C. Goyet
N. Metzl
F. Touratier
E. McDonagh
H. L. Bryden
Source :
Biogeosciences, Vol 6, Iss 4, Pp 681-703 (2009)
Publication Year :
2009
Publisher :
Copernicus Publications, 2009.

Abstract

The subtropical Indian Ocean along 32° S was for the first time simultaneously sampled in 2002 for inorganic carbon and transient tracers. The vertical distribution and inventory of anthropogenic carbon (CANT) from five different methods: four data-base methods (ΔC*, TrOCA, TTD and IPSL) and a simulation from the OCCAM model are compared and discussed along with the observed CFC-12 and CCl4 distributions. In the surface layer, where carbon-based methods are uncertain, TTD and OCCAM yield the same result (7±0.2 molC m−2), helping to specify the surface CANT inventory. Below the mixed-layer, the comparison suggests that CANT penetrates deeper and more uniformly into the Antarctic Intermediate Water layer limit than estimated from the much utilized ΔC* method. Significant CFC-12 and CCl4 values are detected in bottom waters, associated with Antarctic Bottom Water. In this layer, except for ΔC* and OCCAM, the other methods detect significant CANT values. Consequently, the lowest inventory is calculated using the ΔC* method (24±2 molC m−2) or OCCAM (24.4±2.8 molC m−2) while TrOCA, TTD, and IPSL lead to higher inventories (28.1±2.2, 28.9±2.3 and 30.8±2.5 molC m−2 respectively). Overall and despite the uncertainties each method is evaluated using its relationship with tracers and the knowledge about water masses in the subtropical Indian Ocean. Along 32° S our best estimate for the mean CANT specific inventory is 28±2 molC m−2. Comparison exercises for data-based CANT methods along with time-series or repeat sections analysis should help to identify strengths and caveats in the CANT methods and to better constrain model simulations.

Details

Language :
English
ISSN :
17264170 and 17264189
Volume :
6
Issue :
4
Database :
Directory of Open Access Journals
Journal :
Biogeosciences
Publication Type :
Academic Journal
Accession number :
edsdoj.98a7fa3788494a0daeb9f85c8f71ec2f
Document Type :
article