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Inter-Comparison of Phytoplankton Functional Types Derived from Ocean Color Algorithms and Earth System Models: Phenology.

Authors :
Kostadinov, Tihomir S.
Cabré, Anna
Vedantham, H.
Marinov, Irina
Bracher, Astrid
Brewin, Robert J. W.
Bricaud, Annick
Hirata, Takafumi
Hirawake, Toru
Hardman-Mountford, N. J.
Mouw, C. B.
Roy, S.
Uitz, Julia
Kostadinov, Tihomir S.
Cabré, Anna
Vedantham, H.
Marinov, Irina
Bracher, Astrid
Brewin, Robert J. W.
Bricaud, Annick
Hirata, Takafumi
Hirawake, Toru
Hardman-Mountford, N. J.
Mouw, C. B.
Roy, S.
Uitz, Julia
Source :
EPIC3Remote Sensing of Environment, ELSEVIER SCIENCE INC, 190, pp. 162-177, ISSN: 0034-4257
Publication Year :
2017

Abstract

Ocean color remote sensing of chlorophyll concentration has revolutionized our understanding of the biology of the oceans. However, a comprehensive understanding of the structure and function of oceanic ecosystems requires the characterization of the spatio-temporal variability of various phytoplankton functional types (PFTs), which have differing biogeochemical roles. Thus, recent bio-optical algorithm developments have focused on retrieval of various PFTs. It is important to validate and inter-compare the existing PFT algorithms; however direct comparison of retrieved variables is non-trivial because in those algorithms PFTs are defined differently. Thus, it is more plausible and potentially more informative to focus on emergent properties of PFTs, such as phenology. Furthermore, ocean color satellite PFT data sets can play a pivotal role in informing and/or validating the biogeochemical routines of Earth System Models. Here, the phenological characteristics of 10 PFT satellite algorithms and 7 latest-generation climate models from the Coupled Model Inter-comparison Project (CMIP5) are intercompared as part of the International Satellite PFT Algorithm Inter-comparison Project. The comparison is based on monthly satellite data (mostly SeaWiFS) for the 2003–2007 period. The phenological analysis is based on the fraction of microplankton or a similar variable for the satellite algorithms and on the carbon biomass due to diatoms for the climate models. The seasonal cycle is estimated on a per-pixel basis as a sumof sinusoidal harmonics, derived from the Discrete Fourier Transform of the variable time series. Peak analysis is then applied to the estimated seasonal signal and the following phenological parameters are quantified for each satellite algorithm and climate model: seasonal amplitude, percent seasonal variance, month of maximum, and bloom duration. Secondary/double blooms occur in many areas and are also quantified. The algorithms and the models are quantitati

Details

Database :
OAIster
Journal :
EPIC3Remote Sensing of Environment, ELSEVIER SCIENCE INC, 190, pp. 162-177, ISSN: 0034-4257
Notes :
application/pdf
Publication Type :
Electronic Resource
Accession number :
edsoai.ocn970006240
Document Type :
Electronic Resource