Reconstruction of 3-D Ocean Chlorophyll a Structure in the Northern Indian Ocean Using Satellite and BGC-Argo Data
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Xianqiang He | Xiaoyan Chen | Yan Bai | D. Pan | Teng Li | Q. Hu
[1] Xianqiang He,et al. Seasonal Variability of Phytoplankton Biomass Revealed by Satellite and BGC‐Argo Data in the Central Tropical Indian Ocean , 2022, Journal of Geophysical Research: Oceans.
[2] Xianqiang He,et al. Effect of El Niño‐Related Warming on Phytoplankton’s Vertical Distribution in the Arabian Sea , 2021, Journal of Geophysical Research: Oceans.
[3] F. Chai,et al. Seasonal and Daily‐Scale Photoacclimation Modulating the Phytoplankton Chlorophyll‐Carbon Coupling Relationship in the Mid‐Latitude Northwest Pacific , 2021, Journal of Geophysical Research: Oceans.
[4] E. Boss,et al. Seasonal bias in global ocean color observations. , 2021, Applied Optics.
[5] F. Chai,et al. Remote Estimation of Sea Surface Nitrate in the California Current System From Satellite Ocean Color Measurements , 2021, IEEE Transactions on Geoscience and Remote Sensing.
[6] Christopher S. Ruf,et al. Toward the Detection and Imaging of Ocean Microplastics With a Spaceborne Radar , 2021, IEEE Transactions on Geoscience and Remote Sensing.
[7] F. D’Ortenzio,et al. Deep Chlorophyll Maxima in the Global Ocean: Occurrences, Drivers and Characteristics , 2021, Global biogeochemical cycles.
[8] Tong Lee,et al. A Road Map to IndOOS-2: Better Observations of the Rapidly Warming Indian Ocean , 2020, Bulletin of the American Meteorological Society.
[9] E. Boss,et al. Monitoring ocean biogeochemistry with autonomous platforms , 2020, Nature Reviews Earth & Environment.
[10] Hongzhang Xu,et al. Deep learning in environmental remote sensing: Achievements and challenges , 2020, Remote Sensing of Environment.
[11] E. Boss,et al. Detecting Mesopelagic Organisms Using Biogeochemical‐Argo Floats , 2020, Geophysical research letters.
[12] Hugh Chen,et al. From local explanations to global understanding with explainable AI for trees , 2020, Nature Machine Intelligence.
[13] E. Boss,et al. Evaluating satellite estimates of particulate backscatter in the global open ocean using autonomous profiling floats. , 2019, Optics express.
[14] Henry C. Bittig,et al. A BGC-Argo Guide: Planning, Deployment, Data Handling and Usage , 2019, Front. Mar. Sci..
[15] Craig M. Lee,et al. A Sustained Ocean Observing System in the Indian Ocean for Climate Related Scientific Knowledge and Societal Needs , 2019, Front. Mar. Sci..
[16] Rosalia Santoleri,et al. Modelling the Vertical Distribution of Phytoplankton Biomass in the Mediterranean Sea from Satellite Data: A Neural Network Approach , 2018, Remote. Sens..
[17] Mridul K. Thomas,et al. Temperature–nutrient interactions exacerbate sensitivity to warming in phytoplankton , 2017, Global change biology.
[18] R. Durazo,et al. Approach for estimating the dynamic physical thresholds of phytoplankton production and biomass in the tropical‐subtropical Pacific Ocean , 2017 .
[19] Fabrizio D'Ortenzio,et al. Recommendations for obtaining unbiased chlorophyll estimates from in situ chlorophyll fluorometers: A global analysis of WET Labs ECO sensors , 2017 .
[20] T. Platt,et al. Impact of El Niño Variability on Oceanic Phytoplankton , 2017, Front. Mar. Sci..
[21] F. D’Ortenzio,et al. A neural network‐based method for merging ocean color and Argo data to extend surface bio‐optical properties to depth: Retrieval of the particulate backscattering coefficient , 2016, Journal of Geophysical Research: Oceans.
[22] David A. Siegel,et al. Revaluating ocean warming impacts on global phytoplankton , 2016 .
[23] R. Murtugudde,et al. A reduction in marine primary productivity driven by rapid warming over the tropical Indian Ocean , 2016 .
[24] V. Rodriguez-Galiano,et al. Machine learning predictive models for mineral prospectivity: an evaluation of neural networks, random forest, regression trees and support vector machines , 2015 .
[25] J. Cullen,et al. Subsurface chlorophyll maximum layers: enduring enigma or mystery solved? , 2015, Annual review of marine science.
[26] Sushma G. Parab,et al. Massive outbreaks of Noctiluca scintillans blooms in the Arabian Sea due to spread of hypoxia , 2014, Nature Communications.
[27] P. Landschützer,et al. Recent variability of the global ocean carbon sink , 2014 .
[28] B. Worm,et al. Global phytoplankton decline over the past century , 2010, Nature.
[29] Shang-Ping Xie,et al. Indian Ocean circulation and climate variability , 2009 .
[30] David A. Siegel,et al. Climate-driven trends in contemporary ocean productivity , 2006, Nature.
[31] H. Claustre,et al. Vertical distribution of phytoplankton communities in open ocean: An assessment based on surface chlorophyll , 2006 .
[32] G. Hays,et al. Climate change and marine plankton. , 2005, Trends in ecology & evolution.
[33] Mahesh Pal,et al. Random forest classifier for remote sensing classification , 2005 .
[34] Leo Breiman,et al. Random Forests , 2001, Machine Learning.
[35] A. Morel,et al. Surface pigments, algal biomass profiles, and potential production of the euphotic layer: Relationships reinvestigated in view of remote‐sensing applications , 1989 .
[36] K. Wyrtki,et al. An Equatorial Jet in the Indian Ocean , 1973, Science.
[37] D. Canfield,et al. N2 production rates limited by nitrite availability in the Bay of Bengal oxygen minimum zone , 2017 .
[38] F. Schott,et al. The monsoon circulation of the Indian Ocean , 2001 .