Seamless retrievals of chlorophyll-a from Sentinel-2 (MSI) and Sentinel-3 (OLCI) in inland and coastal waters: A machine-learning approach

Consistent, cross-mission retrievals of near-surface concentration of chlorophyll-a (Chla) in various aquatic ecosystems with broad ranges of trophic levels have long been a complex undertaking. Here, we introduce a machine-learning model, the Mixture Density Network (MDN), that largely outperforms...

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Veröffentlicht in:Remote sensing of environment 2020-04, Vol.240, p.111604, Article 111604
Hauptverfasser: Pahlevan, Nima, Smith, Brandon, Schalles, John, Binding, Caren, Cao, Zhigang, Ma, Ronghua, Alikas, Krista, Kangro, Kersti, Gurlin, Daniela, Hà, Nguyễn, Matsushita, Bunkei, Moses, Wesley, Greb, Steven, Lehmann, Moritz K., Ondrusek, Michael, Oppelt, Natascha, Stumpf, Richard
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Sprache:eng
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Zusammenfassung:Consistent, cross-mission retrievals of near-surface concentration of chlorophyll-a (Chla) in various aquatic ecosystems with broad ranges of trophic levels have long been a complex undertaking. Here, we introduce a machine-learning model, the Mixture Density Network (MDN), that largely outperforms existing algorithms when applied across different bio-optical regimes in inland and coastal waters. The model is trained and validated using a sizeable database of co-located Chla measurements (n = 2943) and in situ hyperspectral radiometric data resampled to simulate the Multispectral Instrument (MSI) and the Ocean and Land Color Imager (OLCI) onboard Sentinel-2A/B and Sentinel-3A/B, respectively. Our performance evaluations of the model, via two-thirds of the in situ dataset with Chla ranging from 0.2 to 1209 mg/m3 and a mean Chla of 21.7 mg/m3, suggest significant improvements in Chla retrievals. For both MSI and OLCI, the mean absolute logarithmic error (MAE) and logarithmic bias (Bias) across the entire range reduced by 40–60%, whereas the root mean squared logarithmic error (RMSLE) and the median absolute percentage error (MAPE) improved two-to-three times over those from the state-of-the-art algorithms. Using independent Chla matchups (n 
ISSN:0034-4257
1879-0704
DOI:10.1016/j.rse.2019.111604