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首页> 外文期刊>Remote Sensing >Estimation of Fugacity of Carbon Dioxide in the East Sea Using In Situ Measurements and Geostationary Ocean Color Imager Satellite Data
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Estimation of Fugacity of Carbon Dioxide in the East Sea Using In Situ Measurements and Geostationary Ocean Color Imager Satellite Data

机译:利用原位测量和地球静止海洋彩色成像仪卫星数据估算东海中二氧化碳的逸度

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The ocean is closely related to global warming and on-going climate change by regulating amounts of carbon dioxide through its interaction with the atmosphere. The monitoring of ocean carbon dioxide is important for a better understanding of the role of the ocean as a carbon sink, and regional and global carbon cycles. This study estimated the fugacity of carbon dioxide (?CO 2 ) over the East Sea located between Korea and Japan. In situ measurements, satellite data and products from the Geostationary Ocean Color Imager (GOCI) and the Hybrid Coordinate Ocean Model (HYCOM) reanalysis data were used through stepwise multi-variate nonlinear regression (MNR) and two machine learning approaches (i.e., support vector regression (SVR) and random forest (RF)). We used five ocean parameters—colored dissolved organic matter (CDOM; <0.3 m ?1 ), chlorophyll-a concentration (Chl-a; <21 mg/m 3 ), mixed layer depth (MLD; <160 m), sea surface salinity (SSS; 32–35), and sea surface temperature (SST; 8–28 °C)—and four band reflectance (Rrs) data (400 nm–565 nm) and their ratios as input parameters to estimate surface seawater ?CO 2 (270–430 μatm). Results show that RF generally performed better than stepwise MNR and SVR. The root mean square error (RMSE) of validation results by RF was 5.49 μatm (1.7%), while those of stepwise MNR and SVR were 10.59 μatm (3.2%) and 6.82 μatm (2.1%), respectively. Ocean parameters (i.e., sea surface salinity (SSS), sea surface temperature (SST), and mixed layer depth (MLD)) appeared to contribute more than the individual bands or band ratios from the satellite data. Spatial and seasonal distributions of monthly ?CO 2 produced from the RF model and sea-air CO 2 flux were also examined.
机译:海洋通过与大气相互作用来调节二氧化碳的含量,从而与全球变暖和持续的气候变化密切相关。监测海洋二氧化碳对于更好地了解海洋作为碳汇的作用以及区域和全球碳循环至关重要。这项研究估计了位于韩国和日本之间的东海上的二氧化碳逸散度(?CO 2)。在现场测量中,通过逐步多变量非线性回归(MNR)和两种机器学习方法(即支持向量)使用了地球静止海洋彩色成像仪(GOCI)和混合坐标海洋模型(HYCOM)重新分析数据的卫​​星数据和产品。回归(SVR)和随机森林(RF))。我们使用了五个海洋参数:有色溶解有机物(CDOM; <0.3 m?1),叶绿素a浓度(Chl-a; <21 mg / m 3),混合层深度(MLD; <160 m),海面盐度(SSS; 32–35)和海面温度(SST; 8–28°C)-四波段反射率(Rrs)数据(400 nm–565 nm)及其比率作为估计地表海水?CO的输入参数2(270–430μatm)。结果表明,RF的性能通常优于逐步MNR和SVR。 RF验证结果的均方根误差(RMSE)为5.49μatm(1.7%),而逐步MNR和SVR的均方根误差分别为10.59μatm(3.2%)和6.82μatm(2.1%)。海洋参数(即海面盐度(SSS),海面温度(SST)和混合层深度(MLD))似乎比卫星数据中的各个波段或波段比率贡献更大。还研究了由RF模型产生的每月?CO 2的空间和季节分布以及海洋空气CO 2通量。

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