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首页> 外文期刊>Journal of Geophysical Research, C. Oceans: JGR >Predictive accuracy of temperature-nitrate relationships for the oceanic mixed layer of the New Zealand region
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Predictive accuracy of temperature-nitrate relationships for the oceanic mixed layer of the New Zealand region

机译:新西兰地区海洋混合层温度与硝酸盐关系的预测精度

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Nitrate concentrations are a major factor controlling phytoplankton growth, hence the recent interest in using remotely sensed sea surface temperature (SST) and chlorophyll concentrations (Chla) to infer nitrate concentrations and substantially improve spatiotemporal estimates of nitrate in the surface ocean. Regression models which predict mixed-layer nitrate concentrations as a function of temperature and climatological salinity are derived for the subtropical and subantarctic waters of the New Zealand region (30°–50°S, 154°E–160°W). These models are then validated using independent in situ measurements of temperature and nitrate concentrations and remotely sensed SST and Chla. Root mean square (RMS) nitrate prediction errors vary with water mass and exhibit seasonally dependent biases. RMS errors range from 0.8 to 1.8 μM in subtropical waters, 1.6 to 1.9 μM in the Subtropical Front, and 1.4 to 2.5 μM in subantarctic waters, depending on the spatiotemporal sampling characteristics of validation data sets. Prediction errors are correlated with observed chlorophyll concentrations, and a linear chlorophyll correction reduces seasonally dependent prediction biases significantly. Nitrate prediction errors for the New Zealand region are comparable with nitrate prediction errors reported for the North Atlantic and Equatorial and North Pacific, and the regression models give a substantially better description of the seasonal variation of nitrate in the New Zealand region than an existing nitrate climatology. A comparison of predicted nitrate-depletion temperatures with other published studies highlights the importance of detailed regional validation of temperature-nitrate regression models.
机译:硝酸盐浓度是控制浮游植物生长的主要因素,因此,最近人们对利用遥感海表温度(SST)和叶绿素浓度(Chla)推断硝酸盐浓度并显着改善地表海洋中硝酸盐的时空估计值感兴趣。对于新西兰地区的亚热带和亚南极水域(30°–50°S,154°E–160°W),得出了预测混合层硝酸盐浓度随温度和气候盐度变化的回归模型。然后使用温度和硝酸盐浓度的独立原位测量以及遥感的SST和Chla验证这些模型。硝酸盐的均方根(RMS)预测误差随水量而变化,并表现出季节性相关的偏差。 RMS误差在亚热带水域中为0.8到1.8μM,在亚热带水域中为1.6到1.9μM,在亚南极水域中为1.4到2.5μM,这取决于验证数据集的时空采样特征。预测误差与观察到的叶绿素浓度相关,并且线性叶绿素校正显着降低了季节性变化的预测偏差。新西兰地区的硝酸盐预测误差与北大西洋及赤道和北太平洋地区的硝酸盐预测误差相当,并且与现有的硝酸盐气候学相比,回归模型可以更好地描述新西兰地区硝酸盐的季节性变化。 。将预测的硝酸盐消耗温度与其他已发表的研究进行比较,突显了温度-硝酸盐回归模型的详细区域验证的重要性。

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