Estonian Marine Institute, University of Tartu, Mäealuse 14, Tallinn 12618, Estonia; Centre for Limnology, Institute of Agricultural and Environmental Sciences, Estonian University of Life Sciences, Kreutzwaldi 5, Tartu 51014, Estonia.
Estonian Marine Institute, University of Tartu, Mäealuse 14, Tallinn 12618, Estonia.
Water Res. 2016 Oct 1;102:32-40. doi: 10.1016/j.watres.2016.06.012. Epub 2016 Jun 6.
Understanding of the true role of lakes in the global carbon cycle requires reliable estimates of dissolved organic carbon (DOC) and there is a strong need to develop remote sensing methods for mapping lake carbon content at larger regional and global scales. Part of DOC is optically inactive. Therefore, lake DOC content cannot be mapped directly. The objectives of the current study were to estimate the relationships of DOC and other water and environmental variables in order to find the best proxy for remote sensing mapping of lake DOC. The Boosted Regression Trees approach was used to clarify in which relative proportions different water and environmental variables determine DOC. In a studied large and shallow eutrophic lake the concentrations of DOC and coloured dissolved organic matter (CDOM) were rather high while the seasonal and interannual variability of DOC concentrations was small. The relationships between DOC and other water and environmental variables varied seasonally and interannually and it was challenging to find proxies for describing seasonal cycle of DOC. Chlorophyll a (Chl a), total suspended matter and Secchi depth were correlated with DOC and therefore are possible proxies for remote sensing of seasonal changes of DOC in ice free period, while for long term interannual changes transparency-related variables are relevant as DOC proxies. CDOM did not appear to be a good predictor of the seasonality of DOC concentration in Lake Võrtsjärv since the CDOM-DOC coupling varied seasonally. However, combining the data from Võrtsjärv with the published data from six other eutrophic lakes in the world showed that CDOM was the most powerful predictor of DOC and can be used in remote sensing of DOC concentrations in eutrophic lakes.
理解湖泊在全球碳循环中的真正作用需要可靠地估计溶解有机碳(DOC),并且强烈需要开发用于在更大的区域和全球范围内绘制湖泊碳含量的遥感方法。部分 DOC 是光学惰性的。因此,不能直接绘制湖泊 DOC 含量。本研究的目的是估算 DOC 与其他水和环境变量之间的关系,以找到用于遥感绘制湖泊 DOC 的最佳替代物。使用增强回归树方法来阐明不同水和环境变量以何种相对比例确定 DOC。在所研究的大型浅水富营养湖中,DOC 和有色溶解有机物(CDOM)的浓度相当高,而 DOC 浓度的季节性和年际变化很小。DOC 与其他水和环境变量之间的关系具有季节性和年际变化,很难找到描述 DOC 季节性循环的替代物。叶绿素 a(Chl a)、总悬浮物质和塞奇深度与 DOC 相关,因此是描述无冰期 DOC 季节性变化的遥感的可能替代物,而对于长期的年际变化,与透明度相关的变量是相关的作为 DOC 替代物。由于 CDOM-DOC 耦合具有季节性变化,因此 CDOM 似乎不是湖泊 Võrtsjärv 中 DOC 浓度季节性的良好预测因子。然而,将 Võrtsjärv 的数据与来自世界上其他六个富营养湖泊的已发表数据相结合表明,CDOM 是 DOC 的最有力预测因子,可用于富营养湖泊中 DOC 浓度的遥感。