Li Yuan, Li Yun-mei, Lü Heng, Zhu Li, Wu Chuan-qing, Du Cheng-gong, Wang Shuai
Huan Jing Ke Xue. 2014 Sep;35(9):3389-96.
Under the efforts of many scholars, large amount of remote retrieval models of water quality parameters have been developed. However, each model could only reflect the "true value" from one level because of the natural limitation of remote sensing. To get the relatively true value by combining various retrieval models, in this work, we developed a multi-model collaborative retrieval algorithm for retrieving the concentration of Chlorophyll a based on data assimilation. We measured water quality parameters and water reflectance spectra in Taihu Lake during 2006 to 2009. There were seven retrieve models established and six models were selected to participate in the multi-model collaborative retrieval algorithm. Then these selected models were combined to establish a multi-model for retrieving the concentration of Chlorophyll a. The results indicated: (1) the accuracy of multi-model retrieval algorithm was better than that of single-model retrieval method, with an optimal MAPE of only 22. 4% ; (2) with more models participating in the multi-model collaborative retrieval algorithm, the accuracy became better, the average MAPE was decreased from 25. 6% to 23. 4% , the average RMSE was decreased from 15. 082 μg.L-1 to 14. 575 μg.L-1, and the average correlation coefficient was improved from 0.91 to 0. 92; (3) the accuracy and errors of retrieval products could be effective evaluated through calculating the confidence interval, which makes possible the acquirement of spatial and temporal error distribution of Chlorophyll a concentration retrieval in Taihu Lake.
在众多学者的努力下,已经开发出了大量水质参数的遥感反演模型。然而,由于遥感本身的局限性,每个模型只能从一个层面反映“真值”。为了通过结合各种反演模型获得相对真值,在本研究中,我们基于数据同化开发了一种用于反演叶绿素a浓度的多模型协同反演算法。我们在2006年至2009年期间对太湖的水质参数和水体反射光谱进行了测量。建立了7个反演模型,并选取其中6个模型参与多模型协同反演算法。然后将这些选取的模型进行组合,建立了一个用于反演叶绿素a浓度的多模型。结果表明:(1)多模型反演算法的精度优于单模型反演方法,最优平均绝对百分比误差仅为22.4%;(2)参与多模型协同反演算法的模型越多,精度越高,平均绝对百分比误差从25.6%降至23.4%,平均均方根误差从15.082μg·L-1降至14.575μg·L-1,平均相关系数从0.91提高到0.92;(3)通过计算置信区间可以有效评估反演产品的精度和误差,这使得获取太湖叶绿素a浓度反演的时空误差分布成为可能。