• Journal of Infrared and Millimeter Waves
  • Vol. 37, Issue 5, 621 (2018)
MIAO Song1、*, WANG Rui1, LI Jian-Chao1, WU Zhi-Ming1, SHI Lei1, LYU Heng1、2、3, LI Yun-Mei1、2、3, ZHAO Shao-Hua4, and LIU Si-Han4
Author Affiliations
  • 1[in Chinese]
  • 2[in Chinese]
  • 3[in Chinese]
  • 4[in Chinese]
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    DOI: 10.11972/j.issn.1001-9014.2018.05.016 Cite this Article
    MIAO Song, WANG Rui, LI Jian-Chao, WU Zhi-Ming, SHI Lei, LYU Heng, LI Yun-Mei, ZHAO Shao-Hua, LIU Si-Han. Retrieval algorithm of phycocyanin concentration in inland lakes from Sentinel 3A-OLCI images[J]. Journal of Infrared and Millimeter Waves, 2018, 37(5): 621 Copy Citation Text show less

    Abstract

    Cyanobacteria is the dominant algae species in inland eutrophic water bodies, and the phycocyanin (PC) is its unique pigment which can be used as an indicator of its presence. Therefore, the retrieval of PC concentration by remote sensing is of great significance to early warning of cyanobacteria bloom. In this paper, the Random Forest retrieval Model for estimating PC concentration based on the sentinel 3A-OLCI bands was developed using in situ data collected from Taihu Lake, Dianchi Lake and Hongzehu Lake. The results of the importance analysis of input variables in random forest demonstrated that the seventh band(674 nm), the eighth band(665 nm) and the ninth band (620 nm) have significant impact on the PC estimation. The accuracy assessment showed that the Mean Absolute Percentage Error(MAPE) of this PC retrieval model is only 34.86% with the Root Mean Square Error(RMSE) of 38.67 μg/L. The comparison between the mode developed by this paper and other models, i.e., Simis semi-analytic algorithm and PCI exponential model was extensively conducted, and it was found that compared with other two models, the MAPE was improved by 85.65% and 15.65% respectively, and the RMSE was improved by 26.08 μg/L and 19.86 μg/L respectively. The atmospheric correction accuracy was further analyzed using the in situ samples and synchronous satellite image, and the result showed that the Management Uint Mathematical Model (MUMM) method can be successfully used for the OLCI image. The atmospheric corrected spectral curves are consistent with the measured spectral curves, and the MAPEs of 8 bands are all less than 30% at the wavelength range between 560 and 779 nm. The random forest model developed for estimating PC concentration in this paper can be successfully applied to Sentinel 3A-OLCI images, which provides a new algorithm for remote estimation of phycocyanin concentration in inland lake.
    MIAO Song, WANG Rui, LI Jian-Chao, WU Zhi-Ming, SHI Lei, LYU Heng, LI Yun-Mei, ZHAO Shao-Hua, LIU Si-Han. Retrieval algorithm of phycocyanin concentration in inland lakes from Sentinel 3A-OLCI images[J]. Journal of Infrared and Millimeter Waves, 2018, 37(5): 621
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