Title :
Using Partial Least Squares-Artificial Neural Network for Inversion of Inland Water Chlorophyll-a
Author :
Kaishan Song ; Lin Li ; Shuai Li ; Tedesco, Luciano ; Hongtao Duan ; Zuchuan Li ; Kun Shi ; Jia Du ; Ying Zhao ; Tiantian Shao
Author_Institution :
Dept. of Earth Sci., Indiana Univ.-Purdue Univ., Indianapolis, IN, USA
Abstract :
Accurate remote estimation of chlorophyll-a (CHL) concentration for turbid inland waters is a challenging task due to their optical complexity. In situ spectra (n=666) measured with ASD and Ocean Optics spectrometers from three drinking water sources in Indiana, USA, were used to calibrate the partial least squares model (PLS), artificial neural network model (ANN), and the three-band model (TBM) for CHL estimates; model performances are validated with three independent datasets (n=360) from China. The PLS-ANN model resulted in accurate model calibration ( R2=0.94; Range=0.2-296.6 μg/l of CHL), outperforming the PLS (R2=0.87), ANN (R2=0.91), and TBM (R2=0.86). With an independent validation dataset, the PLS-ANN yielded relatively high accuracy (RMSE: 6.12 μg/l; rRMSE=42.12%; range=0.45-97.2 μg/l of CHL), while TBM yielded acceptable accuracy (RMSE: 8.85 μg/l; rRMSE=63.21%). With simulated ESA/MERIS and EO-1/Hyperion spectra, the PLS-ANN also (MERIS: R2=0.84; Hyperion: R2=0.88) outperforms the TBM (MERIS: R2=0.69; Hyperion: R2=0.76) for model calibration. For validation, the PLS-ANN achieves good performance with simulated spectra (MERIS: RMSE=7.83 μg/l, rRMSE=48.79%; Hyperion: RMSE=6.98 μg/l, rRMSE=45.57%) as compared to the TBM (MERIS: RMSE=10.39 μg/l, rRMSE=68.92%; Hyperion: RMSE=9.54 μg/l, rRMSE=65.35%). Nevertheless, considering the large and diverse datasets, the TBM is a robust semiempirical algorithm. Based on our observations, both the PLS-ANN and TBM are effective approaches for CHL estimation in turbid waters.
Keywords :
calibration; geophysics computing; hydrological techniques; neural nets; turbidity; water quality; water resources; ASD spectrometer; China; Indiana; Ocean Optics spectrometer; PLS-ANN achieves; PLS-ANN model; USA; artificial neural network model; chlorophyll-a concentration estimation; drinking water sources; in situ spectra; inland water chlorophyll-a; model calibration; model performances; optical complexity; partial least squares model; remote estimation; semiempirical algorithm; simulated EO-1/Hyperion spectra; simulated ESA/MERIS spectra; three-band model; turbid inland waters; validation dataset; Chlorophyll-a (CHL); partial least squares-artificial neural network (PLS-ANN); three-band model (TBM); total suspended matter (TSM);
Journal_Title :
Geoscience and Remote Sensing, IEEE Transactions on
DOI :
10.1109/TGRS.2013.2251888