Retrieval of snow physical parameters by neural networks and optimal estimation: case study for ground-based spectral radiometer system

Tomonori Tanikawa, Wei Li, Katsuyuki Kuchiki, Teruo Aoki, Masahiro Hori, Knut Stamnes

研究成果: ジャーナルへの寄稿学術論文査読

抄録

A new retrieval algorithm for estimation of snow grain size and impurity concentration from spectral radiation data is developed for remote sensing applications. A radiative transfer (RT) model for the coupled atmosphere-snow system is used as a forward model. This model simulates spectral radiant quantities for visible and near-infrared channels. The forward RT calculation is, however, the most time-consuming part of the forward-inverse modeling. Therefore, we replaced it with a neural network (NN) function for fast computation of radiances and Jacobians. The retrieval scheme is based on an optimal estimation method with a priori constraints. The NN function was also employed to obtain an accurate first guess in the retrieval scheme. Validation with simulation data shows that a combination of NN techniques and optimal estimation method can provide more accurate retrievals than by using only NN techniques. In addition, validation with in-situ measurements conducted by using ground-based spectral radiometer system shows that comparison between retrieved snow parameters with in-situ measurements is acceptable with satisfactory accuracy. The algorithm provides simultaneous, accurate and fast retrieval of the snow properties. The algorithm presented here is useful for airborne/satellite remote sensing. (C) 2015 Optical Society of America
本文言語英語
ジャーナルOptics Express
23
24
DOI
出版ステータス出版済み - 2015/11

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