4.7 Article

A General Paradigm for Retrieving Soil Moisture and Surface Temperature from Passive Microwave Remote Sensing Data Based on Artificial Intelligence

期刊

REMOTE SENSING
卷 15, 期 7, 页码 -

出版社

MDPI
DOI: 10.3390/rs15071793

关键词

deep learning; geophysical logical reasoning; interleaved iterative optimization; soil moisture; land surface temperature; collaborative retrieval

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In this study, a novel fully-coupled paradigm combining deep learning, physical methods, and statistical methods is developed to robustly retrieve soil moisture (SM) and land surface temperature (LST) from passive microwave data, improving retrieval accuracy. The physical method is derived based on the energy radiation balance equation, while the statistical method is constructed using multi-source data. The mean absolute error of the retrieved SM and LST data are 0.027 m(3)/m(3) and 1.38 K, respectively, at an incidence angle of 0-65 degrees. This model-data-knowledge-driven and deep learning method overcomes the shortcomings of traditional methods and provides a paradigm for retrieval of other geophysical variables.
Soil moisture (SM) and land surface temperature (LST) are entangled, and the retrieval of one of them requires a priori specification of the other one. Due to insufficient observational information, retrieval of LST and SM from passive microwave remote sensing data is often ill-posed, and the retrieval accuracy needs to be improved. In this study, a novel fully-coupled paradigm is developed to robustly retrieve SM and LST from passive microwave data, which integrates deep learning, physical methods, and statistical methods. The key condition of the general paradigm proposed by us is that the output parameters of deep learning can be uniquely determined by the input parameters theoretically through a certain mathematical equation. Firstly, the physical method is deduced based on the energy radiation balance equation. The nine unknowns require the brightness temperatures of nine channels to construct nine equations, and the solutions of the physical method equations are obtained by model simulation. Based on the derivation of the physical method, the solution of the statistical method is constructed using multi-source data. Secondly, the solutions of physical and statistical methods constitute the training and test data of deep learning, which is used to obtain the solution curve of physical and statistical methods. The retrieval accuracy of LST and SM is greatly improved by smartly utilizing the mutual prior knowledge of SM and LST and cross iterative optimization calculations. Finally, validation indicates that the mean absolute error of the retrieved SM and LST data are 0.027 m(3)/m(3) and 1.38 K, respectively, at an incidence angle of 0-65 degrees. A model-data-knowledge-driven and deep learning method can overcome the shortcomings of traditional methods and provide a paradigm for retrieval of other geophysical variables. The proposed paradigm not only has physical meaning, but also makes deep learning physically interpretable, which is a milestone in the retrieval of geophysical remote sensing parameters based on artificial intelligence technology.

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