A physics-constrained machine learning method for mapping gapless land surface temperature
Jun Ma, Huanfeng Shen, Menghui Jiang, Liupeng Lin, Chunlei Meng, Chao, Zeng, Huifang Li, Penghai Wu

TL;DR
This paper introduces a physics-constrained machine learning model that combines physical land surface process constraints with data-driven methods to improve the accuracy and interpretability of gapless land surface temperature estimation.
Contribution
A novel hybrid model integrating physical land surface constraints with machine learning to enhance LST prediction accuracy and physical interpretability.
Findings
Improved LST prediction accuracy over pure physical or ML methods.
Enhanced model interpretability and extrapolation to extreme weather events.
Demonstrated ability to generate physically meaningful gapless LST maps.
Abstract
More accurate, spatio-temporally, and physically consistent LST estimation has been a main interest in Earth system research. Developing physics-driven mechanism models and data-driven machine learning (ML) models are two major paradigms for gapless LST estimation, which have their respective advantages and disadvantages. In this paper, a physics-constrained ML model, which combines the strengths in the mechanism model and ML model, is proposed to generate gapless LST with physical meanings and high accuracy. The hybrid model employs ML as the primary architecture, under which the input variable physical constraints are incorporated to enhance the interpretability and extrapolation ability of the model. Specifically, the light gradient-boosting machine (LGBM) model, which uses only remote sensing data as input, serves as the pure ML model. Physical constraints (PCs) are coupled by…
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Taxonomy
TopicsClimate variability and models · Climate change and permafrost · Meteorological Phenomena and Simulations
