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Forest Canopy Water Content Monitoring Using Radiative Transfer Models and Machine Learning

Liang Liu, Shaoda Li, Wunian Yang, Xiao Wang, Xinrui Luo, Peilian Ran, Helin Zhang

2023Forests10 citationsDOIOpen Access PDF

Abstract

Forests are facing various threats, such as drought, in the context of global climate change. Canopy water content (CWC) is a crucial indicator of forest water stress, mortality, and fire monitoring. However, previous studies on CWC have not adequately simulated forests with heterogeneous and discontinuous canopy structures. At the same time, there is a lack of field validation. This study retrieved the forest CWC across the contiguous U.S. (CONUS) with coupled radiative transfer models (RTMs) and the random forest (RF) algorithm. A Gaussian copula and prior knowledge were used for model parameterization. The results indicated that more accurate simulations of leaf trait dependencies and canopy structure characteristics lead to better CWC inversion. In addition, GeoSail, coupled with PROSPECT-5B, showed good performance (R2 = 0.68, RMSE = 0.15 kg m−2, MAE = 0.12 kg m−2, rRMSE = 12.78%, Bias = −0.036 kg m−2) for forest CWC retrieval. Large variation existed in forest CWC, spatiotemporally, and evergreen needle forest (ENF) showed strong CWC capacity. This study underscores the suitability of 3D RTMs for inversing the parameters of forest canopies.

Topics & Concepts

CanopyEnvironmental scienceEvergreen forestRandom forestEvergreenContext (archaeology)Atmospheric radiative transfer codesRadiative transferTree canopyAtmospheric sciencesEcologyGeographyComputer scienceGeologyBiologyMachine learningQuantum mechanicsPhysicsArchaeologyRemote Sensing in AgriculturePlant Water Relations and Carbon DynamicsRemote Sensing and LiDAR Applications
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