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Im, Jungho
Intelligent Remote sensing and geospatial Information Science Lab.
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Estimation of shrub willow biophysical parameters across time and space from Sentinel-2 and unmanned aerial system (UAS) data

Author(s)
Xu, JinQuackenbush, Lindi J.Volk, Timothy A.Im, Jungho
Issued Date
2022-10
DOI
10.1016/j.fcr.2022.108655
URI
https://scholarworks.unist.ac.kr/handle/201301/60015
Citation
FIELD CROPS RESEARCH, v.287, pp.108655
Abstract
Shrub willow can be used as a perennial energy crop to produce biomass for biofuels, bioproducts, and bioenergy to help address environmental issues. Leaf chlorophyll content (LCC), leaf area index (LAI), and canopy chlo-rophyll content (CCC), which are closely related to vegetation health status, provide valuable information to assess willow vigor and crop management activities. We developed models for estimating LCC, LAI, and CCC from Sentinel-2 and unmanned aerial system (UAS) data using a number of vegetation indices (VIs) and applying four analytical tools: regression analysis, partial least squares regression (PLSR), random forest (RF), and neural networks (NNs). We investigated twenty VIs using regression analysis, finding the red-edge normalized differ-ence vegetation index (NDVIre) as the optimal VI based on predictive performance and so this was included as an input variable for the PLSR, RF, and NN methods. For RF and NN models, sensitivity analysis was implemented to help tune hyperparameters and provide information to guide future studies. Results showed that the best averaged performance of Sentinel-2 and UAS data for LCC, LAI, and CCC (normalized root mean square error (NRMSE) = 9%, 12%, and 10%) of the same site in the same year was derived from models based on the NN algorithm using blue (B), green (G), red (R), red-edge (RE), and near-infrared (NIR) bands. In order to test model transferability, we collected UAS and Sentinel-2 data across different years and sites. Based on NRMSE, NN models using B, G, R, RE, and NIR bands provided the best averaged predictive performance for LCC estimation (16%) and the regression modeling using NDVIre performed best for LAI (21%) and CCC (13%) estimation for both Sentinel-2 and UAS data. Moreover, CCC estimation had smaller NRMSE values than LCC and LAI esti-mation for both Sentinel-2 and UAS data. Based on this study, we found that UAS data has the potential to complement Sentinel-2 data by mitigating limitations caused by temporal resolution and cloud cover. We also recommend use of the CCC parameter to evaluate shrub willow health status and perform time-series monitoring across time and space.
Publisher
ELSEVIER
ISSN
0378-4290
Keyword (Author)
Chlorophyll contentLeaf area indexVegetation indexRed-edge bandRegressionMachine learning
Keyword
LEAF-AREA INDEXCONVOLUTIONAL NEURAL-NETWORKSVEGETATION INDEXESCHLOROPHYLL CONTENTGREEN LAICROSS-VALIDATIONUNITED-STATESBIOMASS CROPSFORESTRED

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