Estimating growth and photosynthetic properties of wheat grown in simulated saline field conditions using hyperspectral reflectance sensing and multivariate analysis

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作者
Salah El-Hendawy
Nasser Al-Suhaibani
Majed Alotaibi
Wael Hassan
Salah Elsayed
Muhammad Usman Tahir
Ahmed Ibrahim Mohamed
Urs Schmidhalter
机构
[1] King Saud University,Department of Plant Production, College of Food and Agriculture Sciences
[2] Suez Canal University,Department of Agronomy, Faculty of Agriculture
[3] Suez Canal University,Department of Agricultural Botany, Faculty of Agriculture
[4] Shaqra University,Department of Biology, College of Science and Humanities at Quwayiah
[5] University of Sadat City,Evaluation of Natural Resources Department, Environmental Studies and Research Institute
[6] Suez Canal University,Department of Soil and Water, Faculty of Agriculture
[7] Technical University of Munich,Department of Plant Science, Chair of Plant Nutrition
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Scientific Reports | / 9卷
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摘要
The timely estimation of growth and photosynthetic-related traits in an easy and nondestructive manner using hyperspectral data will become imperative for addressing the challenges of environmental stresses inherent to the agricultural sector in arid conditions. However, the handling and analysis of these data by exploiting the full spectrum remains the determining factor for refining the estimation of crop variables. The main objective of this study was to estimate growth and traits underpinning photosynthetic efficiency of two wheat cultivars grown under simulated saline field conditions and exposed to three salinity levels using hyperspectral reflectance information from 350–2500 nm obtained at two years. Partial least squares regression (PLSR) based on the full spectrum was applied to develop predictive models for estimating the measured parameters in different conditions (salinity levels, cultivars, and years). Variable importance in projection (VIP) of PLSR in combination with multiple linear regression (MLR) was implemented to identify important waveband regions and influential wavelengths related to the measured parameters. The results showed that the PLSR models exhibited moderate to high coefficients of determination (R2) in both the calibration and validation datasets (0.30–0.95), but that this range of R2 values depended on parameters and conditions. The PLSR models based on the full spectrum accurately and robustly predicted three of four parameters across all conditions. Based on the combination of PLSR-VIP and MLR analysis, the wavelengths selected within the visible (VIS), red-edge, and middle near-infrared (NIR) wavebands were the most sensitive to all parameters in all conditions, whereas those selected within the shortwave infrared (SWIR) waveband were effective for some parameters in particular conditions. Overall, these results indicated that the PLSR analysis and band selection techniques can offer a rapid and nondestructive alternative approach to accurately estimate growth- and photosynthetic-related trait responses to salinity stress.
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