Abstract

In recent years, the delay in sowing has become a major obstacle to high wheat yield in Jiangsu Province, one of the major wheat producing areas in China; hence, it is necessary to screen wheat varieties are resilient for late sowing. This study aimed to provide an effective, fast, and non-destructive monitoring method of soil plant analysis development (SPAD) values, which can represent leaf chlorophyll contents, for late-sown winter wheat variety screening. This study acquired multispectral images using an unmanned aerial vehicle (UAV) at the overwintering stage of winter wheat growth, and further processed these images to extract reflectance of five single spectral bands and calculated 26 spectral vegetation indices. Based on these 31 variables, this study combined three variable selection methods (i.e., recursive feature elimination (RFE), random forest (RF), and Pearson correlation coefficient (r)) with four machine learning algorithms (i.e., random forest regression (RFR), linear kernel-based support vector regression (SVR), radial basis function (RBF) kernel-based SVR, and sigmoid kernel-based SVR), resulted in seven SVR models (i.e., RFE-SVR_linear, RF-SVR_linear, RF-SVR_RBF, RF-SVR_sigmoid, r-SVR_linear, r-SVR_RBF, and r-SVR_sigmoid) and three RFR models (i.e., RFE-RFR, RF-RFR, and r-RFR). The performances of the 10 machine learning models were evaluated and compared with each other according to the achieved coefficient of determination (R2), residual prediction deviation (RPD), root mean square error (RMSE), and relative RMSE (RRMSE) in SPAD estimation. Of the 10 models, the best one was the RF-SVR_sigmoid model, which was the combination of the RF variable selection method and the sigmoid kernel-based SVR algorithm. It achieved high accuracy in estimating SPAD values of the wheat canopy (R2 = 0.754, RPD = 2.017, RMSE = 1.716 and RRMSE = 4.504%). The newly developed UAV- and machine learning-based model provided a promising and real time method to monitor chlorophyll contents at the overwintering stage, which can benefit late-sown winter wheat variety screening.

Highlights

  • Wheat is one of the three major food crops in China

  • This study found that the Normalized difference vegetation index (NDVI) value of 0.25 could discriminate wheat from soil

  • This study demonstrates that the combination of different variable selection methods with different machine learning algorithms can impact the estimation accuracy quite significantly

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Summary

Introduction

Wheat is one of the three major food crops in China. Jiangsu Province, located in the lower reaches of the Yangtze River, is one of the major wheat production areas in China.In recent years, the delay in rice maturity in this region has led to a significant delay in subsequent winter wheat sowing. Jiangsu Province, located in the lower reaches of the Yangtze River, is one of the major wheat production areas in China. The percentages of late-sown (seven or more days later than local normal seed sowing date) wheat area in Jiangsu Province were. Optimal wheat varieties should be able to maintain a certain amount of growth even at the overwintering stage [2]. Wheat in the lower reach of the Yangtze River often suffers from low-temperature frost damage at the overwintering stage, which severely affects wheat growth and development [3]; good wheat varieties should have strong resistance to low temperatures. Accurately monitoring wheat growth status at the overwintering stage is critical for latesown winter wheat variety screening

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