Abstract

Efficient monitoring of cultivated land quality (CLQ) plays a significant role in cultivated land protection. Soil spectral data can reflect the state of cultivated land. However, most studies have used crop spectral information to estimate CLQ, and there is little research on using soil spectral data for this purpose. In this study, soil hyperspectral data were utilized for the first time to evaluate CLQ. We obtained the optimal spectral variables from dry soil spectral data using a gradient boosting decision tree (GBDT) algorithm combined with the variance inflation factor (VIF). Two estimation algorithms (partial least-squares regression (PLSR) and back-propagation neural network (BPNN)) with 10-fold cross-validation were employed to develop the relationship model between the optimal spectral variables and CLQ. The optimal algorithms were determined by the degree of fit (determination coefficient, R2). In order to estimate CLQ at the regional scale, HuanJing-1A Hyperspectral Imager (HJ-1A HSI) data were transformed into dry soil spectral data using the linkage model of original soil spectral reflectance to dry soil spectral reflectance. This study was conducted in the Guangdong Province, China and the Conghua district within the same province. The results showed the following: (1) the optimal spectral variables selected from the dry soil spectral variables were 478 nm, 502 nm, 614 nm, 872 nm, 966 nm, 1007 nm, and 1796 nm. (2) The BPNN was the optimal model, with an R2(C) of 0.71 and a normalized root mean square error (NRMSE) of 12.20%. (3) The results showed the R2 of the regional-scale CLQ estimation based on the proposed method was 0.05 higher, and the NRMSE was 0.92% lower than that of the CLQ map obtained using the traditional method. Additionally, the NRMSE of the regional-scale CLQ estimation base on dry soil spectral variables from HJ-1A HSI data was 2.00% lower than that of the model base on the original HJ-1A HSI data.

Highlights

  • We developed a Cultivated land quality (CLQ) estimation model based on measured dry soil spectral data using an AvaField portable spectrometer

  • Soil spectral data were used for the first time to estimate CLQ

  • This study was conducted in the Guangdong province and Conghua district within the province and led to the following conclusions: the gradient boosting decision tree (GBDT) combined with the variance inflation factor (VIF) accurately selected the optimal spectral variables of the dry soil

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Summary

Introduction

Due to rapid socio-economic development and urbanization, the amount of cultivated land in China has been decreasing. Cultivated land quality (CLQ) is an agriculture land quality grade that represents the soil fertility and natural conditions of cultivated land [1,2]. Cultivated land quality evaluation is crucial to ensuring the sustainability of cultivated land [3,4]. Traditional CLQ evaluations have primarily relied on field investigations and laboratory analyses, these methods are not well suited for real-time dynamic monitoring of CLQ [5,6,7]

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