Wang Zeyuan, Ding Jianli, Tan Jiao, Liu Junhao, Zhang Tingting, Cai Weijian, Meng Shanshan
College of Geography and Remote Sensing Sciences, Xinjiang University, Urumqi, China.
Xinjiang Key Laboratory of Oasis Ecology, Xinjiang University, Urumqi, China.
Front Plant Sci. 2024 Feb 19;15:1358965. doi: 10.3389/fpls.2024.1358965. eCollection 2024.
Secondary salinization is a crucial constraint on agricultural progress in arid regions. The specific mulching irrigation technique not only exacerbates secondary salinization but also complicates field-scale soil salinity monitoring. UAV hyperspectral remote sensing offers a monitoring method that is high-precision, high-efficiency, and short-cycle. In this study, UAV hyperspectral images were used to derive one-dimensional, textural, and three-dimensional feature variables using Competitive adaptive reweighted sampling (CARS), Gray-Level Co-occurrence Matrix (GLCM), Boruta Feature Selection (Boruta), and Brightness-Color-Index (BCI) with Fractional-order differentiation (FOD) processing. Additionally, three modeling strategies were developed (Strategy 1 involves constructing the model solely with the 20 single-band variable inputs screened by the CARS algorithm. In Strategy 2, 25 texture features augment Strategy 1, resulting in 45 feature variables for model construction. Strategy 3, building upon Strategy 2, incorporates six triple-band indices, totaling 51 variables used in the model's construction) and integrated with the Seagull Optimization Algorithm for Random Forest (SOA-RF) models to predict soil electrical conductivity (EC) and delineate spatial distribution. The results demonstrated that fractional order differentiation highlights spectral features in noisy spectra, and different orders of differentiation reveal different hidden information. The correlation between soil EC and spectra varies with the order. 1.9th order differentiation is proved to be the best order for constructing one-dimensional indices; although the addition of texture features slightly improves the accuracy of the model, the integration of the three-waveband indices significantly improves the accuracy of the estimation, with an R of 0.9476. In contrast to the conventional RF model, the SOA-RF algorithm optimizes its parameters thereby significantly improving the accuracy and model stability. The optimal soil salinity prediction model proposed in this study can accurately, non-invasively and rapidly identify excessive salt accumulation in drip irrigation under membrane. It is of great significance to improve the growing conditions of cotton, increase the cotton yield, and promote the sustainable development of Xinjiang's agricultural economy, and also provides a reference for the prevention and control of regional soil salinization.
次生盐渍化是干旱地区农业发展的关键制约因素。特定的地膜覆盖灌溉技术不仅加剧了次生盐渍化,还使田间尺度的土壤盐分监测变得复杂。无人机高光谱遥感提供了一种高精度、高效率、短周期的监测方法。在本研究中,利用无人机高光谱图像,通过竞争性自适应重加权采样(CARS)、灰度共生矩阵(GLCM)、Boruta特征选择(Boruta)和亮度-颜色指数(BCI)结合分数阶微分(FOD)处理,得出一维、纹理和三维特征变量。此外,还开发了三种建模策略(策略1仅使用由CARS算法筛选出的20个单波段变量输入构建模型。在策略2中,25个纹理特征增强了策略1,从而产生45个特征变量用于模型构建。策略3在策略2的基础上,纳入了六个三波段指数,模型构建中共使用51个变量),并与海鸥优化算法结合随机森林(SOA-RF)模型,以预测土壤电导率(EC)并描绘空间分布。结果表明,分数阶微分突出了噪声光谱中的光谱特征,不同阶数的微分揭示了不同的隐藏信息。土壤EC与光谱之间的相关性随阶数而变化。证明1.9阶微分是构建一维指数的最佳阶数;虽然添加纹理特征略微提高了模型的精度,但三波段指数的整合显著提高了估计精度,R为0.9476。与传统的RF模型相比,SOA-RF算法对其参数进行了优化,从而显著提高了精度和模型稳定性。本研究提出的最优土壤盐分预测模型能够准确、无创且快速地识别膜下滴灌中的盐分积累过量情况。这对于改善棉花生长条件、提高棉花产量以及促进新疆农业经济的可持续发展具有重要意义,也为区域土壤盐渍化的防治提供了参考。