Department of Soil Conservation and Watershed Management, Zanjan Agricultural and Natural Resources Research Center, AREEO, Zanjan, Iran.
Department of Nature Engineering, Faculty of Natural Resources and Earth Sciences, Shahrekord University, Shahrekord, Iran.
PLoS One. 2024 Aug 22;19(8):e0307853. doi: 10.1371/journal.pone.0307853. eCollection 2024.
Precise prediction of soil salinity using visible, and near-infrared (vis-NIR) spectroscopy is crucial for ensuring food security and effective environmental management. This paper focuses on the precise prediction of soil salinity utilizing visible and near-infrared (vis-NIR) spectroscopy, a critical factor for food security and effective environmental management. The objective is to utilize vis-NIR spectra alongside a multiple regression model (MLR) and a random forest (RF) modeling approach to predict soil salinity across various land use types, such as farmlands, bare lands, and rangelands accurately. To this end, we selected 150 sampling points representatives of these diverse land uses. At each point, we collected soil samples to measure the soil salinity (ECe) and employed a portable spectrometer to capture the spectral reflectance across the full wavelength range of 400 to 2400 nm. The methodology involved using both individual spectral reflectance values and combinations of reflectance values from different wavelengths as input variables for developing the MLR and RF models. The results indicated that the RF model (RMSE = 4.85 dS m-1, R2 = 0.87, and RPD = 3.15), utilizing combined factors as input variables, outperformed others. Furthermore, our analysis across different land uses revealed that models incorporating combined input variables yielded significantly better results, particularly for farmlands and rangelands. This study underscores the potential of combining vis-NIR spectroscopy with advanced modeling techniques to enhance the accuracy of soil salinity predictions, thereby supporting more informed agricultural and environmental management decisions.
利用可见近红外(vis-NIR)光谱精确预测土壤盐度对于确保粮食安全和有效环境管理至关重要。本文重点关注利用可见近红外(vis-NIR)光谱精确预测土壤盐度,这是粮食安全和有效环境管理的关键因素。目标是利用 vis-NIR 光谱以及多元回归模型(MLR)和随机森林(RF)建模方法,准确预测不同土地利用类型(如农田、裸地和牧场)的土壤盐度。为此,我们选择了 150 个代表这些不同土地利用类型的采样点。在每个点,我们采集土壤样本以测量土壤盐度(ECe),并使用便携式分光光度计在 400 到 2400nm 的全波长范围内捕获光谱反射率。该方法涉及使用单个光谱反射率值以及不同波长的反射率值组合作为输入变量来开发 MLR 和 RF 模型。结果表明,RF 模型(RMSE=4.85dS m-1,R2=0.87,RPD=3.15),使用组合因子作为输入变量,表现优于其他模型。此外,我们对不同土地利用类型的分析表明,纳入组合输入变量的模型产生了显著更好的结果,特别是对于农田和牧场。本研究强调了将可见近红外光谱与先进建模技术相结合以提高土壤盐度预测精度的潜力,从而支持更明智的农业和环境管理决策。