Department of Soil Science, Faculty of Agriculture, University of Zanjan, Zanjan, Iran.
School of Environmental Sciences, University of Guelph, 50 Stone Road East, Guelph, N1G 2W1, Canada.
J Environ Manage. 2023 Nov 1;345:118854. doi: 10.1016/j.jenvman.2023.118854. Epub 2023 Aug 28.
Drought and the impacts of climate change have led to an escalation in soil salinity and alkalinity across various regions worldwide, including Iran. The Chahardowli Plain in western Iran, in particular, has witnessed a significant intensification of this phenomenon over the past decade. Consequently, modeling of soil attributes that serve as indicators of soil salinity and alkalinity became a priority in this region. To date, only a limited number of studies have been conducted to assess indicators of salinity and alkalinity through spectrometry across diverse spectral ranges. The spectral ranges encompassing mid-infrared (mid-IR), visible, and near-infrared (vis-NIR) spectroscopy were employed to estimate soil properties including sodium adsorption ratio (SAR), exchangeable sodium ratio (ESR), exchangeable sodium percentage (ESP), pH, and electrical conductivity (EC). Five distinct models were employed: Partial Least Squares Regression (PLSR), bootstrapping aggregation PLSR (BgPLSR), Memory-Based Learning (MBL), Random Forest (RF), and Cubist. The calibration and assessment of model performance were carried out using several key metrics including Ratio of Performance to Deviation (RPD) and the coefficient of determination (R). Analysis of the outcomes indicates that the accuracy and precision of the mid-IR spectra surpassed that of vis-NIR spectra, except for pH, which exhibited a superior RPD compared to other properties. Notably, in the prediction of pH utilizing vis-NIR reflectance spectra, the BgPLSR model exhibited the highest accuracy and precision, boasting an RPD value of 2.56. In the domain of EC prediction, the PLSR model yielded an RPD of 2.64. For SAR, the MBL model achieved an RPD of 2.70, while ESR prediction benefited from the MBL model with an impressive RPD of 4.36. Likewise, the MBL model demonstrated remarkable precision and accuracy in ESP prediction, garnering an RPD of 4.41. The MBL model's efficacy in forecasting with limited datasets was notably pronounced among the models considered. This study underscores the valuable role of spectral predictions in facilitating the work of soil surveyors in gauging salinity and alkalinity indicators. It is recommended that the integration of spectrometry-based salinity and alkalinity predictions be incorporated into forthcoming soil mapping endeavors within semi-arid and arid regions.
干旱和气候变化的影响导致世界各地,包括伊朗在内,许多地区的土壤盐度和碱度不断上升。特别是伊朗西部的查哈多利平原,在过去十年中,这种现象显著加剧。因此,对作为土壤盐度和碱度指示物的土壤属性建模成为该地区的当务之急。迄今为止,只有少数研究通过不同光谱范围内的光谱法来评估盐度和碱度的指示物。中红外(mid-IR)、可见和近红外(vis-NIR)光谱的光谱范围被用来估计包括钠吸附比(SAR)、可交换钠比(ESR)、可交换钠百分比(ESP)、pH 值和电导率(EC)在内的土壤性质。采用了五种不同的模型:偏最小二乘回归(PLSR)、自举聚合偏最小二乘回归(BgPLSR)、基于记忆的学习(MBL)、随机森林(RF)和Cubist。通过几个关键指标,包括性能偏差比(RPD)和决定系数(R),对模型的校准和评估进行了分析。结果分析表明,除了 pH 值外,中红外光谱的准确性和精度均高于近红外光谱,而 pH 值的 RPD 值高于其他属性。值得注意的是,在利用近红外反射光谱预测 pH 值时,BgPLSR 模型表现出最高的准确性和精度,其 RPD 值为 2.56。在预测 EC 方面,PLSR 模型的 RPD 值为 2.64。对于 SAR,MBL 模型的 RPD 值为 2.70,而 ESR 预测则受益于 MBL 模型,其 RPD 值高达 4.36。同样,MBL 模型在 ESP 预测方面表现出很高的准确性和精度,其 RPD 值为 4.41。在考虑的模型中,MBL 模型在处理有限数据集的预测方面表现出显著的优越性。本研究强调了光谱预测在帮助土壤调查员评估盐度和碱度指标方面的重要作用。建议将基于光谱的盐度和碱度预测纳入半干旱和干旱地区即将进行的土壤制图工作中。