Department of Soil Science, College of Agriculture, Shiraz University, Shiraz, Iran.
Department of Agriculture and Natural Resources, Higher Education Center of Eghlid, Eghlid, Iran.
PLoS One. 2024 Sep 25;19(9):e0311122. doi: 10.1371/journal.pone.0311122. eCollection 2024.
Visible and near-infrared (Vis-NIR) reflectance spectroscopy has recently emerged as an efficient and cost-effective tool for monitoring soil parameters and provides an extensive array of measurements swiftly. This study sought to predict fundamental biological attributes of calcareous soils using spectral reflectance data in the Vis-NIR range through the application of partial least square regression (PLSR) and stepwise multiple linear regression (SMLR) techniques. The objective was to derive spectrotransfer functions (STFs) to predict selected soil biological attributes. A total of 97 composite samples were collected from three distinct agricultural land uses, i.e., sugarcane, wheat, and date palm, in the Khuzestan Province, Iran. The samples were analyzed using both standard laboratory analysis and proximal sensing approach within the Vis-NIR range (400-2500 nm). Biological status was evaluated by determining soil enzyme activities linked to nutrient cycling including acid phosphatase (ACP), alkaline phosphatase (ALP), dehydrogenase (DEH), soil microbial respiration (SMR), microbial biomass phosphorus (Pmic), and microbial biomass carbon (Cmic). The results indicated that the developed PLSR models exhibited superior predictive performance in most biological parameters compared to the STFs, although the differences were not significant. Specifically, the STFs acceptably accurately predicted ACP, ALP, DEH, SMR, Pmic, and Cmic with R2val (val = validation dataset) values of 0.68, 0.67, 0.65, 0.65, 0.76, and 0.72, respectively. These findings confirm the potential of Vis-NIR spectroscopy and the effectiveness of the associated STFs as a rapid and reliable technique for assessing biological soil quality. Overall, in the context of predicting soil properties using spectroscopy-based approaches, emphasis must be placed on developing straightforward, easily deployable, and pragmatic STFs.
可见近红外(Vis-NIR)反射光谱学最近已成为监测土壤参数的高效且经济有效的工具,能够快速提供广泛的测量结果。本研究旨在通过应用偏最小二乘回归(PLSR)和逐步多元线性回归(SMLR)技术,利用 Vis-NIR 范围内的光谱反射数据来预测钙质土壤的基本生物学属性。目标是得出光谱传递函数(STF)来预测选定的土壤生物学属性。总共从伊朗胡齐斯坦省的三个不同农业用途(甘蔗、小麦和枣椰树)收集了 97 个复合样本。这些样本使用标准实验室分析和 Vis-NIR 范围内的近程感应方法(400-2500nm)进行了分析。通过测定与养分循环有关的土壤酶活性,包括酸性磷酸酶(ACP)、碱性磷酸酶(ALP)、脱氢酶(DEH)、土壤微生物呼吸(SMR)、微生物生物量磷(Pmic)和微生物生物量碳(Cmic),来评估生物状况。结果表明,与 STFs 相比,开发的 PLSR 模型在大多数生物学参数中表现出更好的预测性能,尽管差异不显著。具体来说,STFs 可以接受地准确预测 ACP、ALP、DEH、SMR、Pmic 和 Cmic,其验证数据集(val)的 R2val 值分别为 0.68、0.67、0.65、0.65、0.76 和 0.72。这些发现证实了 Vis-NIR 光谱学的潜力,以及相关 STFs 作为快速可靠的评估土壤生物学质量技术的有效性。总的来说,在使用基于光谱的方法预测土壤特性的背景下,必须强调开发简单、易于部署和实用的 STFs。