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利用红外光谱和地理空间技术进行土壤性质的测量和空间预测。

Use of infrared spectroscopy and geospatial techniques for measurement and spatial prediction of soil properties.

作者信息

Takele Chalsissa, Iticha Birhanu

机构信息

Soil Fertility Improvement and Soil and Water Conservation Research Core Process, Oromia Agricultural Research Institute, P. O. Box 587, Nekemte, Ethiopia.

Department of Soil Resources and Watershed Management, Wollega University, P. O. Box 38, Shambu, Ethiopia.

出版信息

Heliyon. 2020 Oct 23;6(10):e05269. doi: 10.1016/j.heliyon.2020.e05269. eCollection 2020 Oct.

Abstract

The main aim of this research was to assess the use of mid-infrared (MIR) spectroscopy and geostatistical model for the evaluation and mapping of the spatial variability of some selected soil properties across a field. It is with the view of aiding site-specific soil management decisions. The performance of the model for the prediction of the components (soil parameters) was reported using the coefficient of determination (R) and root mean square error (RMSE) values of the validation data set. Results revealed that least square regression model performed better in predicting cation exchange capacity-CEC (R = 0.88 and RMSE = 8.98), soil organic carbon-OC (R = 0.88, RMSE = 0.55), and total nitrogen-TN (R = 0.91 and RMSE = 0.04). The first five principal components (PC) accounted for 78.17% of the total variance (PC1 = 25.75%, PC2 = 18.06%, PC3 = 13.85%, PC4 = 11.12%, and PC5 = 9.39%) and represented most of the variation within the data set. The coefficient of variation ranged from 6.73% for soil pH to 57.02% for available phosphorus (av. P). The soil pH values ranged from 4.21 to 6.57. The mean soil OC density was 2.14 kg m within 50 cm soil depth. Nearly 96-97% of the soils contained av. P and sulfur ( -S) below the critical levels. The overall results revealed that soil properties varied spatially. Hence, we suggest that mapping the spatial variability of soils across a field is a cost-effective solution for soil management.

摘要

本研究的主要目的是评估中红外(MIR)光谱法和地统计模型在评价和绘制田间某些选定土壤性质空间变异性方面的应用。目的是辅助进行特定地点的土壤管理决策。使用验证数据集的决定系数(R)和均方根误差(RMSE)值报告了模型对各成分(土壤参数)的预测性能。结果表明,最小二乘回归模型在预测阳离子交换容量-CEC(R = 0.88,RMSE = 8.98)、土壤有机碳-OC(R = 0.88,RMSE = 0.55)和总氮-TN(R = 0.91,RMSE = 0.04)方面表现更好。前五个主成分(PC)占总方差的78.17%(PC1 = 25.75%,PC2 = 18.06%,PC3 = 13.85%,PC4 = 11.12%,PC5 = 9.39%),代表了数据集中的大部分变异。变异系数范围从土壤pH值的6.73%到有效磷(av. P)的57.02%。土壤pH值范围为4.21至6.57。在50厘米土壤深度内,土壤有机碳平均密度为2.14千克/立方米。近96 - 97%的土壤有效磷和硫( -S)含量低于临界水平。总体结果表明土壤性质存在空间变异。因此,我们建议绘制田间土壤的空间变异性图是一种具有成本效益的土壤管理解决方案。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/2a68/7610232/43b944ce192d/gr1.jpg

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