Optimal zinc level and uncertainty quantification in agricultural soils via visible near-infrared reflectance and soil chemical properties

被引:3
作者
Agyeman, Prince Chapman [1 ]
Kebonye, Ndiye Michael [2 ,3 ]
Khosravi, Vahid [1 ]
Kingsley, John [1 ]
Boruvka, Lubos [1 ]
Vasat, Radim [1 ]
Boateng, Charles Mario [4 ]
机构
[1] Czech Univ Life Sci Prague, Fac Agrobiol Food & Nat Resources, Dept Soil Sci & Soil Protect, Prague 16500, Czech Republic
[2] Univ Tubingen, Chair Soil Sci & Geomorphol, Dept Geosci, Rumelinstr 19-23, Tubingen, Germany
[3] Univ Tubingen, DFG Cluster Excellence Machine Learning, AI Res Bldg,Maria Von Linden Str 6, D-72076 Tubingen, Germany
[4] Univ Ghana, Dept Marine & Fisheries Sci, Legon, Ghana
关键词
Conditional inference forest; Zinc; Agricultural soil; Spectral reflectance; Uncertainty assessment; HEAVY-METALS; SPECTROSCOPY; PREDICTION; CONTAMINATION; QUALITY; SAMPLES; LEAD;
D O I
10.1016/j.jenvman.2022.116701
中图分类号
X [环境科学、安全科学];
学科分类号
08 ; 0830 ;
摘要
Zinc (Zn) is a vital element required by all living creatures for optimal health and ecosystem functioning. Therefore, several researchers have modeled and mapped its occurrence and distribution in soils. Nonetheless, leveraging model predictive performances while coupling information derived from visible near-infrared (Vis-NIR) and soils (i.e. chemical properties) to estimate potential toxic elements (PTEs) like Zn in agricultural soils is largely untapped. This study applies two methods to rapidly monitor Zn concentration in agricultural soil. Firstly, employing Vis-NIR and machine learning algorithms (MLAs) (Context 1) and secondly, applying Vis-NIR, soil chemical properties (SCP), and MLAs (Context 2). For the Vis-NIR information, single and combined pretreat-ment methods were applied. The following MLAs were used: conditional inference forest (CIF), partial least squares regression (PLSR), M5 tree model (M5), extreme gradient boosting (EGB), and support vector machine regression (SVMR) respectively. For context 1, the results indicated that M5-MSC (M5 tree model-multiplicative scatter correction) with coefficient of determination (R2) = 0.72, root mean square error (RMSE) = 21.08 (mg/ kg), median absolute error (MdAE) = 13.69 and ratio of performance to interquartile range (RPIQ) = 1.63 was promising. Regarding context 2, CIF with spectral pretreatment and soil properties [CIF-DWTLOGMSC + SCP (conditional inference forest-discrete wavelet transformation-logarithmic transformation-multiplicative scatter correction-soil chemical properties)] yielded the best performance of R2 = 0.86, RMSE = 14.52 (mg/kg), MdAE = 6.25 and RPIQ = 1.78. Altogether, for contexts 1 and 2, the CIF-DWTLOGMSC + SCP approach (context 2) was the best Zn model outcome for the agricultural soil. The uncertainty map revealed a low to high error distribution in context 1, and a low to moderate distribution in context 2 for all models except CIF, which had some patches with high uncertainty. We conclude that a multiple optimization approach for modeling Zn levels in agricultural soils is invaluable and may provide fast and reliable information needed for area-specific decision-making.
引用
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页数:15
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