MAPPING IMPACT OF INTENSE RAINFALL ON A HIGHSEVERITY BURNED AREA USING PRINCIPAL COMPONENT ANALYSIS

被引:2
|
作者
Francos, M. [1 ]
Pereira, P. [2 ]
Ubeda, X. [1 ]
机构
[1] Univ Barcelona, GRAM, Dept Geog, Montalegre 6, Barcelona 08001, Spain
[2] Mykolas Romeris Univ, Environm Management Ctr, Vilnius, Lithuania
来源
CUADERNOS DE INVESTIGACION GEOGRAFICA | 2019年 / 45卷 / 02期
关键词
wildfire; spatial modeling; principal component analysis; soil chemical properties; intense rainfall; SPATIAL VARIABILITY; SOIL PROPERTIES; FOREST-FIRE; GEOSTATISTICAL ANALYSIS; AGGREGATE STABILITY; SCALE VARIABILITY; HEAVY-METAL; ASH; SEVERITY; WILDFIRE;
D O I
10.18172/cig.3516
中图分类号
P9 [自然地理学];
学科分类号
0705 ; 070501 ;
摘要
High-severity wildfires have a major impact on soil properties. Moreover, recently burned areas are highly sensitive to intense rainfall events. However, little is known about the impact of extreme rainfall on the relationship between soil properties and their spatial distribution. The objective of this study is to examine the effects of an intense rainfall event on soil properties and their spatial distribution in a small area using principal component analysis (PCA). The variables studied were aggregate stability (AS), total nitrogen (TN), soil organic matter (SOM), inorganic carbon (IC), C/N ratio, calcium carbonates (CaCO3), pH, electrical conductivity (EC), available phosphorus (P), extractable calcium (Ca), extractable magnesium (Mg), extractable sodium (Na) and extractable potassium (K). Each PCA (before and after intense rainfall event) allowed us to extract five factors. Factor 1 in the pre-intense rainfall event PCA explained the variance of EC, available P, extractable Mg and K; factor 2 accounted for TN, SOM (high loadings), IC and CaCO3 (low loadings); factor 3 explained AS, extractable Ca and Na; and, factors 4 and 5 accounted for C/N and pH, respectively. Factor 1 in the after intense rainfall event PCA explained the variance of TN, SOM, EC, available P, extractable Mg and K (high loadings) and pH (low loading); factor 2 accounted for IC and CaCO3; factor 3 explained extractable Ca and Na; factor 4 accounted for AS; and, factor 5 for C/N. The results showed that the intense rainfall event changed the relationship between the variables, strengthening the correlation between them, especially in the case of TN, SOM, EC, available P, extractable Mg and extractable Ca with AS. In the case of the pre-intense rainfall event PCA, the best-fit variogram models were: factors 1 and 2 -the linear model; factors 3 and 4- the pure nugget effect; and, factor 5 -the spherical model. In the case of the factors after intense rainfall event PCA, with the exception of factor 5 (spherical model), the best fit model was the linear model. The PCA score maps illustrated a marked change in the spatial distribution of the variables before and after the intense rainfall event. Important differences were detected in AS, pH, C/N IC, CaCO3, extractable Ca and Na.
引用
收藏
页码:601 / 621
页数:21
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