Zhang Zhiming, Ouyang Zhiyun, Xiao Yi, Xiao Yang, Xu Weihua
State Key Laboratory of Urban and Regional Ecology, Research Center for Eco-Environmental Sciences, Chinese Academy of Sciences, Beijing, 100085, China.
School of Ecology and Environmental Science, Yunnan University, Kunming, 650091, China.
Environ Monit Assess. 2017 Jun;189(6):269. doi: 10.1007/s10661-017-5976-5. Epub 2017 May 16.
Increasing exploitation of karst resources is causing severe environmental degradation because of the fragility and vulnerability of karst areas. By integrating principal component analysis (PCA) with annual seasonal trend analysis (ASTA), this study assessed karst rocky desertification (KRD) within a spatial context. We first produced fractional vegetation cover (FVC) data from a moderate-resolution imaging spectroradiometer normalized difference vegetation index using a dimidiate pixel model. Then, we generated three main components of the annual FVC data using PCA. Subsequently, we generated the slope image of the annual seasonal trends of FVC using median trend analysis. Finally, we combined the three PCA components and annual seasonal trends of FVC with the incidence of KRD for each type of carbonate rock to classify KRD into one of four categories based on K-means cluster analysis: high, moderate, low, and none. The results of accuracy assessments indicated that this combination approach produced greater accuracy and more reasonable KRD mapping than the average FVC based on the vegetation coverage standard. The KRD map for 2010 indicated that the total area of KRD was 78.76 × 10 km, which constitutes about 4.06% of the eight southwest provinces of China. The largest KRD areas were found in Yunnan province. The combined PCA and ASTA approach was demonstrated to be an easily implemented, robust, and flexible method for the mapping and assessment of KRD, which can be used to enhance regional KRD management schemes or to address assessment of other environmental issues.
由于喀斯特地区的脆弱性,对喀斯特资源的开发利用日益增加,正导致严重的环境退化。本研究通过将主成分分析(PCA)与年度季节趋势分析(ASTA)相结合,在空间背景下评估了喀斯特石漠化(KRD)。我们首先使用二分像元模型,从中等分辨率成像光谱仪归一化植被指数生成植被覆盖度(FVC)数据。然后,我们使用主成分分析生成年度FVC数据的三个主要成分。随后,我们使用中位数趋势分析生成FVC年度季节趋势的坡度图像。最后,我们将FVC的三个主成分和年度季节趋势与每种碳酸盐岩类型的KRD发生率相结合,基于K均值聚类分析将KRD分为四类之一:高、中、低和无。精度评估结果表明,这种组合方法比基于植被覆盖标准的平均FVC产生了更高的精度和更合理的KRD制图。2010年的KRD地图显示,KRD总面积为78.76×10平方公里,约占中国西南八省的4.06%。KRD面积最大的地区位于云南省。主成分分析和年度季节趋势分析相结合的方法被证明是一种易于实施、稳健且灵活的KRD制图和评估方法,可用于加强区域KRD管理方案或解决其他环境问题的评估。