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首页> 外文期刊>Selected Topics in Applied Earth Observations and Remote Sensing, IEEE Journal of >Analysis of the Spatio-Temporal Patterns of Water Pollution and Source Contribution Using the MODIS Sensor Products and Multivariate Statistical Techniques
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Analysis of the Spatio-Temporal Patterns of Water Pollution and Source Contribution Using the MODIS Sensor Products and Multivariate Statistical Techniques

机译:使用MODIS传感器产品和多元统计技术分析水污染和源贡献的时空格局

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Analysis of the spatio-temporal patterns and source apportionment of water pollution is important for proper management and protection of water resources. In this paper, different multivariate statistical methods were used to explore the spatio-temporal patterns of water pollution, and quantitative relationships between the important pollution parameters and environmental variables. Eleven significant parameters measured in 22 monitoring sites were preprocessed spanning between 2001 and 2007. Results of the hierarchical clustering analysis (HCA) demonstrated that this method had high flexibility for efficient classification of the monitoring sites. Results of discriminant analysis (DA) revealed that a high number of parameters contributed in discrimination of classes in the spring and summer seasons, especially in the April and September months. Recorded data of river water temperature (RWT), runoff, and two products of the MODIS sensor including the monthly Normalized Difference Vegetation Index (NDVI) and land surface temperature (LST) for the period of 2002–2007 were used as the explanatory variables. Test of NDVI and LST was based on extraction of their average values in different buffers of 250 up to 1500 m around the streams. Monthly data of group 1, a group with the highest number of monitoring sites resulting from the clustering procedure, was used for the analysis. Rotated principal component analysis (rotated PCA) was used for exploration of the quantitative relationships between the pollution parameters and environmental variables. Absolute principal component score- multivariate linear regression (APCS—MLR) was applied to quantify the source contributions for each pollution parameter. Results showed that NDVI and runoff can be considered as the efficient indicators of the non-point pollution sources such as the agricultural activities and surface weathering. NDVI showed an important role in reduction of TDS and No$_{3}^{-}$ . Multiple buffers of NDVI showed temporally variable relations with different pollution sources. LST showed high discrimination potentials for distinguishing pollutions related to biochemical activities. Although the tested environmental variables revealed some relationships with those of the water pollution sources, nevertheless for more detailed analysis of the water pollution problem, the role of other latent environmental variables should be taken into consideration.
机译:分析水污染的时空格局和源头分配对于正确管理和保护水资源非常重要。本文采用不同的多元统计方法探讨水污染的时空格局,以及重要污染参数与环境变量之间的定量关系。在2001年至2007年之间,对在22个监视站点中测量的11个重要参数进行了预处理。层次聚类分析(HCA)的结果表明,该方法具有对监视站点进行有效分类的高度灵活性。判别分析(DA)的结果表明,在春季和夏季,尤其是在四月和九月的月份中,大量的参数有助于区分班级。记录的河水温度(RWT),径流量以及MODIS传感器的两个产品(包括2002-2007年的月均归一化植被指数(NDVI)和地表温度(LST))的数据用作解释变量。 NDVI和LST的测试是基于在溪流周围250至1500 m的不同缓冲液中提取平均值的。第1组的每月数据用于分析,该组是通过聚类过程得到的监视站点数量最多的组。旋转主成分分析(旋转PCA)用于探索污染参数与环境变量之间的定量关系。应用绝对主成分评分-多元线性回归(APCS-MLR)量化每个污染参数的源贡献。结果表明,NDVI和径流可以作为农业活动和地表风化等面源污染的有效指标。 NDVI在降低TDS和No $ _ {3} ^ {-} $方面显示出重要作用。 NDVI的多个缓冲液显示出与不同污染源的时间变量关系。 LST在区分与生化活动有关的污染方面显示出很高的歧视潜力。尽管测试的环境变量揭示了与水污染源之间的某些关系,但是为了更详细地分析水污染问题,应考虑其他潜在环境变量的作用。

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