2015
DOI: 10.3808/jei.201500297
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Spatiotemporal Classification Analysis of Long-Term Environmental Monitoring Data in the Northern Part of Lake Taihu, China by Using a Self-Organizing Map

Abstract: Characterizing the spatiotemporal patterns of water bodies is an important environmental issue in the management and protection of water resources. The primary objective of this study was to assess the spatiotemporal characteristics of environmental monitoring data from Lake Taihu to improve water pollution control practices. A methodologically systematic application of a self-organizing map (SOM) was utilized for data mining in the northern part of Lake Taihu, China. The monitoring data set contained 14 varia… Show more

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Cited by 4 publications
(3 citation statements)
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“…In addition, a simpler model structure means that the propagation of uncertainty from different sources is easier to assess. The use of data-driven models, such as neural networks, statistical methods or regression-based techniques (e.g., Li et al, 2015b, Li et al, 2015cYang et al, 2015), has been widespread in hydrology, particularly for short term daily flow rate forecasts, using a variety of input variables (Garen, 1992;Zealand et al, 1999;Campolo et al, 1999;Schilling and Walter, 2005;Adamowski and Sun, 2010;Duncan et al, 2011;Li et al, 2015a;Nourani et al, 2015). A recent regression based study predicted flow in the Bow River in Calgary, using a base difference regression model (Veiga et al, 2014).…”
Section: Introductionmentioning
confidence: 99%
“…In addition, a simpler model structure means that the propagation of uncertainty from different sources is easier to assess. The use of data-driven models, such as neural networks, statistical methods or regression-based techniques (e.g., Li et al, 2015b, Li et al, 2015cYang et al, 2015), has been widespread in hydrology, particularly for short term daily flow rate forecasts, using a variety of input variables (Garen, 1992;Zealand et al, 1999;Campolo et al, 1999;Schilling and Walter, 2005;Adamowski and Sun, 2010;Duncan et al, 2011;Li et al, 2015a;Nourani et al, 2015). A recent regression based study predicted flow in the Bow River in Calgary, using a base difference regression model (Veiga et al, 2014).…”
Section: Introductionmentioning
confidence: 99%
“…In this context, the analysis of the relationship among physical, chemical, and biological character-istics of the environment is becoming crucial (Huang and Chang, 2003). Many methods for environmental monitoring have been proposed in recent studies, demonstrating that the debate among scholars on this issue is very lively (Li et al, 2015;Yang et al, 2015;Rege et al, 2015). Since changes in environmental factors involve qualitative modifications in species composition, the most direct and effective measure of water body condition is the status of its living systems (Pompeu et al, 2005).…”
Section: Introductionmentioning
confidence: 99%
“…While there are many different approaches to explore the relationship of variables, multivariate statistical tech-niques including cluster analysis, principle component analysis, factor analysis, discriminant analysis, and self-organizing map are most frequently adopted to qualitatively identify critical influential factors on water quality and spatial and temporal variations from complex data sets Panda et al, 2006;Shrestha and Kazama, 2007;Li et al, 2015). In particular, these methods have the merit of computational simplicity and provide a geometrically intuitive interpretation due to the data matrix structure, for instance, in the principal component analysis.…”
Section: Introductionmentioning
confidence: 99%