Using grey clustering to evaluate nitrogen pollution in estuaries with limited data

Autor: Inmaculada Romero, Sara Patricia Ibarra-Zavaleta, Regina Temino-Boes, Rabindranarth Romero-Lopez
Rok vydání: 2020
Předmět:
Zdroj: RiuNet. Repositorio Institucional de la Universitat Politécnica de Valéncia
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ISSN: 1879-1026
Popis: [EN] Many techniques exist for the evaluation of nutrient pollution, but most of them require large amounts of data and are difficult to implement in countries where accurate water quality information is not available. New methods tomanage subjectivity, inaccuracy or variability are required in such environments so that watermanagers can invest the scarce economic resources available to restore themost vulnerable areas. We propose a new methodology based on grey clusteringwhich classifies monitoring sites according to their need for nitrogen pollution management when only small amounts of data are available. Grey clustering focuses on the extraction of information with small samples, allowing management decision making with limited data. We applied the entropy-weight method, based on the concept of information entropy, to determine the clustering weight of each criterion used for classification. In order to reference the pollution level to the anthropogenic pressure, we developed two grey indexes: the Grey Nitrogen Management Priority index (GNMP index) to evaluate the relative need for nitrogen pollution management based on a spatiotemporal analysis of total nitrogen concentrations, and the Grey Land Use Pollution index (GLUP index), which evaluates the anthropogenic pressures of nitrogen pollution based on land use. Both indexes were then confronted to validate the classification. We applied the developedmethodology to eight estuaries of the SouthernGulf ofMexico associated to beaches,mangroves and other coastal ecosystems which may be threatened by the presence of nitrogen pollution. The application of the new method has proved to be a powerful tool for decision making when data availability and reliability are limited. This method could also be applied to assess other pollutants.
This work was supported by Erasmus Mundus -MAYANET Grant Agreement Number 2014-0872/001-001, funded with support of the European Commission, and an Excellence Scholarship awarded by the Mexican Government through the Mexican Agency for International Development Cooperation (AMEXCID). The Mexican National Water Commission provided the field data.
Databáze: OpenAIRE