Optimization of the water quality monitoring network in a basin with intensive agriculture using artificial intelligence algorithms

Water Supply Pub Date : 2023-12-22 DOI:10.2166/ws.2023.336
K. Mendivil-García, José Luis Medina, Héctor Rodríguez-Rangel, A. Roé-Sosa, L. Amábilis-Sosa
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Abstract

This research applies artificial intelligence algorithms for optimizing the water quality monitoring network in a representative basin with intensive agricultural and livestock activities. This study used the water quality database provided by the National Water Commission (CONAGUA). Bi-monthly monitoring was registered from 2013 to 2020 for 23 water quality parameters in 23 sampling locations in tributaries and the mainstream river. Therefore, it was necessary to apply principal component analysis to reduce the dimensionality of the data and thus identify the parameters that contribute most to the variation in the water quality. This artificial intelligence algorithm promoted the ease of clustering sampling sites with similar water quality characteristics by reducing the number of variables involved in the database. The reduction highlighted nutrients (TN and TP), parameters related to dissolved organic matter (NH3-N and TOC), and pathogens such as fecal coliforms. The similarity of sampling sites was determined through hierarchical clustering using the Euclidean distance as a measure of dissimilarity and the Ward method as a grouping method. As a result, nine clusters were obtained for the rainy and dry seasons, reducing approximately 50% of the sampling sites and generating an optimized network of 11 sampling sites.
利用人工智能算法优化集约农业流域的水质监测网络
本研究采用人工智能算法,对一个农业和畜牧业活动密集的代表性流域的水质监测网络进行优化。本研究使用了国家水务委员会(CONAGUA)提供的水质数据库。从 2013 年到 2020 年,在支流和主流河流的 23 个采样点对 23 个水质参数进行了双月监测。因此,有必要应用主成分分析来降低数据的维度,从而确定对水质变化影响最大的参数。这种人工智能算法通过减少数据库中的变量数量,便于对具有相似水质特征的采样点进行分组。减少的变量主要是营养物质(TN 和 TP)、与溶解有机物有关的参数(NH3-N 和 TOC)以及病原体(如粪大肠菌群)。采样点的相似性是通过分层聚类确定的,采用欧氏距离作为差异度量,沃德法作为分组方法。结果,雨季和旱季共得到 9 个聚类,减少了约 50%的采样点,生成了一个由 11 个采样点组成的优化网络。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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