Unsupervised Classification of Water Quality Using Artificial Intelligence: The Case of the Moulouya Wadi's Surface Waters (NE, Morocco)

IF 0.8 Q3 ENGINEERING, MULTIDISCIPLINARY
T. Manssouri, I. Manssouri, A. El Hmaidi, H. Sahbi, Othmane Noureddine
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引用次数: 0

Abstract

Due to its cruciality, water requires a high care to its physicochemical and microbiological properties to ensure the quality of several utilizations. The particles it carries are likely to be ingested, breathed, or come into contact with the skin. For the classification of the quality of surface water in the Moulouya River (NE, Morocco), this study presents many unsupervised classification methods. The overall quality of surface water in the Moulouya River in northeast Morocco was assessed using nine physicochemical parameters (pH, T°C, EC, O2-diss, NH4+, NO3-, SO42-, PO43-, and biological oxygen demand after 5 days (BOD5)) from March to August 2014. Over a 600-kilometer stretch, twenty-two sites were examined, from the river's source in the High Atlas to its mouth in the Mediterranean. During the first stage, three quality classes (excellent, good and poor) were defined by the calculation of the water quality index (WQI) and water quality evaluation system (QES-Water). In the second stage, the K-means algorithm, the fuzzy C-means algorithm and the self-organizing maps (SOM) of Kohonen were applied to the nine physicochemical parameters used as input variables for the model. The classification method used is capable of projecting high-dimensional data into a lower dimension, typically 2D. This nonlinear projection can be useful in classes’ analysis and their discovery. In terms of performance, the SOM classification showed very close results compared to the K-means and the fuzzy C-means algorithms, with only an insignificant difference across the three models, with SOM maps having a slight advantage.
基于人工智能的无监督水质分类——以摩洛哥东北部穆卢亚河地表水为例
由于其重要性,水需要高度关注其物理化学和微生物特性,以确保几种利用的质量。它携带的颗粒很可能被摄入、呼吸或与皮肤接触。针对摩洛哥东北部Moulouya河地表水水质的分类问题,提出了多种无监督分类方法。2014年3- 8月,采用9个理化参数(pH、T°C、EC、O2-diss、NH4+、NO3-、SO42-、PO43-和5天后生物需氧量(BOD5))对摩洛哥东北部Moulouya河地表水的整体水质进行了评价。从高阿特拉斯河的源头到地中海的河口,在长达600公里的范围内,对22个地点进行了检查。第一阶段通过计算水质指数(WQI)和水质评价体系(QES-Water),确定水质等级为优、良、差3个等级。在第二阶段,将K-means算法、模糊C-means算法和Kohonen的自组织映射(SOM)应用于作为模型输入变量的9个理化参数。所使用的分类方法能够将高维数据投射到较低的维度,通常是2D。这种非线性投影在类的分析和发现中很有用。在性能方面,与K-means和模糊C-means算法相比,SOM分类的结果非常接近,三种模型之间的差异不显著,SOM地图具有轻微的优势。
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来源期刊
CiteScore
1.80
自引率
14.30%
发文量
62
期刊介绍: "International Journal of Engineering Research in Africa" is a peer-reviewed journal which is devoted to the publication of original scientific articles on research and development of engineering systems carried out in Africa and worldwide. We publish stand-alone papers by individual authors. The articles should be related to theoretical research or be based on practical study. Articles which are not from Africa should have the potential of contributing to its progress and development.
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