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Application Of An Unsupervised Artificial Neural Network Technique To Multivariant Surface Water Quality Data

机译:无监督人工神经网络技术在多元地表水质数据中的应用

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Surface water contamination from agricultural and urban runoff and wastewater discharges from industrial and municipal activities is of major concern to people worldwide. Classical models can be insufficient to visualise the results because the water quality variables used to describe dynamic pollution sources are complex, multivariable, and nonlinearly related. Artificial intelligence techniques with the ability to analyse multivariant water quality data by means of a sophisticated visualisation capacity can offer an alternative to current models. In this study, the Kohonen self-organising feature maps (SOM) neural network was initially applied to analyse the complex nonlinear relationships among multivariable surface water quality variables using the component planes of the variables to determine the complex behaviour of water quality parameters. The dependencies between water quality variables were extracted and interpreted using the pattern analysis visualised in component planes. For further investigation, the k-means clustering algorithm was used to determine the optimal number of clusters by partitioning the maps and utilising the Davies-Bouldin clustering index, leading to seven groups or clusters corresponding to water quality variables. The results reveal that the concentrations of Na, K, Cl, NH_4-N, NO_2-N, 0-PO_4, component planes of organic matter (pV), and dissolved oxygen (DO) were significantly affected by seasonal changes, and that the SOM technique is an efficient tool with which to analyse and determine the complex behaviour of multidimensional surface water quality data. These results suggest that this technique could also be applied to other environmentally sensitive areas such as air and groundwater pollution.
机译:来自农业和城市径流的地表水污染以及来自工业和市政活动的废水排放是全世界人们最关注的问题。经典模型可能不足以使结果可视化,因为用于描述动态污染源的水质变量是复杂,多变量且非线性相关的。借助先进的可视化功能能够分析多变量水质数据的人工智能技术可以为当前模型提供替代方案。在这项研究中,Kohonen自组织特征图(SOM)神经网络最初用于分析多变量地表水质量变量之间的复杂非线性关系,并使用变量的组成平面来确定水质参数的复杂行为。水质变量之间的依存关系是使用组成平面中可视化的模式分析来提取和解释的。为了进一步研究,使用k均值聚类算法通过划分地图并利用Davies-Bouldin聚类指数来确定最佳聚类数,从而得出对应于水质变量的七个组或聚类。结果表明,Na,K,Cl,NH_4-N,NO_2-N,0-PO_4的浓度,有机物的组分平面(pV)和溶解氧(DO)受到季节变化的显着影响,并且SOM技术是一种有效的工具,可用来分析和确定多维地表水质数据的复杂行为。这些结果表明,该技术还可以应用于其他对环境敏感的领域,例如空气和地下水污染。

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