The impact of weather conditions on the quality of groundwater in the area of a municipal waste landfill

Pub Date : 2023-09-01 DOI:10.2478/environ-2023-0013
Dominika Dąbrowska, Wojciech Rykała, Vahid Nourani
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Abstract

Abstract The quality of groundwater in the source area of pollution depends on many factors, including the weather and hydrogeological conditions within the given area. Anassessment of water quality can be carried out based on data obtained from sensors placed in boreholes. This research examined the influence of air and water temperature, groundwater table position and precipitation on the value of electrical conductivity in groundwater in a selected piezometer belonging to the monitoring network of the Quaternary aquifer in the area of a waste landfill site in Tychy-Urbanowice in southern Poland. The influence of individual factors was checked by using twenty neural network architectures of a Multilayer Perceptron Model (MLP). Each of these indicated factors were selected as input variables. Ultimately, three neural networks were selected, which were characterized by the smallest validation and test errors and showed the highest learning quality. The significance of individual variables for the effectiveness of the model was checked using a global sensitivity analysis. Three selected MLP models contained seven to nine neurons in the hidden layer and used a linear or exponential function as the hidden and output activation. The maximum test quality was 0.8369, while the smallest test error was 0.0011. The results of the sensitivity analysis highlighted the important role of water temperature and water table position on the conductivity value. The obtained goodness of fit results of the models to the input data allowed us to conclude that the MLP was applicable to such forecasts and can be extended by the analysis of further factors.
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气象条件对某城市垃圾填埋区地下水水质的影响
污染源区地下水的质量取决于许多因素,包括给定区域内的天气和水文地质条件。根据安装在钻孔中的传感器获得的数据,可以对水质进行评估。本研究在波兰南部Tychy-Urbanowice的一个垃圾填埋场的第四纪含水层监测网中选择了一个压力表,研究了空气和水温、地下水位和降水对地下水电导率值的影响。利用多层感知器模型(MLP)的20个神经网络结构来检验个体因素的影响。每一个这些指示的因素被选为输入变量。最终选出验证和测试误差最小、学习质量最高的3个神经网络。个体变量对模型有效性的显著性使用全局敏感性分析进行检查。所选择的三个MLP模型在隐藏层包含7到9个神经元,并使用线性或指数函数作为隐藏和输出激活。试验质量最大值为0.8369,试验误差最小值为0.0011。敏感性分析结果突出了水温和水位位置对电导率值的重要影响。得到的模型与输入数据的拟合优度结果使我们得出结论,MLP适用于这种预测,并且可以通过分析进一步的因素来扩展。
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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