An Empirical Evaluation of Machine Learning Algorithms for Groundwater Quality Classification

Vinay Kumar Domakonda, K. Sasirekha, S. Sangeetha, U. L, Nagendiran S, M. J. Kumar
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Abstract

Groundwater is an effective monitoring system is essential, one of the most vulnerable resources. The use of spatial data to measure spatial changes in groundwater one of the most key things of soil monitoring. As a result, the most important water constituents based on groundwater characteristics is critical for an effective soil monitoring programmed the development of an efficient reference system that estimates. We evaluated the performance of neural network (NN)-based algorithms and event prediction models (EPM)) to estimate the severity of SS in some Indian regions throughout this study. Using 16 years of We developed a regional and local model remote sensing dataset to estimate the SS of the entire Indian basin and each catchment in the study area. Based on EPM and NN regional models had accuracy and SS of 88%, 96%, 88%, and 87%, The estimation and SS outperformed both the regional and spatial NN by 50-84% and 71-84%, whereas the local model was the empirically derived model, respectively. Consequently, according to the findings, machine learning methods should be used to accurately and continuously monitor groundwater quality parameters. In complex topography of India and other similar land classifications.
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地下水水质分类机器学习算法的实证评价
地下水是有效监测系统必不可少的、最脆弱的资源之一。利用空间数据测量地下水的空间变化是土壤监测中最关键的内容之一。因此,以地下水特征为基础的最重要的水成分对于有效的土壤监测方案和有效的参考系统的发展至关重要。在整个研究过程中,我们评估了基于神经网络(NN)的算法和事件预测模型(EPM)的性能,以估计印度一些地区SS的严重程度。利用16年的数据,我们开发了一个区域和局部模型遥感数据集,以估计整个印度盆地和研究区每个集水区的SS。基于EPM和神经网络的区域模型准确率分别为88%、96%、88%和87%,比区域和空间神经网络分别高出50-84%和71-84%,而局部模型则分别为经验推导模型。因此,根据研究结果,应该使用机器学习方法来准确连续地监测地下水质量参数。在地形复杂的印度和其他类似的土地分类。
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