Application of Machine Learning Techniques In Forecasting Groundwater Levels in the Grootfontein Aquifer

Yolanda Kanyama, Ritesh Ajoodha, H. Seyler, Ndivhuwo Makondo, H. Tutu
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引用次数: 7

Abstract

In this paper, we attempt to provide a data driven solution to model groundwater levels in the Grootfontein Aquifer in the North West Province of South Africa by testing several predictive models. Groundwater plays a crucial role in supplying water to a significant part of the population for agricultural, industrial, environmental and/or domestic use. Recent advancements in data analytics, and the analysis of large data sets has allowed the production of powerful predictive models. Five different data driven techniques namely, support vector regression, gradient boosting trees, decision trees, random forest regression and multilayer feed-forward neural network techniques were applied to predict groundwater levels. Modelling was carried out for four boreholes located in the Grootfontein dolomite aquifer considering discharge, rainfall and temperature as model inputs. Five site specific models were developed for each borehole. Model performance was evaluated using coefficient of determination and root mean squared error. Comparison of goodness of fit revealed that data driven methods can indeed capture the trend of water level fluctuations in the aquifer sufficiently with the GB algorithm performing better than other algorithms in both the training and verification stages. Whilst the models performed adequately when predicting groundwater level on a monthly basis for 36 months, further investigation is needed towards determining their efficacy in longer term projections to assist in the decision making process of sustainable groundwater use. This paper provides the following contributions: (a) a ranking of the attributes according to their mutual information (MI); (b) a reference for model selection; and (c) a predictive model to forecast groundwater levels in the Grootfontein aquifer.
机器学习技术在Grootfontein含水层地下水位预测中的应用
在本文中,我们试图通过测试几个预测模型,为南非西北省Grootfontein含水层的地下水位模型提供一个数据驱动的解决方案。地下水在向大部分人口供水以供农业、工业、环境和/或家庭使用方面起着至关重要的作用。数据分析的最新进展,以及对大型数据集的分析,使得强大的预测模型得以产生。采用支持向量回归、梯度增强树、决策树、随机森林回归和多层前馈神经网络等5种数据驱动技术对地下水位进行预测。对位于Grootfontein白云岩含水层的四个钻孔进行了建模,将流量、降雨量和温度作为模型输入。每个钻孔开发了五个特定于现场的模型。采用决定系数和均方根误差对模型性能进行评价。拟合优度对比表明,数据驱动方法确实能够充分捕捉含水层水位波动趋势,其中GB算法在训练和验证阶段均优于其他算法。虽然这些模型在预测36个月的每月地下水位方面表现良好,但需要进一步调查以确定它们在长期预测方面的效力,以协助可持续利用地下水的决策过程。本文提供了以下贡献:(a)根据互信息(MI)对属性进行排序;(b)模式选择的参考;(c)一个预测Grootfontein含水层地下水位的预测模型。
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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