A Prediction of Water Quality Analysis Using Machine Learning

Suma S, Rohit Moon, Mohammed Umer, K. S. Raju, Nuthanakanti Bhaskar, Rakshita Okali
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Abstract

Data on water quality in Kenya is analyzed using a decision tree classification model. Using data mining techniques based on parameters related to water quality, the decision tree algorithm helps predict clean water. A predictive model was developed to identify water samples requiring further analysis in order to streamline the work of laboratory technologists. WEKA software was used to implement the model based on secondary data collected from the Kenya Water Institute. Water samples were classified into clean and contaminated categories using the decision tree algorithm. A crucial factor for evaluating water quality is its alkalinity and conductivity. Public health and safety depend on access to clean drinking water. Researchers used five decision tree classifiers to evaluate the model’s accuracy: J48, LMT, Random Forest, Hoeffding Tree, and Decision Stump
利用机器学习预测水质分析
使用决策树分类模型分析肯尼亚水质数据。决策树算法利用基于水质相关参数的数据挖掘技术,帮助预测干净的水。为了简化实验室技术人员的工作,开发了一个预测模型来确定需要进一步分析的水样。使用WEKA软件来实现基于从肯尼亚水研究所收集的二次数据的模型。采用决策树算法将水样分为洁净水样和污染水样。评价水质的一个关键因素是其碱度和电导率。公共健康和安全取决于能否获得清洁饮用水。研究人员使用五种决策树分类器来评估模型的准确性:J48、LMT、Random Forest、Hoeffding tree和decision Stump
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