Water-Quality-Analysis using Machine Learning

Raavi Akshay, Gadiraju Tarun, Pinapothini Uday Kiran, K. Devi, M. Vidhyalakshmi
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Abstract

One of the most serious and alarming problems facing humanity is the degradation of natural water resources such as lakes as well as rivers is one of the most serious and vexing problems we are facing today. The long-term effects of polluted water affect all areas of life. Therefore, it is essential to manage water resources if you want tomaximize the quality of your water. If data are examinedand water quality can be predicted, the effects of watercontamination can be dealt with effectively. The purpose of this study is to use machine learning to make a water qualityprediction model based on water quality measurements. Machine learning can be used for building models fromalgorithms with some data gathered from the sick ones. For a better examination of parametric findings, the acquired data will be pre-processed, separated into training and testing parts, and subjected to machine learning classification techniques. Decision tree, Naive Bayes, Random Forest, Support Vector Machine, and K-Nearest Neighbor are some of the classification-type algorithms employed in this work. All the model's performance indicators are calculated, and they change for each model. A technique for improving machine learning model performance metrics is hyperparameter tuning.
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使用机器学习进行水质分析
人类面临的最严重和令人震惊的问题之一是湖泊和河流等自然水资源的退化,这是我们今天面临的最严重和令人烦恼的问题之一。水污染的长期影响影响到生活的各个方面。因此,如果你想最大限度地提高水的质量,管理水资源是必不可少的。如果数据被检查并且水质可以被预测,水污染的影响可以被有效地处理。本研究的目的是利用机器学习建立基于水质测量的水质预测模型。机器学习可以用从病人身上收集的一些数据来建立模型。为了更好地检查参数发现,获取的数据将被预处理,分为训练和测试部分,并进行机器学习分类技术。决策树、朴素贝叶斯、随机森林、支持向量机和k近邻是这项工作中使用的一些分类类型算法。计算所有模型的性能指标,每个模型的性能指标都是不同的。一种改进机器学习模型性能指标的技术是超参数调优。
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