利用机器学习算法有效预测水质指数(WQI)

M. Hassan, M. Hassan, L. Akter, M. Monibor Rahman, S. Zaman, Khan Md Hasib, Nusrat Jahan, Raisun Nasa Smrity, Jerin Farhana, M. Raihan, Swarnali Mollick
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引用次数: 24

摘要

水的质量对人类健康和环境都有直接影响。水被用于多种用途,包括饮用、农业和工业用途。水质指数(WQI)是水管理的重要指标。这项工作的目的是使用机器学习技术,如RF、NN、MLR、SVM和BTM,对印度各地的水质数据集进行分类。水质是由溶解氧(DO)、总大肠菌群(TC)、生物需氧量(BOD)、硝酸盐、pH和电导率(EC)等特征决定的。这些特征分五个步骤处理:使用最小-最大归一化的数据预处理和使用RF的缺失数据管理,特征相关性,应用机器学习分类和模型的特征重要性。本研究的最高准确率Kappa为99.83,accuracy Lower为99.17,accuracy Upper为99.07,99.99。结果表明,硝酸盐、PH、电导率、DO、TC和BOD是影响水质有序分类的关键品质,其变量重要值分别为74.78、36.805、81.494、105.770、105.166和130.173。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Efficient Prediction of Water Quality Index (WQI) Using Machine Learning Algorithms
The quality of water has a direct influence on both human health and the environment. Water is utilized for a variety of purposes, including drinking, agriculture, and industrial use. The water quality index (WQI) is a critical indication for proper water management. The purpose of this work was to use machine learning techniques such as RF, NN, MLR, SVM, and BTM to categorize a dataset of water quality in various places across India. Water quality is dictated by features such as dissolved oxygen (DO), total coliform (TC), biological oxygen demand (BOD), Nitrate, pH, and electric conductivity (EC). These features are handled in five steps: data pre-processing using min-max normalization and missing data management using RF, feature correlation, applied machine learning classification, and model’s feature importance. The highest accuracy Kappa, Accuracy Lower, and Accuracy Upper findings in this research are 99.83, 99.17, 99.07, and 99.99, respectively. The finding showed that Nitrate, PH, conductivity, DO, TC, and BOD are the key qualities that contribute to the orderly classification of water quality, with Variable Importance values of 74.78, 36.805, 81.494, 105.770, 105.166, and 130.173, respectively.
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