利用水质指数模型评估机器学习方法在预测阿尔巴尼亚什昆比尼河水质方面的性能

IF 1 4区 环境科学与生态学 Q4 ENVIRONMENTAL SCIENCES
Lule Basha, Bederiana Shyti, L. Bekteshi
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引用次数: 0

摘要

水质指数(WQI)法是评估全球地表水和地下水系统整体水质状况的常用技术。研究的目的是使用四种机器学习分类器算法:梯度提升算法、奈夫贝叶斯算法、随机森林算法和 K 近邻算法,以确定哪种模型在预测阿尔巴尼亚史昆比尼河的各种水质指数和等级方面最为有效。分析是根据 4 年期间在 6 个监测点收集的 9 个参数的数据进行的。经测定,XGBoost、随机森林、K-近邻和 Naive Bayes 模型的预测准确率分别为 98.61%、94.44%、91.22% 和 94.45%。值得注意的是,XGBoost 算法在 F1 分数、灵敏度和预测准确性方面表现出色,在学习阶段(RMSE = 2.1,MSE = 9.8,MAE = 1.13)和评估阶段(RMSE = 0.0,MSE = 0.01,MAE = 0.01)误差最小。研究结果表明,生化需氧量(BOD)、碳酸氢盐(HCO3)和总磷对史库比尼河水质的影响最为积极。此外,还发现生化需氧量与水质指数之间存在统计学意义上的强正相关性(r = 0.85),强调了生化需氧量在影响史昆比尼河水质方面的关键作用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
EVALUATING THE PERFORMANCE OF MACHINE LEARNING APPROACHES IN PREDICTING ALBANIAN SHKUMBINI RIVER'S WATERS USING WATER QUALITY INDEX MODEL
A common technique for assessing the overall water quality state of surface water and groundwater systems globally is the water quality index (WQI) method. The aim of the research is to use four machine learning classifier algorithms: Gradient boosting, Naive Bayes, Random Forest, and K-Nearest Neighbour to determine which model was most effective at forecasting the various water quality index and classes of the Albanian Shkumbini River. The analysis was performed on the data collected during a 4-year period, in six monitoring points, for nine parameters. The predictive accuracy of the models, XGBoost, Random Forest, K-Nearest Neighbour, and Naive Bayes, was determined to be 98.61%, 94.44%, 91.22%, and 94.45%, respectively. Notably, the XGBoost algorithm demonstrated superior performance in terms of F1 score, sensitivity, and prediction accuracy, the lowest errors during both learning (RMSE = 2.1, MSE = 9.8, MAE = 1.13) and evaluating (RMSE = 0.0, MSE = 0.01, MAE = 0.01) stages. The findings highlighted that Biochemical oxygen demand (BOD), Bicarbonate (HCO3), and Total Phosphor had the most positive impact on the Shkumbini River’s water quality. Additionally, a statistically significant, strong positive correlation (r = 0.85) was identified between BOD and WQI, emphasizing its crucial role in influencing water quality in the Shkumbini River.
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来源期刊
CiteScore
1.90
自引率
7.70%
发文量
41
审稿时长
>12 weeks
期刊介绍: The Journal of Environmental Engineering and Landscape Management publishes original research about the environment with emphasis on sustainability.
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