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首页> 外文期刊>Journal of Environmental Management >Turbidity prediction of lake-type raw water using random forest model based on meteorological data: A case study of Tai lake, China
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Turbidity prediction of lake-type raw water using random forest model based on meteorological data: A case study of Tai lake, China

机译:基于气象数据的随机林模型湖型原水浊度预测 - 以泰湖,中国为例

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摘要

Turbidity is an indication of water quality and enables the growth of pathogenic microorganisms. For drinking water treatment plants (DWTPs), violent fluctuations in turbidity are highly disruptive to operational performance due to the lag in process parameter adjustments. Such risks must be carefully managed to guarantee safe drinking water. Machine learning techniques have been proven to be effective for modeling complex nonlinear environmental systems, and this study adopted such a technique to develop a model for predicting source water turbidity for DWTPs to allow DWTPs to make proactive interventions in advance. A random forest (RF) model used preprocessed (empirical mode decomposition and quartile rejecting) meteorological factors (wind speed, wind direction, air temperature, and rainfall) as the input variables, to establish the turbidity prediction of a lake with significant turbidity in China's South Tai Lake. The modeling process included four main stages: (1) source data analysis, (2) raw data preprocessing, (3) modeling and tuning, and (4) model evaluation. The results of the RF model indicated that the correlation coefficient between the predicted and actual sequences is over 0.7, and more than 55% of the predicted values could control the errors within 20% compared to the actual measured values, suggesting that machine learning techniques are suitable for predicting the turbidity of raw source water. It was found that the RF model can provide a modest performance boost because of its stronger capacity to capture nonlinear interactions in the data. The findings of this study can inform the development of turbidity prediction models using readily available meteorological forecast data. The model can be applied to other DWTPs using similar shallow lakes as water sources.
机译:浊度是水质的指示,可实现致病微生物的生长。对于饮用水处理厂(DWTPS),由于工艺参数调整中的滞后,浊度中的剧烈波动对运行性能具有高度破坏性。必须仔细设定这种风险,以保证安全的饮用水。已经证明了机器学习技术对于建模复杂的非线性环境系统有效,本研究采用了这种技术来开发用于预测DWTPS源水浊度的模型,以允许DWTP提前做出积极的干预措施。用于预处理(经验模式分解和四分位数)气象因子(风速,风向,空气温度和降雨)作为输入变量的随机森林(RF)模型,以建立中国具有显着浊度的湖泊的浊度预测南泰湖。建模过程包括四个主要阶段:(1)源数据分析,(2)原始数据预处理,(3)建模和调整,以及(4)模型评估。 RF模型的结果表明预测和实际序列之间的相关系数超过0.7,并且与实际测量值相比,预测值的大于55%的预测值可以控制20%以内的误差,表明机器学习技术是适用于预测生源水的浊度。发现RF模型可以为捕获数据中的非线性交互的能力较强,提供适度的性能提升。本研究的调查结果可以使用易于可用的气象预测数据来提供浊度预测模型的发展。该模型可以应用于使用与水源相似的浅水湖泊的其他DWTPS。

著录项

  • 来源
    《Journal of Environmental Management》 |2021年第15期|112657.1-112657.8|共8页
  • 作者单位

    Zhejiang Key Laboratory of Drinking Water Safety and Distribution Technology Zhejiang University Hangzhou 310058 China;

    Zhejiang Key Laboratory of Drinking Water Safety and Distribution Technology Zhejiang University Hangzhou 310058 China;

    Huzhou Water Croup Co. Ltd Huzhou 313000 China;

    Huzhou Water Croup Co. Ltd Huzhou 313000 China;

    Huzhou Meteorological Bureau Huzhou 313005 China;

    Hangzhou Meteorological Information Center Hangzhou 310051 China;

    Zhejiang Key Laboratory of Drinking Water Safety and Distribution Technology Zhejiang University Hangzhou 310058 China;

  • 收录信息 美国《科学引文索引》(SCI);美国《化学文摘》(CA);
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Machine learning technique; Wind field; Shallow lake; Drinking water source; Data-driven model;

    机译:机器学习技术;风场;浅湖;饮用水源;数据驱动模型;

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