基于机器学习的实时水质监测系统

Nanda Jayalakshmi P, Revathy V
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引用次数: 0

摘要

水质参数在我们的日常生活中非常重要。水质预测有助于减少水污染,保护人类健康。这项工作推动了一种与湖泊有关的“基于机器学习的实时水质监测系统”在农村地区的应用。所有使用它的生物都受到这些水中产生的废物的影响。水质监测系统是为了识别水位并找到解决问题的方法。水质是指水的化学、物理和生物特性。它是相对于一种或多种生物物种的需求或任何人类需要或目的的水状况的度量。它最常用于参考一组标准,根据这些标准可以评估遵守情况。用于评估水质的最常用标准涉及生态系统健康、人类接触安全和饮用水。智能水质监测过程通过处理传感器数据,通过机器学习自动检测水质状况,并在水质异常时立即向水质分析人员发出通知。该结构用于测定pH值,颜色,温度,一氧化碳,电导率,粪便大肠菌群。同样,人工神经网络、自适应滤波算法、支持向量机、Naïve贝叶斯、随机森林计算也被用于预测水的性质,并帮助从各种水测试中收集准备好的信息。
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Machine Learning Based Realtime Water Quality Monitoring System
Water quality parameter is of much importance in our day to day lives. Prediction of water quality will help to reduce water pollution and guard our human health. This work has advanced an “Machine Learning based real-time water quality monitoring system” pertaining to lakes is being used in rural areas. All the organisms that use it are affected by the waste generated in this water. Water quality monitoring system is to identify the level of water and finding ways to correct the problems in it. Water quality refers to the chemical, physical and biological characteristics of water. It is a measure of the condition of water relative to the requirements of one or more biotic species and or to any human need or purpose. It is most frequently used by reference to a set of standards against which compliance can be assessed. The most common standards used to assess water quality relate to health of ecosystems, safety of human contact and drinking water. An intelligent process of monitoring the quality of water automatically detects the condition of water through Machine Learning by processing sensors data and instantly provides notification to water analyst when the quality of water is abnormal. The structure uses Determination of pH, Color, Temperature, Carbon monoxide, Conductivity, Fecal coliform. Likewise, ANN, Adaptive filter algorithm, Support Vector Machine, Naïve Bayes, Random forest calculation has been utilized for anticipating the nature of water, with the assistance of prepared informational collection from various water tests.
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