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A concept of the air quality monitoring system in the city of Lublin with machine learning methods to detect data outliers

机译:卢布林市空气质量监测系统的概念,该方法采用机器学习方法来检测数据异常值

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This paper presents a concept of the air quality monitoring system design and describes a selection of data quality analysis methods. A high level of industrialisation affects the risk of natural disasters related to environmental pollution such as e.g. air pollution by gases and clouds of dust (carbon monoxide, sulphur oxides, nitrogen oxides). That is why researches related to the monitoring this type of phenomena are extremely important. Low-cost air quality sensors are more commonly used to monitor air parameters in urban areas. These types of sensors are used to obtain an image of the spatiotemporal variability in the concentration of air pollutants. Aside from their low price , which is important from a point of view of the economic accessibility of society, low-cost sensors are prone to produce erroneous results compared to professional air quality monitors. The described study focuses on the analysis of outliers as particularly interesting for further analysis, as well as modelling with machine learning methods for air quality assessment in the city of Lublin.
机译:本文提出了空气质量监测系统设计的概念,并介绍了数据质量分析方法的选择。高水平的工业化会影响与环境污染有关的自然灾害的风险,例如气体和尘埃云(一氧化碳,硫氧化物,氮氧化物)对空气的污染。因此,与监视此类现象相关的研究非常重要。低成本空气质量传感器通常用于监视城市地区的空气参数。这些类型的传感器用于获取空气污染物浓度时空变化的图像。除了低廉的价格(从社会的经济可及性角度来看这很重要)之外,与专业的空气质量监测仪相比,低成本的传感器还容易产生错误的结果。所描述的研究着重于离群值的分析,这些数据对于进一步分析特别有趣,以及在卢布林市使用机器学习方法进行空气质量评估的建模。

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