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Machine learning based estimation of Ozone using spatio-temporal data from air quality monitoring stations

机译:使用来自空气质量监测站的时空数据基于机器学习的臭氧估算

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In this paper, models are created to predict the levels of ground level Ozone at particular locations based on the cross-correlation and spatial-correlation of different air pollutants whose readings are obtained from several different air quality monitoring stations in Gauteng province, South Africa, including the City of Johannesburg which is on the cusp of being one of the world's megacities and is currently the most polluted city in the country. Datasets spanning several years collected from the monitoring stations and transmitted through the Internet-of-Things are used. Big data analytics and cognitive computing is used to get insights on the data and create models that can estimate levels of Ozone without requiring massive computational power or intense numerical analysis.
机译:本文基于不同的空气污染物的互相关和空间相关性,创建了模型来预测特定位置的地面臭氧水平,这些空气污染物的读数来自南非豪登省几个不同的空气质量监测站,包括约翰内斯堡市,该市正处于世界特大城市之一的风口浪尖,目前是该国污染最严重的城市。使用了从监测站收集并经过物联网传输的跨越数年的数据集。大数据分析和认知计算用于获取数据见解,并创建可估算臭氧水平的模型,而无需大量的计算能力或密集的数值分析。

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