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Airpred: A Flexible R Package Implementing Methods for Predicting Air Pollution

机译:Airprod:一种灵活的R包,实现预测空气污染的方法

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Large epidemiological studies have shown that exposure to air pollution, in particular fine particulate matter (PM2.5), is harmful to human health. However, air pollution monitors which measure air pollutant concentrations are sparsely located, excluding large portions of the population, in particular non-urban populations, from studies. One approach to resolving this issue has been developing models to predict local PM2.5, NO2, and ozone in unmonitored areas based on satellite, meteorological, and land use data. These prediction models are typically developed using large amounts of input data and are highly computationally intensive. We have developed a flexible R package that allows environmental health researchers to design and train spatio-temporal models capable of predicting multiple pollutants, including PM2.5. We utilize H2O, an open source big data R platform, to achieve both performance and scalability when used in conjunction with cloud or cluster computing systems.
机译:大型流行病学研究表明,暴露于空气污染,特别是细颗粒物质(PM 2.5 ),对人类健康有害。然而,测量空气污染物浓度的空气污染监测器稀疏地位,不包括大部分人口,特别是非城市群体,从研究中。解决此问题的一种方法一直在开发模型来预测本地PM 2.5 , 不 2 基于卫星,气象和土地利用数据的未监控区域中的臭氧。这些预测模型通常使用大量输入数据开发,并且具有高度计算密集。我们开发了一种灵活的R包,允许环境卫生研究人员设计和培训能够预测多个污染物的时空模型,包括PM 2.5 。我们利用H2O,一个开源大数据R平台,在与云或群集计算系统结合使用时实现性能和可扩展性。

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