Application of Random Forest in a Predictive Model of PM10 Particles in Mexico City

Alfredo Ricardo Zárate Valencia, Antonio Alfonso Rodríguez Rosales
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Abstract

Over time, predictive models tend to become more accurate but also more complex, thus achieving better predictive accuracy. When the data is improved by increasing its quantity and availability, the models are also better, which implies that the data must be processed to filter and adapt it for initial analysis and then modeling. This work aims to apply the Random Forest model to predict PM10 particles. For this purpose, data were obtained from environmental monitoring stations in Mexico City, which operates 29 stations of which 12 belong to the State of Mexico. The pollutants analyzed were CO carbon monoxide, NO nitrogen oxide, and PM10 particulate matter equal to or less than 10 μg.m-3, NOx nitrogen oxide, NO2 nitrogen dioxide, SO2 sulfur dioxide, O3 ozone, and PM2.5 particulate matter equal to or less than 2.5 μg.m-3. The result was that when calculating the certainty of our model, we have a value of 80.40% when calculating the deviation from the mean, using 15 reference variables.
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随机森林在墨西哥城 PM10 颗粒预测模型中的应用
随着时间的推移,预测模型往往会变得更加准确,但也更加复杂,从而达到更好的预测精度。当数据通过增加数量和可用性而得到改善时,模型也会变得更好,这意味着必须对数据进行处理,以过滤和调整数据,进行初步分析,然后建模。这项工作旨在应用随机森林模型预测 PM10 颗粒物。为此,我们从墨西哥城的环境监测站获得了数据,墨西哥城共有 29 个监测站,其中 12 个属于墨西哥州。分析的污染物包括 CO 一氧化碳、NO 氮氧化物和 PM10 颗粒物(等于或小于 10 微克/立方米)、NOx 氮氧化物、NO2 二氧化氮、SO2 二氧化硫、O3 臭氧和 PM2.5 颗粒物(等于或小于 2.5 微克/立方米)。结果表明,在计算我们模型的确定性时,使用 15 个参考变量计算与平均值的偏差时,我们的值为 80.40%。
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来源期刊
Nature Environment and Pollution Technology
Nature Environment and Pollution Technology Environmental Science-Environmental Science (all)
CiteScore
1.20
自引率
0.00%
发文量
159
审稿时长
36 weeks
期刊介绍: The journal was established initially by the name of Journal of Environment and Pollution in 1994, whose name was later changed to Nature Environment and Pollution Technology in the year 2002. It has now become an open access online journal from the year 2017 with ISSN: 2395-3454 (Online). The journal was established especially to promote the cause for environment and to cater the need for rapid dissemination of the vast scientific and technological data generated in this field. It is a part of many reputed international indexing and abstracting agencies. The Journal has evoked a highly encouraging response among the researchers, scientists and technocrats. It has a reputed International Editorial Board and publishes peer reviewed papers. The Journal has also been approved by UGC (India). The journal publishes both original research and review papers. The ideology and scope of the Journal includes the following. -Monitoring, control and management of air, water, soil and noise pollution -Solid waste management -Industrial hygiene and occupational health -Biomedical aspects of pollution -Toxicological studies -Radioactive pollution and radiation effects -Wastewater treatment and recycling etc. -Environmental modelling -Biodiversity and conservation -Dynamics and behaviour of chemicals in environment -Natural resources, wildlife, forests and wetlands etc. -Environmental laws and legal aspects -Environmental economics -Any other topic related to environment
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