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首页> 外文期刊>Journal of environment informatics >Predicting Ground Level Ozone in Marrakesh by Machine-Learning Techniques
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Predicting Ground Level Ozone in Marrakesh by Machine-Learning Techniques

机译:通过机器学习技术预测马拉喀什地面臭氧

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摘要

This study was undertaken to produce local, short-term, artificial intelligence-based models that estimate the ozone level with special attention to the relationship between diurnal and nocturnal ozone variations of some primary pollutants and meteorologyical parameters in the city of Marrakesh, Morocco. Hourly data has been collected from the three air-quality monitoring stations in the city. This paper seeks to analyze the main factors that are associated with ozone formation, including the generation of different daytime and nighttime scenarios. The present work extends existing publications about the region by developing ozone prediction models from meteorological variables and primary pollutants. Several experiments were conducted to verify properties of the produced models, thus making it possible not only to describe but also to predict ozone pollution in this geographical area. The findings facilitate 48 hour forecasts that have root mean square errors as low as 20 g/m(3). Our results highlight the importance of using such models for civil applications.
机译:本研究进行了生产本地,短期,人工智能的模型,估计臭氧水平,特别注意摩洛哥市马拉喀什市一些主要污染物和陨病参数的昼夜臭氧变化之间的关系。每小时数据已从城市的三个空气质量监测站收集。本文旨在分析与臭氧地层相关的主要因素,包括产生不同的白天和夜间情景。本作通过开发来自气象变量和初级污染物的臭氧预测模型来扩展到该地区的现有出版物。进行了几个实验以验证所生产的模型的性质,从而使得不仅可以描述,而且可以预测该地理区域中的臭氧污染。调查结果有助于48小时的预测,其具有低至20g / m(3)的根均方误差。我们的结果突出了使用该类民用应用模型的重要性。

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