基于高斯过程的马德里中央低排放区二氧化氮分析

IF 0.6 4区 数学 Q2 LOGIC Logic Journal of the IGPL Pub Date : 2024-04-06 DOI:10.1093/jigpal/jzae041
Juan Luis Gómez-González, Miguel Cárdenas-Montes
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引用次数: 0

摘要

对城市地区空气质量的担忧导致了低排放区的实施,这也是控制空气质量的许多其他举措之一。最近,西班牙颁布了一项法律,规定人口超过 5 万的城市必须建立低排放区。由于可能对经济和社会产生负面影响,这些区域的划定并非没有争议。因此,需要对这些举措如何降低污染物浓度进行明确评估。马德里中心区是马德里市政府为减少市中心机动车流量和相关空气污染而采取的一项重大举措。该低排放区于 2018 年底启动,但第一个全面运行期为 2019 年第二季度。在这项工作中,采用了一种基于高斯过程的方法来分析马德里市中心二氧化氮的变化情况。高斯过程是一种随机过程,适用于可解释的模型选择和预测。由于其概率性质,它可以对预测结果进行误差估算。马德里市中心启动后,二氧化氮的排放量明显减少。然而,要正确评估启动低排放区对易发天气的作用,必须确定这一时期气象的作用。在这项工作中,利用气象信息训练了一个基于高斯过程的模型,以预测马德里市中心的二氧化氮浓度 $[NO_{2}]$。通过这种概率描述,可以提取受气象情景影响的减少量的统计信息,并分别提取受马德里中心激活影响的减少量的统计信息。
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Gaussian process-based analysis of the nitrogen dioxide at Madrid Central Low Emission Zone
Concern about air-quality in urban areas has led to the implementation of Low Emission Zones as one of many other initiatives to control it. Recently in Spain, the enactment of a law made this mandatory for cities with a population larger than 50k inhabitants. The delimitation of these areas is not without controversy because of possible negative economic and social impacts. Therefore, clear assessments of how these initiatives decrease pollutant concentrations are to be provided. Madrid Central is a major initiative of Madrid city council for reducing motor traffic and the associated air pollution in the city centre. This Low Emission Zone starts at the end of 2018, but the first fully-operational period corresponds to the second quarter of 2019. In this work, a methodology based on the Gaussian Process to analyse the evolution of Nitrogen Dioxide inside Madrid Central is undertaken. A Gaussian Process is a stochastic process suitable for interpretable model selection and predictions. Due to its probabilistic nature it provides error estimation at predictions. After the activation of Madrid Central, a relevant reduction of Nitrogen Dioxide has been observed. However, the role of the meteorology during this period must be ascertained to correctly evaluate the role of the activation of the Low Emission Zone against a prone weather. In this work, a model based on the Gaussian Process is trained with meteorological information to predict the concentration of Nitrogen Dioxide at Madrid Central, $[NO_{2}]$. This probabilistic description allows extracting statistical information on the reduction affected by the meteorological scenario and separately by the Madrid Central activation.
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来源期刊
CiteScore
2.60
自引率
10.00%
发文量
76
审稿时长
6-12 weeks
期刊介绍: Logic Journal of the IGPL publishes papers in all areas of pure and applied logic, including pure logical systems, proof theory, model theory, recursion theory, type theory, nonclassical logics, nonmonotonic logic, numerical and uncertainty reasoning, logic and AI, foundations of logic programming, logic and computation, logic and language, and logic engineering. Logic Journal of the IGPL is published under licence from Professor Dov Gabbay as owner of the journal.
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