A reliable and easy-to-implement approach to estimate daily urban benzene levels

IF 6 2区 工程技术 Q1 ENVIRONMENTAL SCIENCES Urban Climate Pub Date : 2024-12-05 DOI:10.1016/j.uclim.2024.102234
David Galán-Madruga, Parya Broomandi, Jafet Cárdenas-Escudero, J.L. Urraca, Jorge O. Cáceres
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Abstract

Assessing air benzene is mandatory in the European Union due to potentially harmful human effects. Current exposure data are lacking since there is a limited number of fixed stations. This research provides an easy approach to estimating daily urban benzene levels potentially applicable in other geographical areas. Madrid City was regarded as a case study. They were calculated mathematical models explaining the relationship between dependent and predictor inputs using an original 2019–2020 dataset (r from 0.881 to 0.903) and were tested using a 2021 dataset (r from 0.682 to 0.914). Similarly, the suggested mathematical expressions were satisfactorily implemented in another geographic region (r = 0.936 and 0.764 for urban traffic and rural background sites, respectively). Furthermore, the recommended approach helps identify the most representative fixed benzene measuring locations without lost spatial information, given that a similar spatial distribution gradient was sustained between estimated and the most representative benzene levels (r = 0.959), which is translated into acceptable quantitative differences (0.07 μg/m3, 0.01 μg/m3 and 5.01 % for RMSE, MAE, and MAPE, respectively). Applying the proposed approach furnishes enriched benzene exposure data, thus decreasing uncertainty generated by the lack of actual information and complements European Legislation directrices concerning air pollutants monitoring using air quality networks.
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一个可靠和易于实施的方法来估计每日城市苯水平
在欧盟,评估空气中苯是强制性的,因为它可能对人体有害。由于固定监测站数量有限,目前缺乏辐射数据。这项研究提供了一个简单的方法来估计每日城市苯水平可能适用于其他地理区域。马德里市被视为一个研究案例。他们使用原始的2019-2020数据集(r从0.881到0.903)计算数学模型来解释依赖和预测输入之间的关系,并使用2021数据集(r从0.682到0.914)进行测试。同样,建议的数学表达式在另一个地理区域也得到了满意的实现(城市交通和农村背景站点的r分别为0.936和0.764)。此外,建议的方法有助于确定最具代表性的固定苯测量位置,而不会丢失空间信息,因为估计的苯水平与最具代表性的苯水平之间保持相似的空间分布梯度(r = 0.959),这可以转化为可接受的定量差异(RMSE, MAE和MAPE分别为0.07 μg/m3, 0.01 μg/m3和5.01%)。采用拟议的方法提供了丰富的苯暴露数据,从而减少了由于缺乏实际信息而产生的不确定性,并补充了关于使用空气质量网络监测空气污染物的欧洲立法指令。
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来源期刊
Urban Climate
Urban Climate Social Sciences-Urban Studies
CiteScore
9.70
自引率
9.40%
发文量
286
期刊介绍: Urban Climate serves the scientific and decision making communities with the publication of research on theory, science and applications relevant to understanding urban climatic conditions and change in relation to their geography and to demographic, socioeconomic, institutional, technological and environmental dynamics and global change. Targeted towards both disciplinary and interdisciplinary audiences, this journal publishes original research papers, comprehensive review articles, book reviews, and short communications on topics including, but not limited to, the following: Urban meteorology and climate[...] Urban environmental pollution[...] Adaptation to global change[...] Urban economic and social issues[...] Research Approaches[...]
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