Expansion of Roadside Air Pollution Monitoring Network in Seoul using Learning-based Optimization Method

Taeho Kim, Jihoon Shin, YoungWoo Kim, Doyeon Lee, JuEun Beak, Doyoon Lee, YoonKyung Cha
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Abstract

Objectives : In this study, a learning-based optimization method is proposed and implemented for determining new monitoring sites when expanding the roadside air pollution monitoring network. Utilizing the bigdata available in Seoul, this decision-making tool is developed that takes into account the objectives of selecting new monitoring sites and incorporates social, economic, and environmental characteristics. The optimized results can suggest potential locations for new roadside air pollution monitoring sites. Additionally, the capability of this tool to facilitate objective decision-making processes is evaluated by determining the influence range providing reliable air pollution information with the addition of the new monitoring sites.Methods : The proposed learning-based optimization algorithm is a new approach for selecting the new optimal monitoring sites by comprehensively considering social, economic, and environmental factors aligned with the installation purpose of the monitoring system in Seoul. The algorithm starts with genetic algorithms to select candidate locations for new monitoring sites that maximize the influence area of the expanded monitoring network compared to the existing monitoring network, capture a high overall level of air pollution, and do not overlap with the existing monitoring network. After that, PROMETHEE method is applied to evaluate the solutions generated by the genetic algorithm and choose the final solution that best fits six evaluation factors (Information entropy, number of new monitoring sites, distance from point sources, wind speed, traffic volume, and population) to be considered when installing new monitoring sites.Results and Discussion : The learning-based optimization algorithm selects 10 potential new monitoring sites adding to the existing roadside air pollution monitoring network having 15 monitoring sites. The explainable spatiotemporal range of the air pollution information that can be expected after the installation of the new monitoring sites is quantified to cover 84.33% of Seoul, reducing the uncertainty of the air pollution information of existing monitoring network by 26.15%. The final solution, selected from several solutions, can get new optimal roadside air pollution monitoring sites reflecting the regional characteristics of Seoul and the installation purpose of the monitoring system by having a small number of newly established monitoring locations, being close to air pollution emissions facilities, and having a high population and traffic volume.Conclusion : The proposed learning-based optimization method, using relevant variables for the installation purpose of the monitoring system, can derive the objective solution for deciding new monitoring locations of the roadside air pollution monitoring network, considering additional social factors as opposed to urban air pollution monitoring network. The final solution obtained through the optimization algorithm has great potential for future use, as it can guide to determine practical and feasible new monitoring sites with additional on-site verification. Furthermore, this optimized approach can be applied widely during the decision-making process for the expansion of other environmental monitoring networks.
使用基于学习的优化方法扩展首尔路边空气污染监测网络
本研究提出并实现了一种基于学习的优化方法,用于在扩大路边空气污染监测网络时确定新的监测点。利用首尔现有的大数据,该决策工具的开发考虑了选择新监测点的目标,并结合了社会、经济和环境特征。优化后的结果可建议设立新的路边空气污染监测点的地点。此外,通过确定影响范围,通过增加新的监测点提供可靠的空气污染信息,评估这一工具促进客观决策过程的能力。方法:提出的基于学习的优化算法是一种综合考虑社会、经济和环境因素,与首尔市监测系统安装目的相结合,选择新的最优监测点的新方法。该算法从遗传算法开始,选择新监测点的候选位置,使扩展后的监测网络的影响范围与现有监测网络相比最大化,捕获高总体空气污染水平,并且不与现有监测网络重叠。然后,应用PROMETHEE方法对遗传算法生成的解进行评价,选择最适合新建监测点时考虑的6个评价因子(信息熵、新建监测点个数、离点源距离、风速、交通量、人口)的最终解。结果与讨论:基于学习的优化算法在现有15个监测点的路边空气污染监测网络中选择10个潜在的新监测点。通过对新建监测点后空气污染信息可解释时空范围的量化,覆盖了首尔市84.33%的区域,将现有监测网空气污染信息的不确定性降低了26.15%。最终方案从多个方案中选出,新设监测点数量少、靠近空气污染排放设施、人口和交通量大,从而获得反映首尔地区特点和监测系统安装目的的新的最优路边空气污染监测点。结论:本文提出的基于学习的优化方法,利用监测系统安装目的的相关变量,可以推导出与城市空气污染监测网不同的、考虑附加社会因素的路边空气污染监测网新监测点确定的客观解。通过优化算法得到的最终解具有很大的应用潜力,可以指导确定实际可行的新监测点,并进行额外的现场验证。此外,该优化方法可广泛应用于其他环境监测网络扩展的决策过程中。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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