拓扑聚类研究马来西亚空气质量监测站之间颗粒物的空间模式

IF 2.9 4区 环境科学与生态学 Q3 ENVIRONMENTAL SCIENCES
Nur Fariha Syaqina Zulkepli, Vine Nwabuisi Madukpe, Mohd Salmi Md Noorani, Mohd Aftar Abu Bakar, R. U. Gobithaasan, Ooi Cheng Jie
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引用次数: 0

摘要

空气污染是全球长期存在的问题。由于无休止的工业化活动、不断增加的建筑工程和道路上的汽车尾气排放,缓解这一问题面临着巨大挑战。空气动力学直径小于 10 µm 的颗粒物(PM10)是严重影响人类健康的主要污染物之一。识别 PM10 的空间模式可获得空间同质区域,并揭示污染最严重的地点和潜在的 PM10 污染源。通常情况下,采用传统的聚类方法来实现这一目标。本研究提出了一种不同的聚类方法,选择拓扑数据分析(TDA)技术,即 Mapper 算法,来研究马来西亚 52 个空气质量监测站之间 PM10 行为的空间模式。拓扑聚类方法生成的拓扑图揭示了具有相似 PM10 行为的同质区域,并通过该图对地理关系有了更深刻的理解。与传统的聚类方法相比,拓扑图更直观地显示了研究区域的聚类相似性,突出了这种方法在研究空气污染物空间模式方面的优势。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Topological clustering in investigating spatial patterns of particulate matter between air quality monitoring stations in malaysia

Topological clustering in investigating spatial patterns of particulate matter between air quality monitoring stations in malaysia

Air pollution is a persistent issue that arises worldwide. Mitigating this issue poses a significant challenge due to endless industrialization activities, rising construction works and vehicle emissions on the road. Particulate matter (PM10) with an aerodynamic diameter of less than 10 µm is one of the primary pollutants that significantly impact human health. Identifying the spatial pattern of PM10 yields spatially homogenous areas and reveals the most polluted sites and potential PM10 sources of pollution. Typically, traditional clustering is used to achieve the objective. This study proposed a different clustering approach by opting topological data analysis (TDA) technique, namely the Mapper algorithm, to investigate for the spatial patterns of PM10 behavior between 52 air quality monitoring stations in Malaysia. A topological clustering approach produces a topological graph revealing the homogenous region with similar PM10 behavior and a more profound understanding of geographical relationship is achieved through the graph. The topological graph depicts better visualization of cluster similarities pertaining to the study areas compared to traditional clustering, highlighting the advantage of such an approach in investigating the spatial patterns of air pollutants.

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来源期刊
Air Quality Atmosphere and Health
Air Quality Atmosphere and Health ENVIRONMENTAL SCIENCES-
CiteScore
8.80
自引率
2.00%
发文量
146
审稿时长
>12 weeks
期刊介绍: Air Quality, Atmosphere, and Health is a multidisciplinary journal which, by its very name, illustrates the broad range of work it publishes and which focuses on atmospheric consequences of human activities and their implications for human and ecological health. It offers research papers, critical literature reviews and commentaries, as well as special issues devoted to topical subjects or themes. International in scope, the journal presents papers that inform and stimulate a global readership, as the topic addressed are global in their import. Consequently, we do not encourage submission of papers involving local data that relate to local problems. Unless they demonstrate wide applicability, these are better submitted to national or regional journals. Air Quality, Atmosphere & Health addresses such topics as acid precipitation; airborne particulate matter; air quality monitoring and management; exposure assessment; risk assessment; indoor air quality; atmospheric chemistry; atmospheric modeling and prediction; air pollution climatology; climate change and air quality; air pollution measurement; atmospheric impact assessment; forest-fire emissions; atmospheric science; greenhouse gases; health and ecological effects; clean air technology; regional and global change and satellite measurements. This journal benefits a diverse audience of researchers, public health officials and policy makers addressing problems that call for solutions based in evidence from atmospheric and exposure assessment scientists, epidemiologists, and risk assessors. Publication in the journal affords the opportunity to reach beyond defined disciplinary niches to this broader readership.
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