PM2.5 air pollution trends and patterns in Kandy, Sri Lanka

Mahesh Senarathna, R. Jayaratne, S. Abeysundara, R. Weerasooriya, Kosala Welikannage, Lidia Morawska, G. Bowatte
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引用次数: 0

Abstract

Air pollution is the leading environmental hazard that has devastating health effects on human health. Identification of trends and patterns of air pollution is crucial in a specific geographic area to inform and implement effective control and mitigation measurements. Standard air pollution monitoring networks are costly for most low-and middle-income countries. The aim of this study was to investigate the variations in the mean concentrations of air pollutants that occur at various times of the day, days of the week, months of the year, and seasons during the period of January 2019 to December 2019 in Kandy, Sri Lanka using low-cost sensors. A regression analysis with dummy variables was used to model the relationship between the concentrations of air pollutants and categorical independent variables, the time of day and day of the week. Considering temporal variations, the study found that pollution is highest in the early morning and evening, and lowest in the afternoon. The worst days for the air quality were Wednesdays and Thursdays, while Sundays had the lowest PM2.5 pollution. The analysis of air quality variations by month showed that December had the lowest air pollution of the examined months. The variation in PM2.5 was greatly influenced by wind speed, wind direction, and rainfall patterns. The study emphasized the importance of long-term consistently management and monitoring of air pollution levels.
斯里兰卡康提的 PM2.5 空气污染趋势和模式
空气污染是对人类健康造成破坏性影响的主要环境危害。确定特定地理区域的空气污染趋势和模式对于提供信息和实施有效的控制和缓解措施至关重要。对于大多数中低收入国家来说,标准的空气污染监测网络成本高昂。本研究旨在利用低成本传感器调查 2019 年 1 月至 2019 年 12 月期间斯里兰卡康提一天中不同时间、一周中不同天数、一年中不同月份以及不同季节空气污染物平均浓度的变化情况。使用虚拟变量回归分析来模拟空气污染物浓度与分类自变量(一天中的时间和一周中的日子)之间的关系。考虑到时间变化,研究发现清晨和傍晚的污染程度最高,下午最低。空气质量最差的日子是周三和周四,而周日的 PM2.5 污染最低。对各月空气质量变化的分析表明,12 月的空气污染程度在所研究的月份中最低。PM2.5 的变化在很大程度上受风速、风向和降雨模式的影响。研究强调了长期持续管理和监测空气污染水平的重要性。
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15 weeks
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