Indian Institute of Management (IIM), Kozhikode, Kerala, India.
Excelia Business School, La Rochelle, France.
J Environ Manage. 2023 Feb 1;327:116911. doi: 10.1016/j.jenvman.2022.116911. Epub 2022 Dec 1.
Quality air to breathe is the basic necessity for an individual and in recent times, emission from various sources caused by human activities has resulted in substantial degradation in the air quality. This work focuses to study the inadvertent effect of COVID-19 lockdown on air pollution. Pollutants' concentration before- and during- COVID-19 lockdown is captured to understand the variation in air quality. Firstly, multi-pollutant profiling using hierarchical cluster analysis of pollutants' concentration is performed that highlights the differences in the cluster compositions between before- and during-lockdown time periods. Results show that the particulate matter (PM and PM) in air that formed the primary cluster before lock-down, came down to close similarity with other clusters during lockdown. Secondly, predicting air quality index (AQI) based on the forecasts of pollutants' concentration is performed using neural networks, support vector machine, decision tree, random forest, and boosting algorithms. The best-fitted models representing AQI is identified separately for before- and during-lockdown time periods based on its predictive power. While deterministic method reactively evaluates present AQI when current pollutants' concentration at a particular time and place are known, this study uses the best fitted data-driven model to determine future AQIs based on the forecasts of pollutant's concentration accurately (overall RMSE<0.1 for before lockdown scenario and <0.3 for during lockdown scenario). The study contributes to visualize the variation in pollutants' concentrations between the two scenarios. The results show that the reduced economic activities during lockdown period had led to the drop in concentration of PM and PM by 27% and 50% on an average. The findings of this study have practical and societal implications and serve as a reference mechanism for policymakers and governing bodies to revise their actions plans for regulating individual air pollutants in the atmospheric air.
呼吸优质空气是个人的基本需求,而近年来,人类活动产生的各种排放源导致空气质量大幅下降。本工作重点研究 COVID-19 封锁对空气污染的意外影响。捕获 COVID-19 封锁前后污染物浓度,以了解空气质量的变化。首先,使用污染物浓度层次聚类分析对多污染物进行分析,突出了封锁前后时间段内聚类组成的差异。结果表明,空气中原先形成主要聚类的颗粒物(PM 和 PM)在封锁期间下降到与其他聚类非常相似的程度。其次,使用神经网络、支持向量机、决策树、随机森林和提升算法根据污染物浓度的预测来预测空气质量指数 (AQI)。根据预测能力,分别为封锁前后时间段确定代表 AQI 的最佳拟合模型。当知道特定时间和地点的当前污染物浓度时,确定性方法会对当前 AQI 进行反应性评估,而本研究则使用最佳拟合的数据驱动模型根据污染物浓度的预测准确地确定未来 AQI(封锁前情景的总体 RMSE<0.1,封锁期间情景的 RMSE<0.3)。该研究有助于直观地展示两个情景下污染物浓度的变化。结果表明,封锁期间经济活动减少导致 PM 和 PM 的浓度平均下降了 27%和 50%。本研究的结果具有实际和社会意义,并为政策制定者和管理机构提供了参考机制,以修订其在大气中调节个别空气污染物的行动计划。