Air pollution poses a serious threat to sustainable environmental conditions in the 21st century. Its importance in determining the health and living standards in urban settings is only expected to increase with time. Various factors ranging from artificial emissions to natural phenomena are known to be primary causal agents or influencers behind rising air pollution levels. However, the lack of large scale data involving the major artificial and natural factors has hindered the research on the causes and relations governing the variability of the different air pollutants. Through this work, we introduce a large scale city-wise dataset for exploring the relationships among these agents over a long period of time. We also introduce a transformer based model - cosSquareFormer, for the problem of pollutant level estimation and forecasting. Our model outperforms most of the benchmark models for this task. We also analyze and explore the dataset through our model and other methodologies to bring out important inferences which enable us to understand the dynamics of the causal agents at a deeper level. Through our paper, we seek to provide a great set of foundations for further research into this domain that will demand critical attention of ours in the near future.
翻译:空气污染对21世纪的可持续环境环境构成了严重威胁,在确定城市环境中的健康和生活水平方面的重要性预计只会随着时间的推移而增加。从人为排放到自然现象等各种因素已知是空气污染水平上升的主要因果因素或影响因素。然而,由于缺乏涉及主要人为和自然因素的大规模数据,影响着关于不同空气污染物变化的原因和关系的研究。通过这项工作,我们引入了一个大型城市智能数据集,用于长期探索这些物剂之间的关系。我们还引入了一个基于变压器的模型-COSQuareFormer,用于污染程度估计和预测问题。我们的模型超越了这项任务的大多数基准模型。我们还分析和探索了通过我们的模型和其他方法所建立的数据,以提出重要的推论,使我们能够更深入地了解这些物剂的动态。我们通过我们的论文,寻求为这一领域进一步的研究提供大量的基础,这将要求我们在不久的将来对这个领域给予重要的关注。