Time Series Analysis and Forecasting of Air Quality in India

Vanshay Gupta, Samit Kapadia, Chetashri Bhadane
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Abstract

This paper aims to analyze the air quality in India and the effects of seasons and COVID-19 on the concentration of pollutants in the air and thereby their effect on the air quality index (AQI). The analysis is performed on a full scale, taking into consideration different levels of granularities such as daily, weekly and monthly data. This study performs extensive preprocessing of the time series data for air quality to make it output the best results. The results evidenced that particulate matter i.e., PM 2.5 and PM 10 have the greatest impact on air quality. Analysis of the effect of change in seasons on the overall air quality has been carried out, along with the impact of the nationwide lockdown due to COVID-19, which led to a substantial improvement in the AQI levels. Furthermore, we also use the state-of-the-art forecasting algorithm Prophet to predict the monthly average air quality index and compare it with the actual recorded values, giving us a highly accurate prediction. We also performed a comparative analysis of AQI for the cities of Delhi and Bengaluru, having different seasons and climates, which results in valuable insights on to what extent the environmental factors affect the air quality measures of that location.
印度空气质量的时间序列分析与预测
本文旨在分析印度的空气质量,以及季节和COVID-19对空气中污染物浓度的影响,从而对空气质量指数(AQI)的影响。分析是在全尺度上进行的,考虑到不同的粒度水平,如每日、每周和每月的数据。本研究对空气质量时间序列数据进行了广泛的预处理,使其输出最佳结果。结果表明,颗粒物即pm2.5和pm10对空气质量的影响最大。分析了季节变化对整体空气质量的影响,以及COVID-19全国封锁的影响,导致AQI水平大幅改善。此外,我们还使用最先进的预测算法Prophet来预测月平均空气质量指数,并将其与实际记录值进行比较,为我们提供高度准确的预测。我们还对德里和班加罗尔的空气质量进行了比较分析,这两个城市的季节和气候不同,从而对环境因素对该地区空气质量指标的影响程度产生了有价值的见解。
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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