"Predictive Modelling of Air Quality Index (AQI) Across Diverse Cities and States of India using Machine Learning: Investigating the Influence of Punjab's Stubble Burning on AQI Variability"

Kamaljeet Kaur Sidhu, Habeeb Balogun, Kazeem Oluwakemi Oseni
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Abstract

Air pollution is a common and serious problem nowadays and it cannot be ignored as it has harmful impacts on human health. To address this issue proactively, people should be aware of their surroundings, which means the environment where they survive. With this motive, this research has predicted the AQI based on different air pollutant concentrations in the atmosphere. The dataset used for this research has been taken from the official website of CPCB. The dataset has the air pollutant concentration from 22 different monitoring stations in different cities of Delhi, Haryana, and Punjab. This data is checked for null values and outliers. But, the most important thing to note is the correct understanding and imputation of such values rather than ignoring or doing wrong imputation. The time series data has been used in this research which is tested for stationarity using The Dickey-Fuller test. Further different ML models like CatBoost, XGBoost, Random Forest, SVM regressor, time series model SARIMAX, and deep learning model LSTM have been used to predict AQI. For the performance evaluation of different models, I used MSE, RMSE, MAE, and R2. It is observed that Random Forest performed better as compared to other models.
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"利用机器学习对印度不同城市和邦的空气质量指数(AQI)进行预测建模:调查旁遮普省秸秆焚烧对空气质量指数变异性的影响"
空气污染是当今一个普遍而严重的问题,它对人类健康的影响不容忽视。为了积极解决这个问题,人们应该了解自己周围的环境,也就是自己生存的环境。基于这一动机,本研究根据大气中不同的空气污染物浓度预测空气质量指数。本研究使用的数据集来自 CPCB 的官方网站。该数据集包含德里、哈里亚纳邦和旁遮普邦不同城市 22 个不同监测站的空气污染物浓度。对这些数据进行了空值和异常值检查。但是,最重要的是要正确理解和估算这些值,而不是忽略或做错误的估算。本研究使用了时间序列数据,并使用 Dickey-Fuller 检验法对其进行了静态检验。此外,还使用了不同的 ML 模型,如 CatBoost、XGBoost、Random Forest、SVM 回归器、时间序列模型 SARIMAX 和深度学习模型 LSTM 来预测空气质量指数。为了评估不同模型的性能,我使用了 MSE、RMSE、MAE 和 R2。据观察,与其他模型相比,随机森林的性能更好。
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"Predictive Modelling of Air Quality Index (AQI) Across Diverse Cities and States of India using Machine Learning: Investigating the Influence of Punjab's Stubble Burning on AQI Variability" Synthetic Brain Images: Bridging the Gap in Brain Mapping With Generative Adversarial Model Intrusion Detection System Using Customized Rules for Snort
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