Apict:利用绿色空气质量指数预测印度冬季空气污染流行病学

IF 3 3区 计算机科学 Q2 COMPUTER SCIENCE, HARDWARE & ARCHITECTURE IEEE Transactions on Sustainable Computing Pub Date : 2024-01-01 DOI:10.1109/TSUSC.2023.3343922
Sweta Dey;Kalyan Chatterjee;Ramagiri Praveen Kumar;Anjan Bandyopadhyay;Sujata Swain;Neeraj Kumar
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引用次数: 0

摘要

在印度的冬季,由于中风造成的大气污染物扩散有限,空气质量指数会下降。因此,我们开发了一个复杂的绿色预测模型 GAP,该模型利用了我们设计的绿色技术和定制的大数据集。该数据集来自气象研究,专门用于预测印度次大陆冬季未来的空气质量指数水平。该数据集通过合并 APs 和 MFs 浓度样本进行精心策划,并进一步调整以反映印度各邦的年度活动数据。该数据集显示,$\boldsymbol {PM_{2.5}}$、$\boldsymbol {NO_{2}}$和$\boldsymbol {CO}}$污染物的全国排放率有所上升,以千兆克/天计算,分别增加了3.6%、1.3%和2.5%。然后将 ML/DL 回归器应用于该数据集,并根据其性能选择最有效的 ML/DL 回归器。我们的论文对空气污染流行病学领域的现有文献进行了详尽的研究。评估结果表明,GAP 利用 LSTM、CNN、MLP 和 RNN 预测 $\boldsymbol {PM_{2.5}}$、$\boldsymbol {NO_{2}}$ 和 $\boldsymbol {CO}$ 浓度的准确率分别达到 98.53%、95.9222%、96.1555% 和 97.344%。相比之下,对于相同的空气质量指数,RF、KNN 和 SVR 的准确度较低,分别为 92.511%、90.333% 和 93.566%。
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Apict:Air Pollution Epidemiology Using Green AQI Prediction During Winter Seasons in India
During the winter season in India, the AQI experiences a decrease due to the limited dispersion of APs caused by MFs. Therefore, we developed a sophisticated green predictive model GAP, which utilizes our designed green technique and a customized big dataset. This dataset is derived from weather research and tailored to forecast future AQI levels in the Indian subcontinent during winter. This dataset has been meticulously curated by amalgamating samples of APs and MFs concentrations, further adjusted to reflect the yearly activity data across various Indian states. The dataset reveals an amplified national emissions rate for $\boldsymbol {PM_{2.5}}$ , $\boldsymbol {NO_{2}}$ , and $\boldsymbol {CO}$ pollutants, exhibiting an increase of 3.6%, 1.3%, and 2.5% in gigagrams per day. ML/DL regressors are then applied to this dataset, with the most effective ML/DL regressors being selected based on their performance. Our paper encompasses an exhaustive examination of existing literature within the realm of air pollution epidemiology. The evaluation results demonstrate that the prediction accuracy of GAP when utilizing LSTM, CNN, MLP, and RNN achieve accuracies of 98.53%, 95.9222%, 96.1555%, and 97.344% in predicting the $\boldsymbol {PM_{2.5}}$ , $\boldsymbol {NO_{2}}$ , and $\boldsymbol {CO}$ concentrations. In contrast, RF, KNN, and SVR yield lower accuracies of 92.511%, 90.333%, and 93.566% for the same AQIs.
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来源期刊
IEEE Transactions on Sustainable Computing
IEEE Transactions on Sustainable Computing Mathematics-Control and Optimization
CiteScore
7.70
自引率
2.60%
发文量
54
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