基于卫星数据的空气质量指数分析与预报。

IF 2 4区 医学 Q4 TOXICOLOGY
Tinku Singh, Nikhil Sharma, Satakshi, Manish Kumar
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引用次数: 6

摘要

目的:空气质量指数(AQI)预测是改善城市公共卫生和使社会在空气污染影响下保持可持续发展的最重要方面之一。污染控制组织部署地面站来收集空气污染物的信息。由于成本问题,建立一个全面的地面站是不可行的。作为一种替代办法,卫星捕获的数据可用于空气质量评估。本研究利用卫星数据探讨了印度各种COVID-19封锁期间AQI的变化。此外,它还讨论了预测短期AQI的最先进的深度学习和统计方法的有效性。材料和方法:利用谷歌地球引擎(GEE)来获取研究数据。在纳入研究之前,卫星数据已利用beta分布测试与地面站数据进行了验证。AQI预测已经使用最先进的统计和深度学习方法进行了探索,如VAR、Holt-Winter和LSTM变体(堆叠、双向和香草)。结果:研究期间空气质量指数在100 ~ 300之间,从中度污染到极差。最大降幅出现在2020年完全封城期间。与MAPE评分最低的其他模型相比,使用Holt-Winter预测短期空气质量指数的准确性更高。结论:根据我们的研究结果,空气污染在研究地点显然是一个威胁,所有利益相关者共同努力减少空气污染是很重要的。在不同的封锁期间,空气污染物水平大幅下降。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Analysis and forecasting of air quality index based on satellite data.

Objective: The air quality index (AQI) forecasts are one of the most important aspects of improving urban public health and enabling society to remain sustainable despite the effects of air pollution. Pollution control organizations deploy ground stations to collect information about air pollutants. Establishing a ground station all-around is not feasible due to the cost involved. As an alternative, satellite-captured data can be utilized for AQI assessment. This study explores the changes in AQI during various COVID-19 lockdowns in India utilizing satellite data. Furthermore, it addresses the effectiveness of state-of-the-art deep learning and statistical approaches for forecasting short-term AQI.

Materials and methods: Google Earth Engine (GEE) has been utilized to capture the data for the study. The satellite data has been authenticated against ground station data utilizing the beta distribution test before being incorporated into the study. The AQI forecasting has been explored using state-of-the-art statistical and deep learning approaches like VAR, Holt-Winter, and LSTM variants (stacked, bi-directional, and vanilla).

Results: AQI ranged from 100 to 300, from moderately polluted to very poor during the study period. The maximum reduction was recorded during the complete lockdown period in the year 2020. Short-term AQI forecasting with Holt-Winter was more accurate than other models with the lowest MAPE scores.

Conclusions: Based on our findings, air pollution is clearly a threat in the studied locations, and it is important for all stakeholders to work together to reduce it. The level of air pollutants dropped substantially during the different lockdowns.

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来源期刊
Inhalation Toxicology
Inhalation Toxicology 医学-毒理学
CiteScore
4.10
自引率
4.80%
发文量
38
审稿时长
6-12 weeks
期刊介绍: Inhalation Toxicology is a peer-reviewed publication providing a key forum for the latest accomplishments and advancements in concepts, approaches, and procedures presently being used to evaluate the health risk associated with airborne chemicals. The journal publishes original research, reviews, symposia, and workshop topics involving the respiratory system’s functions in health and disease, the pathogenesis and mechanism of injury, the extrapolation of animal data to humans, the effects of inhaled substances on extra-pulmonary systems, as well as reliable and innovative models for predicting human disease.
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