Nowcasting Air Quality by Fusing Insights from Meteorological Data, Satellite Imagery and Social Media Images Using Deep Learning

Muhammad Rizal Khaefi, Zakiya Pramestri, Imaduddin Amin, Jong Gun Lee
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引用次数: 6

Abstract

Peatland fire and haze events in Southeast Asia are disasters with trans-boundary implications, having increased in recent years along with rapid deforestation, land clearing and severe dry seasons. Aerosols are emitted in high concentrations from the fires, which degrade air quality and reduce visibility, in turn causing economic, social, health, and environmental problems. During haze events, it is critical for public authorities to have timely information about affected populations. Currently, Indonesian disaster management authorities manage forest and peatland fire and haze events based on satellite data and sensors. They are looking for more real-time information in order to better protect vulnerable populations and environment. This paper explores information on visibility extracted from photos shared on social media to improve forecasting performance for haze severity. Our results show that visibility information can improve forecast accuracy over a baseline approach with common features, namely data from satellites and ground air quality sensors. Furthermore, by using social media photos, our model adds a near real-time property to the forecast model, with potential to improve disaster management and mitigation,
利用深度学习融合气象数据、卫星图像和社交媒体图像的见解,预测临近空气质量
东南亚的泥炭地火灾和雾霾事件是具有跨界影响的灾害,近年来随着森林砍伐、土地清理和严重干旱季节的增加而增加。火灾排放出高浓度的气溶胶,使空气质量恶化,能见度降低,进而造成经济、社会、健康和环境问题。在雾霾事件期间,公共当局及时掌握受影响人群的信息至关重要。目前,印度尼西亚灾害管理当局根据卫星数据和传感器管理森林和泥炭地火灾和雾霾事件。他们正在寻找更多的实时信息,以便更好地保护弱势群体和环境。本文探讨了从社交媒体上分享的照片中提取的能见度信息,以提高雾霾严重程度的预测性能。我们的研究结果表明,能见度信息可以提高预报的准确性,而不是基线方法与共同特征,即来自卫星和地面空气质量传感器的数据。此外,通过使用社交媒体照片,我们的模型为预测模型增加了接近实时的属性,有可能改善灾害管理和减灾,
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