Mapping Flood Exposure, Damage, and Population Needs Using Remote and Social Sensing: A Case Study of 2022 Pakistan Floods

Zainab Akhtar, Umair Qazi, Rizwan Sadiq, Aya El-Sakka, M. Sajjad, Ferda Ofli, Muhammad Imran
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引用次数: 1

Abstract

The devastating 2022 floods in Pakistan resulted in a catastrophe impacting millions of people and destroying thousands of homes. While disaster management efforts were taken, crisis responders struggled to understand the country-wide flood extent, population exposure, urgent needs of affected people, and various types of damage. To tackle this challenge, we leverage remote and social sensing with geospatial data using state-of-the-art machine learning techniques for text and image processing. Our satellite-based analysis over a one-month period (25 Aug–25 Sep) revealed that 11.48% of Pakistan was inundated. When combined with geospatial data, this meant 18.9 million people were at risk across 160 districts in Pakistan, with adults constituting 50% of the exposed population. Our social sensing data analysis surfaced 106.7k reports pertaining to deaths, injuries, and concerns of the affected people. To understand the urgent needs of the affected population, we analyzed tweet texts and found that South Karachi, Chitral and North Waziristan required the most basic necessities like food and shelter. Further analysis of tweet images revealed that Lasbela, Rajanpur, and Jhal Magsi had the highest damage reports normalized by their population. These damage reports were found to correlate strongly with affected people reports and need reports, achieving an R-Square of 0.96 and 0.94, respectively. Our extensive study shows that combining remote sensing, social sensing, and geospatial data can provide accurate and timely information during a disaster event, which is crucial in prioritizing areas for immediate and gradual response.
利用遥感和社会遥感绘制洪水暴露、损害和人口需求:以2022年巴基斯坦洪水为例
2022年巴基斯坦发生的毁灭性洪水造成了一场灾难,影响了数百万人,摧毁了数千座房屋。虽然采取了灾害管理措施,但危机应对人员仍在努力了解全国范围内的洪水程度、人口暴露情况、受影响人群的紧急需求以及各种类型的损失。为了应对这一挑战,我们利用遥感和社会遥感与地理空间数据,使用最先进的机器学习技术进行文本和图像处理。我们在一个月期间(8月25日至9月25日)的卫星分析显示,巴基斯坦11.48%的地区被淹没。结合地理空间数据,这意味着巴基斯坦160个地区的1890万人处于危险之中,其中成年人占暴露人口的50%。我们的社会感知数据分析显示了106.7万份与死亡、受伤和受影响人群关注有关的报告。为了了解受灾人口的迫切需求,我们分析了推特文本,发现卡拉奇南部、吉德拉尔和瓦济里斯坦北部需要食物和住所等最基本的必需品。对推特图像的进一步分析显示,拉斯拉贝拉、拉詹普尔和杰哈尔马格西的损失报告按其人口标准化计算最高。发现这些损害报告与受影响人员报告和需求报告密切相关,r平方分别为0.96和0.94。我们的广泛研究表明,结合遥感、社会传感和地理空间数据可以在灾害事件中提供准确和及时的信息,这对于确定需要立即和逐步响应的优先区域至关重要。
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