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Quality assessment of crowdsourced social media data for urban flood management

机译:城市洪水管理众包社会媒体数据的质量评估

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Urban flooding can cause widespread devastation in terms of loss of life and damage to property. As such, monitoring urban flood evolution is crucial in identifying the most affected areas, where emergency response resources should be directed. Flood monitoring through airborne or satellite remote sensing is often limited due to weather conditions and urban topography. In contrast, crowdsourced data is not affected by weather or topography, and they hence offer great potential for urban flood monitoring through real-time information shared by individuals. Despite the benefits, there is no guarantee of quality associated with crowdsourced data, which hampers its usability. In this paper, we present and evaluate two different approaches (binary logistic regression and fuzzy logic) to assess the quality of crowdsourced social media data retrieved from the public Twitter archive. Input variables were constructed based on Twitter metadata and spatiotemporal analysis. Both models were trained and tested using actual flood-related information Tweeted during three consecutive years of flooding in Phetchaburi City, Thailand (2016 to 2018), and produced good results. The fuzzy logic approach is shown to perform better, however its implementation involves significantly more subjectivity. The ability to assess data quality enables the uncertainty associated with crowdsourced social media data to be estimated, which allows this type of data to supplement conventional observations, and hence improve flood management activities.
机译:城市洪水可能导致损失生命损失和对财产损害而造成普遍的破坏。因此,监测城市洪水演变对于识别最严重的地区,应对应对急的地区来说至关重要。由于天气状况和城市地形,通过空中或卫星遥感的防洪监测通常有限。相比之下,众群数据不受天气或地形的影响,因此通过个人共享的实时信息提供城市洪水监测的巨大潜力。尽管有好处,但无法保证与众群数据相关的质量,这妨碍了其可用性。在本文中,我们展示并评估了两种不同的方法(二进制逻辑回归和模糊逻辑),以评估从公众推特存档检索的众群社交媒体数据的质量。基于Twitter元数据和时空分析构建输入变量。两种模型都使用在泰国Phetchaburi市连续三年连续三年推断的实际洪水相关信息进行培训和测试,并产生了良好的效果。模糊逻辑方法显示更好,但其实现涉及更高的主观性。评估数据质量的能力使得能够估计与众群社交媒体数据相关的不确定性,这允许这种类型的数据补充传统的观察,从而改善洪水管理活动。

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