Mobility Pattern Analysis for Power Restoration Activities Using Geo-Tagged Tweets

B. Kar, Jacob Ethridge
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Abstract

In this study, we analyzed mobility patterns of at-risk populations affected by an extreme event using geotagged tweets to geo-target power restoration efforts. Unlike other studies that have used tweets to facilitate emergency management activities, we used 1.5 million geotagged tweets generated during Hurricane Sandy (2012) to determine the mobility patterns and geospatial distribution of impacted populations who experienced power outage before, during and after the hurricane. We implemented a three-step analytical framework to: (i) analyze tweet contents with visual methods, including dendrograms, word clouds to identify common keywords pertaining to power outage; (ii) identify target users whose tweets contained information about power outages; and (iii) create a user-tweet locations matrix and an origin-destination matrix to examine clusters of target users and their mobility patterns. Preliminary results indicate that potential clusters were present in and around New York city, Philadelphia, Washington D.C. and Baltimore, which were used as potential evacuation destination cities after hurricane Sandy. The travel pattern and destination information can be used to (i) mobilize restoration efforts by utility companies and (ii) address resource allocation needs both in impacted and destination cities. Future work will focus on analyzing potential destinations for different origins and travel-time to identify evacuation routing patterns.
使用地理标记推文的电力恢复活动的移动模式分析
在这项研究中,我们分析了受极端事件影响的高危人群的流动模式,使用地理标记推文来定位地理目标电力恢复工作。与其他使用推文促进应急管理活动的研究不同,我们使用了飓风桑迪(2012年)期间生成的150万条地理标记推文,以确定在飓风之前、期间和之后经历停电的受影响人口的流动模式和地理空间分布。我们实施了一个三步分析框架:(i)用可视化方法分析推文内容,包括树形图、词云,以识别与停电有关的常见关键词;(ii)识别其推文包含有关停电信息的目标用户;(iii)创建用户-推特位置矩阵和起点-目的地矩阵,以检查目标用户群及其移动模式。初步结果表明,潜在的集群存在于纽约市、费城、华盛顿特区和巴尔的摩及其周围,这些城市在飓风桑迪之后被用作潜在的疏散目的地。旅行模式和目的地信息可用于(i)动员公用事业公司的恢复工作和(ii)解决受影响城市和目的地城市的资源分配需求。未来的工作将集中在分析不同起源和旅行时间的潜在目的地,以确定疏散路线模式。
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