MoveSafe:灾害响应中基于运输模式的目标警报框架

Paras Mehta, S. Müller, A. Voisard
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引用次数: 3

摘要

灾害,无论是自然的还是人为的,都可能以意想不到的方式发生,造成破坏和破坏。在突然发生危险的情况下,需要告知私人和公共交通工具的使用者和行人,并引导他们安全。预警系统中的目标警报涉及根据不同需求和情况向各种社区传达个性化信息,以提高警报的可用性和遵从性。在本文中,我们提出了MoveSafe,这是一个通用的、可扩展的框架,用于基于运输模式的人口动态划分,以便在危险发生的情况下进行有针对性的警报和更好的运输管理。通过持续的特征提取和维护,利用用户的位置轨迹动态推断出用户的出行方式。结合危险位置,我们使用交通方式信息来寻找具有不同潜在风险水平和不同信息需求的人群。该框架还支持各种分类特性、分类器、聚类维度和聚类算法。我们评估了它在不同设置下的性能,并给出了结果。
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MoveSafe: a framework for transportation mode-based targeted alerting in disaster response
Disasters, whether natural or man-made, can occur in an unexpected and unanticipated manner causing damage and disruptions. In the event of sudden onset of a hazard, private and public transport users and pedestrians need to be informed and guided to safety. Targeted alerting in early warning systems involves the communication of personalized information to a variety of communities based on their different needs and situations to improve alert usability and compliance. In this paper, we present MoveSafe, a generic and extensible framework for transportation mode-based dynamic partitioning of a population for targeted alerting and for better transport management in hazard occurrence scenarios. We infer the transportation mode of the users dynamically using their location traces through continuous feature extraction and maintenance. In combination with the hazard location, we use the transportation mode information to find clusters of people at potentially different levels of risk and with different information needs. The framework also supports a variety of classification features, classifiers, clustering dimensions, and clustering algorithms. We evaluate its performance in different settings and present the results.
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