Modeling the impact of Weather on Distance Traveled by Lost Persons

Melanie Sattler, Khoi H. Tran, Haley A. Blair, Bryce Runey
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Abstract

Missing Persons cases are a race against time, where every minute is critical to save a life. The more information a Search and Rescue (SAR) team has to work with, the more likely the success of the search. dbS Productions created a Search and Rescue database with over 20,000 search and rescue cases across the world to assist rescuers in their SAR efforts. The database includes search-specific information such as location, eco-division, and limited weather information. It also includes personal data, including sex, age, clothing, and equipment, as well as various characterizations of the missing person, such as whether they are a hunter, a hiker, or have various medical conditions, such as dementia. All of these factors can be used to determine where a missing person may have headed while they were lost and try to locate them more efficiently. The primary goal of this research is to create a predictive model by augmenting existing spatial models implemented by dbS Productions with additional weather features, determining how weather conditions impact the distance traveled by lost persons, thus improving the efficiency of search and rescue operations. This process was established through regression modeling and other machine learning methods. Several models included in order to determine the effect of weather on the distance traveled, including regression models, models using support vector machines (SVM), and the most successful model using XGBoost. The results showed that there was a relationship between the distance traveled and the maximum temperature and the minimum temperature. Overall showing that the weather extremes have a significant impact on the distance traveled by lost persons.
模拟天气对失踪者行进距离的影响
失踪人口案件是一场与时间的赛跑,每一分钟都是挽救生命的关键。搜救队掌握的信息越多,搜救成功的可能性就越大。dbS Productions建立了一个搜索和救援数据库,其中包含全球超过20,000个搜索和救援案例,以协助救援人员进行搜救工作。该数据库包括搜索特定信息,如位置、生态分区和有限的天气信息。它还包括个人数据,包括性别、年龄、服装和装备,以及失踪者的各种特征,例如他们是猎人、徒步旅行者还是患有各种疾病,例如痴呆症。所有这些因素都可以用来确定失踪者失踪时可能去的地方,并试图更有效地找到他们。本研究的主要目标是通过增加dbS Productions实施的具有额外天气特征的现有空间模型来创建预测模型,确定天气条件如何影响失联人员的行走距离,从而提高搜索和救援行动的效率。这个过程是通过回归建模等机器学习方法建立的。为了确定天气对行进距离的影响,包括几种模型,包括回归模型,使用支持向量机(SVM)的模型,以及最成功的使用XGBoost的模型。实验结果表明,移动距离与最高温度和最低温度之间存在一定的关系。总的来说,极端天气对失踪者所走的距离有重大影响。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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