Study on Site Selection Evaluation of Police Drone for the Disposal of Abnormal Moving Vehicles
Zhaowei Ding (),
Xin Wang (),
Lei Wang (),
Jianhua Yang () and
Ai Wang ()
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Zhaowei Ding: University of Science & Technology Beijing, Donlinks School of Economics and Management
Xin Wang: Criminal Investigation Police, University of China
Lei Wang: Criminal Investigation Police, University of China
Jianhua Yang: University of Science & Technology Beijing, Donlinks School of Economics and Management
Ai Wang: University of Science & Technology Beijing, Donlinks School of Economics and Management
A chapter in LISS 2020, 2021, pp 875-892 from Springer
Abstract:
Abstract Abnormal moving vehicles pose a greater threat to people, vehicles and objects around them. Compared with the traditional way of sending out police, the police drone (UAV) is faster and more agile, can effectively detect and stop them. In order to improve the disposal efficiency of police drone, this paper takes into account the environmental risk road resilience and police defense level. Site selection evaluation is carried out. As example a police station, combined with GIS technology, quantitative and qualitative evaluation to verify the feasibility of the site selection evaluation scheme is used. This method not only considers the potential risk distribution of the region, but also adds the influence of police resources on site selection evaluation. The relationship between regional risk assessment and scientific site selection is established, to provide better decision support for the site selection layout of police drone for disposing abnormal vehicles.
Keywords: Abnormal moving vehicles; Unmanned aerial vehicle; Site assessment; Geographical information system (search for similar items in EconPapers)
Date: 2021
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Persistent link: https://EconPapers.repec.org/RePEc:spr:sprchp:978-981-33-4359-7_61
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DOI: 10.1007/978-981-33-4359-7_61
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