Please use this identifier to cite or link to this item: https://sci.ldubgd.edu.ua/jspui/handle/123456789/18552
Title: ARTIFICIAL INTELLIGENCE SUPPORTED FIELD RECOGNITION OF BIOLOGICAL, CHEMICAL AND ENVIRONMENTAL THREATS IN WARTIME
Other Titles: ВИЯВЛЕННЯ БІОЛОГІЧНИХ, ХІМІЧНИХ ТА ЕКОЛОГІЧНИХ ЗАГРОЗ У БОЙОВИХ УМОВАХ ЗА ДОПОМОГОЮ ШТУЧНОГО ІНТЕЛЕКТУ
Authors: Jędrasiak, Karol
Keywords: wartime threat prevention
biological threats
chemical threats
environmental threats
artificial intelligence
unmanned systems
geospatial intelligence
dynamic risk mapping
chemical, biological, radiological and nuclear (CBRN) defence
command decision support
Issue Date: 2026
Publisher: ЛДУБЖД
Citation: Jędrasiak K. Artificial intelligence-supported field recognition of biological, chemical and environmental threats in wartime. Біологічні, хімічні та екологічні загрози в умовах війни : колективна монографія / за заг. ред. В.В. Поповича, В.О. Сергієнко, Н.О. Іванченко. Львів : ЛДУБЖД, 2026. С. 361–379. URL: https://doi.org/10.32447/bcet.2026.20.
Abstract: Wartime biological, chemical and environmental threats increasingly arise from damaged industrial infrastructure, disrupted public-health systems, contaminated water networks, fires, hazardous transport corridors and ambiguous hostile actions. Predictive prevention is defined here as the ability to identify probable escalation pathways from incomplete and time-sensitive signals before full incident confirmation is available. This article develops an operational model for uniformed services and civil protection actors that combines multi-source data, provenance control, anomaly detection, unmanned stand off reconnaissance, dynamic geospatial risk mapping, artificial intelligence (AI) staff-support modules and exercise-based validation. The model does not transfer decisions to AI. It uses AI to rank information gaps, expose uncertainty, structure reports and support safer reconnaissance, while legally responsible human command remains accountable for warning, sampling, isolation, evacuation and stand-down decisions. The practical value of the framework is earlier recognition of weak signals, reduced responder exposure, better prioritization of sampling and more auditable command reasoning during wartime emergencies.
URI: https://doi.org/10.32447/bcet.2026.20
https://sci.ldubgd.edu.ua/jspui/handle/123456789/18552
ISBN: 978-617-8654-28-3
Appears in Collections:Біологічні, хімічні та екологічні загрози в умовах війни: колективна монографія / за загальною редакцією В.В. Поповича, В.О. Сергієнко, Н.О. Іванченко

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