kheiry M, veisani Y, Sayyadi H S, Havasy B, Sahebi A. Predicting Firefighting Response Time in Urban Settings Using Machine Learning: Key Factors for Enhanced Emergency Management. Journal of Health Sciences Perspective 2025; 1 (4) :32-36
URL:
http://jhsp.medilam.ac.ir/article-1-49-fa.html
Predicting Firefighting Response Time in Urban Settings Using Machine Learning: Key Factors for Enhanced Emergency Management. Journal of Health Sciences Perspective. 1404; 1 (4) :32-36
URL: http://jhsp.medilam.ac.ir/article-1-49-fa.html
چکیده: (43 مشاهده)
Introduction: This study addresses the challenge of accurately predicting firefighting operation times in urban areas using machine learning techniques.
Materials & Methods: Data from 1,399 firefighting incidents in Ilam City during 2022 were analyzed after preprocessing, focusing on 19 key variables out of an initial 31. Among the evaluated models, the Generalized Linear Model (GLM) showed the best performance with the lowest RMSE (14.21 ± 1.65) and estimated an average operation time of 26.96 minutes (95% CI: 12.75–41.17).
Results: Important factors influencing operation duration included the number of personnel, rescue equipment, fire engines, and manual extinguishers. The results demonstrate the potential of ML models to optimize resource allocation and response strategies, contributing to more efficient urban fire management and reduced losses.
Conclusion: Further work is needed to enhance data quality and model accuracy for improved operational planning.
نوع مطالعه:
پژوهشي |
موضوع مقاله:
Health program evaluation دریافت: 1404/4/16 | پذیرش: 1404/6/5 | انتشار: 1404/6/31