Saved in:
Bibliographic Details
Main Authors: Sharma, Dilli Prasad, Beigi-Mohammadi, Nasim, Geng, Hongxiang, Dixon, Dawn, Madro, Rob, Emmenegger, Phil, Tobar, Carlos, Li, Jeff, Leon-Garcia, Alberto
Format: Preprint
Published: 2024
Subjects:
Online Access:https://arxiv.org/abs/2402.09553
Tags: Add Tag
No Tags, Be the first to tag this record!
_version_ 1866916578370519040
author Sharma, Dilli Prasad
Beigi-Mohammadi, Nasim
Geng, Hongxiang
Dixon, Dawn
Madro, Rob
Emmenegger, Phil
Tobar, Carlos
Li, Jeff
Leon-Garcia, Alberto
author_facet Sharma, Dilli Prasad
Beigi-Mohammadi, Nasim
Geng, Hongxiang
Dixon, Dawn
Madro, Rob
Emmenegger, Phil
Tobar, Carlos
Li, Jeff
Leon-Garcia, Alberto
contents Emergency events in a city cause considerable economic loss to individuals, their families, and the community. Accurate and timely prediction of events can help the emergency fire and rescue services in preparing for and mitigating the consequences of emergency events. In this paper, we present a systematic development of predictive models for various types of emergency events in the City of Edmonton, Canada. We present methods for (i) data collection and dataset development; (ii) descriptive analysis of each event type and its characteristics at different spatiotemporal levels; (iii) feature analysis and selection based on correlation coefficient analysis and feature importance analysis; and (iv) development of prediction models for the likelihood of occurrence of each event type at different temporal and spatial resolutions. We analyze the association of event types with socioeconomic and demographic data at the neighborhood level, identify a set of predictors for each event type, and develop predictive models with negative binomial regression. We conduct evaluations at neighborhood and fire station service area levels. Our results show that the models perform well for most of the event types with acceptable prediction errors for weekly and monthly periods. The evaluation shows that the prediction accuracy is consistent at the level of the fire station, so the predictions can be used in management by fire rescue service departments for planning resource allocation for these time periods. We also examine the impact of the COVID-19 pandemic on the occurrence of events and on the accuracy of event predictor models. Our findings show that COVID-19 had a significant impact on the performance of the event prediction models.
format Preprint
id arxiv_https___arxiv_org_abs_2402_09553
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Statistical and Machine Learning Models for Predicting Fire and Other Emergency Events
Sharma, Dilli Prasad
Beigi-Mohammadi, Nasim
Geng, Hongxiang
Dixon, Dawn
Madro, Rob
Emmenegger, Phil
Tobar, Carlos
Li, Jeff
Leon-Garcia, Alberto
Artificial Intelligence
Machine Learning
Emergency events in a city cause considerable economic loss to individuals, their families, and the community. Accurate and timely prediction of events can help the emergency fire and rescue services in preparing for and mitigating the consequences of emergency events. In this paper, we present a systematic development of predictive models for various types of emergency events in the City of Edmonton, Canada. We present methods for (i) data collection and dataset development; (ii) descriptive analysis of each event type and its characteristics at different spatiotemporal levels; (iii) feature analysis and selection based on correlation coefficient analysis and feature importance analysis; and (iv) development of prediction models for the likelihood of occurrence of each event type at different temporal and spatial resolutions. We analyze the association of event types with socioeconomic and demographic data at the neighborhood level, identify a set of predictors for each event type, and develop predictive models with negative binomial regression. We conduct evaluations at neighborhood and fire station service area levels. Our results show that the models perform well for most of the event types with acceptable prediction errors for weekly and monthly periods. The evaluation shows that the prediction accuracy is consistent at the level of the fire station, so the predictions can be used in management by fire rescue service departments for planning resource allocation for these time periods. We also examine the impact of the COVID-19 pandemic on the occurrence of events and on the accuracy of event predictor models. Our findings show that COVID-19 had a significant impact on the performance of the event prediction models.
title Statistical and Machine Learning Models for Predicting Fire and Other Emergency Events
topic Artificial Intelligence
Machine Learning
url https://arxiv.org/abs/2402.09553