Statistical Modelling of Emergency Service Responses

Aim: The aim of this article is to demonstrate the applicability of historical emergency-response data – gathered from decision-support systems of emergency services – in emergency-response statistical modelling. Project and methods: Building models of real phenomena is the first step in making a...

Full description

Bibliographic Details
Main Authors: Jarosław Prońko, Jacek Zboina, Jan Kielin, Beata Wojtasiak, Marta Iwańska
Format: Article
Language:English
Published: Scientific and Research Centre for Fire Protection - National Research Institute 2019-06-01
Series:Safety & Fire Technology
Subjects:
Online Access:https://panel.sft.cnbop.pl/storage/1329163c-213a-4a31-a4a7-e82ca69503cc
_version_ 1818880109000523776
author Jarosław Prońko
Jacek Zboina
Jan Kielin
Beata Wojtasiak
Marta Iwańska
author_facet Jarosław Prońko
Jacek Zboina
Jan Kielin
Beata Wojtasiak
Marta Iwańska
author_sort Jarosław Prońko
collection DOAJ
description Aim: The aim of this article is to demonstrate the applicability of historical emergency-response data – gathered from decision-support systems of emergency services – in emergency-response statistical modelling. Project and methods: Building models of real phenomena is the first step in making and rationalising decisions regarding these phenomena. The statistical modelling presented in this article applies to critical-event response times for emergency services – counted from the moment the event is reported to the beginning of the rescue action by relevant services. And then, until the action is completed and services are ready for a new rescue action. The ability to estimate these time periods is essential for the rational deployment of rescue services taking into account the spatial density of (possible) critical events and the critical assessment of the readiness of these services. It also allows the assessment of the availability of emergency services, understood as the number of emergency teams which ensure operational effectiveness in the designated area. The article presents the idea of modelling emergency response times, the methods to approximate the distribution of random variables describing the individual stages and practical applications of such approximations. Due to editorial limitations, the article includes the results only for one district (powiat – second-level unit of local government and administration in Poland). Results: A number of solutions proposed in the article can be considered innovative, but special attention should be given to the methodology to isolate random variables included in the analysed database as single random variables. This methodology was repeatedly tested with a positive result. The study was based on data on critical events and emergency response times collected in the computerised decision-support system of the State Fire Service (PSP) in Poland. Conclusions: Presented in this article, the method of approximating the duration of individual stages of emergency response based on theoretical distributions of random variables is largely consistent with the empirical data. It also allows to predict how the system will work in the short-term (over a time span of several years). The predictive property of such modelling can be used to optimise the deployment and to determine the capabilities of individual rescue teams. These studies were conducted between 2012 and 2015 as part of a project funded by the National Centre for Research and Development (NCBR), agreement No. DOBR/0015/R/ID1/2012/03.
first_indexed 2024-12-19T14:40:44Z
format Article
id doaj.art-9df091ad76dc4ae0972eb48f3e1d8dd7
institution Directory Open Access Journal
issn 2657-8808
2658-0810
language English
last_indexed 2024-12-19T14:40:44Z
publishDate 2019-06-01
publisher Scientific and Research Centre for Fire Protection - National Research Institute
record_format Article
series Safety & Fire Technology
spelling doaj.art-9df091ad76dc4ae0972eb48f3e1d8dd72022-12-21T20:17:06ZengScientific and Research Centre for Fire Protection - National Research InstituteSafety & Fire Technology2657-88082658-08102019-06-0153183110.12845/sft.51.3.2019.1Statistical Modelling of Emergency Service ResponsesJarosław Prońko0https://orcid.org/0000-0003-2944-9592Jacek Zboina1https://orcid.org/0000-0002-9436-5830Jan Kielin2https://orcid.org/0000-0002-3506-5424Beata Wojtasiak3https://orcid.org/0000-0001-5741-1079Marta Iwańska4https://orcid.org/0000-0003-4815-7296Jan Kochanowski University in KielceCNBOP-PIBCNBOP-PIBCNBOP-PIBCNBOP-PIBAim: The aim of this article is to demonstrate the applicability of historical emergency-response data – gathered from decision-support systems of emergency services – in emergency-response statistical modelling. Project and methods: Building models of real phenomena is the first step in making and rationalising decisions regarding these phenomena. The statistical modelling presented in this article applies to critical-event response times for emergency services – counted from the moment the event is reported to the beginning of the rescue action by relevant services. And then, until the action is completed and services are ready for a new rescue action. The ability to estimate these time periods is essential for the rational deployment of rescue services taking into account the spatial density of (possible) critical events and the critical assessment of the readiness of these services. It also allows the assessment of the availability of emergency services, understood as the number of emergency teams which ensure operational effectiveness in the designated area. The article presents the idea of modelling emergency response times, the methods to approximate the distribution of random variables describing the individual stages and practical applications of such approximations. Due to editorial limitations, the article includes the results only for one district (powiat – second-level unit of local government and administration in Poland). Results: A number of solutions proposed in the article can be considered innovative, but special attention should be given to the methodology to isolate random variables included in the analysed database as single random variables. This methodology was repeatedly tested with a positive result. The study was based on data on critical events and emergency response times collected in the computerised decision-support system of the State Fire Service (PSP) in Poland. Conclusions: Presented in this article, the method of approximating the duration of individual stages of emergency response based on theoretical distributions of random variables is largely consistent with the empirical data. It also allows to predict how the system will work in the short-term (over a time span of several years). The predictive property of such modelling can be used to optimise the deployment and to determine the capabilities of individual rescue teams. These studies were conducted between 2012 and 2015 as part of a project funded by the National Centre for Research and Development (NCBR), agreement No. DOBR/0015/R/ID1/2012/03.https://panel.sft.cnbop.pl/storage/1329163c-213a-4a31-a4a7-e82ca69503ccstatistical modellingdata miningemergency services
spellingShingle Jarosław Prońko
Jacek Zboina
Jan Kielin
Beata Wojtasiak
Marta Iwańska
Statistical Modelling of Emergency Service Responses
Safety & Fire Technology
statistical modelling
data mining
emergency services
title Statistical Modelling of Emergency Service Responses
title_full Statistical Modelling of Emergency Service Responses
title_fullStr Statistical Modelling of Emergency Service Responses
title_full_unstemmed Statistical Modelling of Emergency Service Responses
title_short Statistical Modelling of Emergency Service Responses
title_sort statistical modelling of emergency service responses
topic statistical modelling
data mining
emergency services
url https://panel.sft.cnbop.pl/storage/1329163c-213a-4a31-a4a7-e82ca69503cc
work_keys_str_mv AT jarosławpronko statisticalmodellingofemergencyserviceresponses
AT jacekzboina statisticalmodellingofemergencyserviceresponses
AT jankielin statisticalmodellingofemergencyserviceresponses
AT beatawojtasiak statisticalmodellingofemergencyserviceresponses
AT martaiwanska statisticalmodellingofemergencyserviceresponses