OPTIMIZATION OF THE DURATION OF EMERGENCY VEHICLE MOVEMENT TO THE PLACE OF FIRE

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Transport Problems

Silesian University of Technology

Subject: Economics, Transportation, Transportation Science & Technology

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VOLUME 15 , ISSUE 4, Part 1 (December 2020) > List of articles

OPTIMIZATION OF THE DURATION OF EMERGENCY VEHICLE MOVEMENT TO THE PLACE OF FIRE

Ivan PASNAK / Artur RENKAS *

Keywords : special rescue vehicles; the best route; delay of movement; graph model; simulation model

Citation Information : Transport Problems. Volume 15, Issue 4, Part 1, Pages 117-124, DOI: https://doi.org/10.21307/tp-2020-053

License : (CC BY 4.0)

Received Date : 18-July-2019 / Accepted: 24-November-2020 / Published Online: 31-December-2020

ARTICLE

ABSTRACT

The article is devoted to the issue of the negative effect of delays in the movement of special rescue vehicles on the effectiveness of their mission. The dependence of the area of fire on the delay of the arrival of firefighters using a fire-rescue vehicle is shown. The cascading graph of route options of special vehicle movement to the place of an emergency call is given. The algorithm of the optimal route choice of the special vehicle motion with given projected delays is offered. Based on the graph theory, probability theory, and the basic principles of traffic organization, the article proposes a new way to determine the optimal route.

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REFERENCES

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