Publication detail
Real-time RSET prediction across three types of geometries and simulation training dataset: A comparative study of machine learning models
UHLÍK, O. OKŘINOVÁ, P. TOKAREVSKIKH, A. APELTAUER, T. APELTAUER, J.
Original Title
Real-time RSET prediction across three types of geometries and simulation training dataset: A comparative study of machine learning models
Type
journal article in Web of Science
Language
English
Original Abstract
Agent-based evacuation models provide useful data of the evacuation process, but they are not primarily designed for use during an emergency. The paper aims to test predicting RSET using a surrogate ML model trained on a simulation dataset with 60 samples. A total of 9 machine learning algorithms were tested on 3 simple geometries: bottleneck, stairway and walkway. A set of 7 spatial features was used to train the surrogate models. The results showed a relatively good ability of Artificial Neural Network to learn in scenarios involving bottlenecks and stairways, with an R2: 0.99 on the testing dataset. In the walkway scenario, all models experienced a significant drop in performance, with Gradient Boost performing the best (R2: 0.92). The paper demonstrated ability to generalize effectively in bottleneck-type tasks with training on a relatively small dataset containing spatial parameters obtainable in real-time from camera systems.
Keywords
Evacuation modeling, Machine learning, Required safe egress time, Agent-based models
Authors
UHLÍK, O.; OKŘINOVÁ, P.; TOKAREVSKIKH, A.; APELTAUER, T.; APELTAUER, J.
Released
24. 5. 2024
Publisher
Elsevier
Location
Netherlands
ISBN
2666-1659
Periodical
Developments in the Built Environment
Year of study
18
Number
100461
State
United Kingdom of Great Britain and Northern Ireland
Pages count
13
URL
Full text in the Digital Library
BibTex
@article{BUT188671,
author="Ondřej {Uhlík} and Petra {Okřinová} and Artem {Tokarevskikh} and Tomáš {Apeltauer} and Jiří {Apeltauer}",
title="Real-time RSET prediction across three types of geometries and simulation training dataset: A comparative study of machine learning models",
journal="Developments in the Built Environment",
year="2024",
volume="18",
number="100461",
pages="13",
doi="10.1016/j.dibe.2024.100461",
issn="2666-1659",
url="https://www.sciencedirect.com/science/article/pii/S266616592400142X?via%3Dihub"
}