Investigating the Randomness of Passengers’ Seating Behavior in Suburban Trains

In pedestrian dynamics, individual-based models serve to simulate the behavior of crowds so that evacuation times and crowd densities can be estimated or the efficiency of public transportation optimized. Often, train systems are investigated where seat choice may have a great impact on capacity uti...

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Main Authors: Jakob Schöttl, Michael J. Seitz, Gerta Köster
Format: Article
Language:English
Published: MDPI AG 2019-06-01
Series:Entropy
Subjects:
Online Access:https://www.mdpi.com/1099-4300/21/6/600
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spelling doaj-2123425b371342d4a63812757a42d3332020-11-25T00:12:12ZengMDPI AGEntropy1099-43002019-06-0121660010.3390/e21060600e21060600Investigating the Randomness of Passengers’ Seating Behavior in Suburban TrainsJakob Schöttl0Michael J. Seitz1Gerta Köster2Department of Computer Science and Mathematics, Munich University of Applied Sciences, Lothstr. 34, 80335 Munich, GermanyDepartment of Computer Science and Mathematics, Munich University of Applied Sciences, Lothstr. 34, 80335 Munich, GermanyDepartment of Computer Science and Mathematics, Munich University of Applied Sciences, Lothstr. 34, 80335 Munich, GermanyIn pedestrian dynamics, individual-based models serve to simulate the behavior of crowds so that evacuation times and crowd densities can be estimated or the efficiency of public transportation optimized. Often, train systems are investigated where seat choice may have a great impact on capacity utilization, especially when passengers get in each other’s way. Therefore, it is useful to reproduce passengers’ behavior inside trains. However, there is surprisingly little research on the subject. Do passengers distribute evenly as it is most often assumed in simulation models and as one would expect from a system that obeys the laws of thermodynamics? Conversely, is there a higher degree of order? To answer these questions, we collect data on seating behavior in Munich’s suburban trains and analyze it. Clear preferences are revealed that contradict the former assumption of a uniform distribution. We subsequently introduce a model that matches the probability distributions we observed. We demonstrate the applicability of our model and present a qualitative validation with a simulation example. The model’s implementation is part of the free and open-source Vadere simulation framework for pedestrian dynamics and thus available for further studies. The model can be used as one component in larger systems for the simulation of public transport.https://www.mdpi.com/1099-4300/21/6/600randomnessentropypedestrian behaviortraffic modelstraffic and crowd dynamicsagent based modelsseating behaviorfield observation
collection DOAJ
language English
format Article
sources DOAJ
author Jakob Schöttl
Michael J. Seitz
Gerta Köster
spellingShingle Jakob Schöttl
Michael J. Seitz
Gerta Köster
Investigating the Randomness of Passengers’ Seating Behavior in Suburban Trains
Entropy
randomness
entropy
pedestrian behavior
traffic models
traffic and crowd dynamics
agent based models
seating behavior
field observation
author_facet Jakob Schöttl
Michael J. Seitz
Gerta Köster
author_sort Jakob Schöttl
title Investigating the Randomness of Passengers’ Seating Behavior in Suburban Trains
title_short Investigating the Randomness of Passengers’ Seating Behavior in Suburban Trains
title_full Investigating the Randomness of Passengers’ Seating Behavior in Suburban Trains
title_fullStr Investigating the Randomness of Passengers’ Seating Behavior in Suburban Trains
title_full_unstemmed Investigating the Randomness of Passengers’ Seating Behavior in Suburban Trains
title_sort investigating the randomness of passengers’ seating behavior in suburban trains
publisher MDPI AG
series Entropy
issn 1099-4300
publishDate 2019-06-01
description In pedestrian dynamics, individual-based models serve to simulate the behavior of crowds so that evacuation times and crowd densities can be estimated or the efficiency of public transportation optimized. Often, train systems are investigated where seat choice may have a great impact on capacity utilization, especially when passengers get in each other’s way. Therefore, it is useful to reproduce passengers’ behavior inside trains. However, there is surprisingly little research on the subject. Do passengers distribute evenly as it is most often assumed in simulation models and as one would expect from a system that obeys the laws of thermodynamics? Conversely, is there a higher degree of order? To answer these questions, we collect data on seating behavior in Munich’s suburban trains and analyze it. Clear preferences are revealed that contradict the former assumption of a uniform distribution. We subsequently introduce a model that matches the probability distributions we observed. We demonstrate the applicability of our model and present a qualitative validation with a simulation example. The model’s implementation is part of the free and open-source Vadere simulation framework for pedestrian dynamics and thus available for further studies. The model can be used as one component in larger systems for the simulation of public transport.
topic randomness
entropy
pedestrian behavior
traffic models
traffic and crowd dynamics
agent based models
seating behavior
field observation
url https://www.mdpi.com/1099-4300/21/6/600
work_keys_str_mv AT jakobschottl investigatingtherandomnessofpassengersseatingbehaviorinsuburbantrains
AT michaeljseitz investigatingtherandomnessofpassengersseatingbehaviorinsuburbantrains
AT gertakoster investigatingtherandomnessofpassengersseatingbehaviorinsuburbantrains
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