Lag and Duration of Leader-Follower Relationships in Mixed Traffic Using Causal Inference

This study presents comprehensive analysis of car-following behavior on roads, utilizing Granger causality and transfer entropy techniques to enhance the validity of existing car-following models. It was found that most leader-follower relationships exhibit a delay in lateral movement by 4-5 s and l...

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Main Authors: Africa, David Demitri, Dy Quiangco, Ronald Benjamin, Go, Clark C
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Published: Archīum Ateneo 2024
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Online Access:https://archium.ateneo.edu/mathematics-faculty-pubs/263
https://doi.org/10.1063/5.0166785
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spelling ph-ateneo-arc.mathematics-faculty-pubs-12642024-04-15T07:07:54Z Lag and Duration of Leader-Follower Relationships in Mixed Traffic Using Causal Inference Africa, David Demitri Dy Quiangco, Ronald Benjamin Go, Clark C This study presents comprehensive analysis of car-following behavior on roads, utilizing Granger causality and transfer entropy techniques to enhance the validity of existing car-following models. It was found that most leader-follower relationships exhibit a delay in lateral movement by 4-5 s and last for short periods of around 3-5 s. These patterns are exhibited for all types of relationship found in the dataset, as well as for followers of all types. These findings imply that lateral movement reactions are governed by a different set of rules from braking and acceleration reactions, and the advantage in following lateral changes is short-lived. This also suggests that mixed traffic conditions may force drivers to slow down and calibrate reactions, as well as limiting the speed advantage gained by following a leader. Our methods were verified against random sampling as a method of selecting leader-follower pairs, decreasing the percent error in predicted speeds by 9.5% using the optimal velocity car-following model. The study concludes with a set of recommendations for future work, including the use of a diversity of car-following models for simulation and the use of causation entropy to distinguish between direct and indirect influences. 2024-01-01T08:00:00Z text https://archium.ateneo.edu/mathematics-faculty-pubs/263 https://doi.org/10.1063/5.0166785 Mathematics Faculty Publications Archīum Ateneo Applied Mathematics Mathematics Non-linear Dynamics Physical Sciences and Mathematics
institution Ateneo De Manila University
building Ateneo De Manila University Library
continent Asia
country Philippines
Philippines
content_provider Ateneo De Manila University Library
collection archium.Ateneo Institutional Repository
topic Applied Mathematics
Mathematics
Non-linear Dynamics
Physical Sciences and Mathematics
spellingShingle Applied Mathematics
Mathematics
Non-linear Dynamics
Physical Sciences and Mathematics
Africa, David Demitri
Dy Quiangco, Ronald Benjamin
Go, Clark C
Lag and Duration of Leader-Follower Relationships in Mixed Traffic Using Causal Inference
description This study presents comprehensive analysis of car-following behavior on roads, utilizing Granger causality and transfer entropy techniques to enhance the validity of existing car-following models. It was found that most leader-follower relationships exhibit a delay in lateral movement by 4-5 s and last for short periods of around 3-5 s. These patterns are exhibited for all types of relationship found in the dataset, as well as for followers of all types. These findings imply that lateral movement reactions are governed by a different set of rules from braking and acceleration reactions, and the advantage in following lateral changes is short-lived. This also suggests that mixed traffic conditions may force drivers to slow down and calibrate reactions, as well as limiting the speed advantage gained by following a leader. Our methods were verified against random sampling as a method of selecting leader-follower pairs, decreasing the percent error in predicted speeds by 9.5% using the optimal velocity car-following model. The study concludes with a set of recommendations for future work, including the use of a diversity of car-following models for simulation and the use of causation entropy to distinguish between direct and indirect influences.
format text
author Africa, David Demitri
Dy Quiangco, Ronald Benjamin
Go, Clark C
author_facet Africa, David Demitri
Dy Quiangco, Ronald Benjamin
Go, Clark C
author_sort Africa, David Demitri
title Lag and Duration of Leader-Follower Relationships in Mixed Traffic Using Causal Inference
title_short Lag and Duration of Leader-Follower Relationships in Mixed Traffic Using Causal Inference
title_full Lag and Duration of Leader-Follower Relationships in Mixed Traffic Using Causal Inference
title_fullStr Lag and Duration of Leader-Follower Relationships in Mixed Traffic Using Causal Inference
title_full_unstemmed Lag and Duration of Leader-Follower Relationships in Mixed Traffic Using Causal Inference
title_sort lag and duration of leader-follower relationships in mixed traffic using causal inference
publisher Archīum Ateneo
publishDate 2024
url https://archium.ateneo.edu/mathematics-faculty-pubs/263
https://doi.org/10.1063/5.0166785
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