Intelligent buses in a loop service: emergence of no-boarding and holding strategies
We study how N intelligent buses serving a loop of M bus stops learn a no-boarding strategy and a holding strategy by reinforcement learning. The no-boarding and holding strategies emerge from the actions of stay or leave when a bus is at a bus stop and everyone who wishes to alight has done so. A r...
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sg-ntu-dr.10356-1450272023-02-28T19:26:50Z Intelligent buses in a loop service: emergence of no-boarding and holding strategies Saw, Vee-Liem Vismara, Luca Chew, Lock Yue School of Physical and Mathematical Sciences Data Science and Artificial Intelligence Research Centre Complexity Institute Science::Physics Bus Terminals Bus Transportation We study how N intelligent buses serving a loop of M bus stops learn a no-boarding strategy and a holding strategy by reinforcement learning. The no-boarding and holding strategies emerge from the actions of stay or leave when a bus is at a bus stop and everyone who wishes to alight has done so. A reward that encourages the buses to strive towards a staggered phase difference amongst them whilst picking up passengers allows the reinforcement learning process to converge to an optimal Q-table within a reasonable amount of simulation time. It is remarkable that this emergent behaviour of intelligent buses turns out to minimise the average waiting time of commuters, in various setups where buses move with the same speed or different speeds, during busy as well as lull periods. Cooperative actions are also observed, e.g., the buses learn to unbunch. Nanyang Technological University Published version This work was supported by the Joint WASP/NTU Programme (Project no. M4082189) and the DSAIR@NTU Grant (Project no. M4082418). 2020-12-09T01:09:38Z 2020-12-09T01:09:38Z 2020 Journal Article Saw, V.-L., Vismara L., Chew, L. Y. (2020). Intelligent buses in a loop service: emergence of no-boarding and holding strategies. Complexity, 2020, 274254-. doi:10.1155/2020/7274254 1076-2787 https://hdl.handle.net/10356/145027 10.1155/2020/7274254 2020 en M4082189 M4082418 Complexity © 2020 Vee-Liem Saw et al. This is an open access article distributed under the Creative Commons Attribution License, which permits unrestricted use, distribution, and reproduction in any medium, provided the original work is properly cited. application/pdf |
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Science::Physics Bus Terminals Bus Transportation Saw, Vee-Liem Vismara, Luca Chew, Lock Yue Intelligent buses in a loop service: emergence of no-boarding and holding strategies |
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We study how N intelligent buses serving a loop of M bus stops learn a no-boarding strategy and a holding strategy by reinforcement learning. The no-boarding and holding strategies emerge from the actions of stay or leave when a bus is at a bus stop and everyone who wishes to alight has done so. A reward that encourages the buses to strive towards a staggered phase difference amongst them whilst picking up passengers allows the reinforcement learning process to converge to an optimal Q-table within a reasonable amount of simulation time. It is remarkable that this emergent behaviour of intelligent buses turns out to minimise the average waiting time of commuters, in various setups where buses move with the same speed or different speeds, during busy as well as lull periods. Cooperative actions are also observed, e.g., the buses learn to unbunch. |
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School of Physical and Mathematical Sciences |
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School of Physical and Mathematical Sciences Saw, Vee-Liem Vismara, Luca Chew, Lock Yue |
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Article |
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Saw, Vee-Liem Vismara, Luca Chew, Lock Yue |
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Saw, Vee-Liem |
title |
Intelligent buses in a loop service: emergence of no-boarding and holding strategies |
title_short |
Intelligent buses in a loop service: emergence of no-boarding and holding strategies |
title_full |
Intelligent buses in a loop service: emergence of no-boarding and holding strategies |
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Intelligent buses in a loop service: emergence of no-boarding and holding strategies |
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Intelligent buses in a loop service: emergence of no-boarding and holding strategies |
title_sort |
intelligent buses in a loop service: emergence of no-boarding and holding strategies |
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2020 |
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https://hdl.handle.net/10356/145027 |
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1759853932582010880 |