A multiagent-based approach for vehicle routing by considering both arriving on time and total travel time
Arriving on time and total travel time are two important properties for vehicle routing. Existing route guidance approaches always consider them independently, because they may conflict with each other. In this article, we develop a semi-decentralized multiagent-based vehicle routing approach where...
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sg-smu-ink.sis_research-92052024-02-16T09:43:14Z A multiagent-based approach for vehicle routing by considering both arriving on time and total travel time CAO, Zhiguang GUO, Hongliang ZHANG, Jie Arriving on time and total travel time are two important properties for vehicle routing. Existing route guidance approaches always consider them independently, because they may conflict with each other. In this article, we develop a semi-decentralized multiagent-based vehicle routing approach where vehicle agents follow the local route guidance by infrastructure agents at each intersection, and infrastructure agents perform the route guidance by solving a route assignment problem. It integrates the two properties by expressing them as two objective terms of the route assignment problem. Regarding arriving on time, it is formulated based on the probability tail model, which aims to maximize the probability of reaching destination before deadline. Regarding total travel time, it is formulated as a weighted quadratic term, which aims to minimize the expected travel time from the current location to the destination based on the potential route assignment. The weight for total travel time is designed to be comparatively large if the deadline is loose. Additionally, we improve the proposed approach in two aspects, including travel time prediction and computational efficiency. Experimental results on real road networks justify its ability to increase the average probability of arriving on time, reduce total travel time, and enhance the overall routing performance. 2017-12-01T08:00:00Z text application/pdf https://ink.library.smu.edu.sg/sis_research/8202 info:doi/10.1145/3078847 https://ink.library.smu.edu.sg/context/sis_research/article/9205/viewcontent/3078847.pdf http://creativecommons.org/licenses/by-nc-nd/4.0/ Research Collection School Of Computing and Information Systems eng Institutional Knowledge at Singapore Management University Intelligent transportation systems multiagent-based route guidance arriving on time probability tail model total travel time Operations Research, Systems Engineering and Industrial Engineering Transportation |
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Intelligent transportation systems multiagent-based route guidance arriving on time probability tail model total travel time Operations Research, Systems Engineering and Industrial Engineering Transportation CAO, Zhiguang GUO, Hongliang ZHANG, Jie A multiagent-based approach for vehicle routing by considering both arriving on time and total travel time |
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Arriving on time and total travel time are two important properties for vehicle routing. Existing route guidance approaches always consider them independently, because they may conflict with each other. In this article, we develop a semi-decentralized multiagent-based vehicle routing approach where vehicle agents follow the local route guidance by infrastructure agents at each intersection, and infrastructure agents perform the route guidance by solving a route assignment problem. It integrates the two properties by expressing them as two objective terms of the route assignment problem. Regarding arriving on time, it is formulated based on the probability tail model, which aims to maximize the probability of reaching destination before deadline. Regarding total travel time, it is formulated as a weighted quadratic term, which aims to minimize the expected travel time from the current location to the destination based on the potential route assignment. The weight for total travel time is designed to be comparatively large if the deadline is loose. Additionally, we improve the proposed approach in two aspects, including travel time prediction and computational efficiency. Experimental results on real road networks justify its ability to increase the average probability of arriving on time, reduce total travel time, and enhance the overall routing performance. |
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CAO, Zhiguang GUO, Hongliang ZHANG, Jie |
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CAO, Zhiguang GUO, Hongliang ZHANG, Jie |
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CAO, Zhiguang |
title |
A multiagent-based approach for vehicle routing by considering both arriving on time and total travel time |
title_short |
A multiagent-based approach for vehicle routing by considering both arriving on time and total travel time |
title_full |
A multiagent-based approach for vehicle routing by considering both arriving on time and total travel time |
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A multiagent-based approach for vehicle routing by considering both arriving on time and total travel time |
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A multiagent-based approach for vehicle routing by considering both arriving on time and total travel time |
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multiagent-based approach for vehicle routing by considering both arriving on time and total travel time |
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Institutional Knowledge at Singapore Management University |
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2017 |
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https://ink.library.smu.edu.sg/sis_research/8202 https://ink.library.smu.edu.sg/context/sis_research/article/9205/viewcontent/3078847.pdf |
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