TY - JOUR
T1 - Recasting and optimizing intersection automation as a connected-and-automated-vehicle (CAV) scheduling problem
T2 - A sequential branch-and-bound search approach in phase-time-traffic hypernetwork
AU - Li, Pengfei (Taylor)
AU - Zhou, Xuesong
N1 - Funding Information:
This paper is partially supported by the start-up fund provided by Mississippi State University and partially supported by the project entitled “Real-time Management of Large Fleets of Self-Driving Vehicles Using Virtual Cyber Tracks” funded by National Science Foundation (Award No. 1663657). We would also like to express our appreciations to the anonymous reviewers for their insightful comments to help us improve.
Publisher Copyright:
© 2017 Elsevier Ltd
PY - 2017/11
Y1 - 2017/11
N2 - It is a common vision that connected and automated vehicles (CAVs) will increasingly appear on the road in the near future and share roads with traditional vehicles. Through sharing real-time locations and receiving guidance from infrastructure, a CAV's arrival and request for green light at intersections can be approximately predicted along their routes. When many CAVs from multiple approaches at intersections place such requests, a central challenge is how to develop an intersection automation policy (IAP) to capture complex traffic dynamics and schedule resources (green lights) to serve both CAV requests (interpreted as request for green lights on a particular signal phase at time t) and traditional vehicles. To represent heterogeneous vehicle movements and dynamic signal timing plans, we first formulate the IAP optimization as a special case of machine scheduling problem using a mixed integer linear programming formulation. Then we develop a novel phase-time-traffic (PTR) hypernetwork model to represent heterogeneous traffic propagation under traffic signal operations. Since the IAP optimization, by nature, is a special sequential decision process, we also develop sequential branch-and-bound search algorithms over time to IAP optimization considering both CAVs and traditional vehicles in the PTR hypernetwork. As the critical part of the branch-and-bound search, special dominance and bounding rules are also developed to reduce the search space and find the exact optimum efficiently. Multiple numerical experiments are conducted to examine the performance of the proposed IAP optimization approach.
AB - It is a common vision that connected and automated vehicles (CAVs) will increasingly appear on the road in the near future and share roads with traditional vehicles. Through sharing real-time locations and receiving guidance from infrastructure, a CAV's arrival and request for green light at intersections can be approximately predicted along their routes. When many CAVs from multiple approaches at intersections place such requests, a central challenge is how to develop an intersection automation policy (IAP) to capture complex traffic dynamics and schedule resources (green lights) to serve both CAV requests (interpreted as request for green lights on a particular signal phase at time t) and traditional vehicles. To represent heterogeneous vehicle movements and dynamic signal timing plans, we first formulate the IAP optimization as a special case of machine scheduling problem using a mixed integer linear programming formulation. Then we develop a novel phase-time-traffic (PTR) hypernetwork model to represent heterogeneous traffic propagation under traffic signal operations. Since the IAP optimization, by nature, is a special sequential decision process, we also develop sequential branch-and-bound search algorithms over time to IAP optimization considering both CAVs and traditional vehicles in the PTR hypernetwork. As the critical part of the branch-and-bound search, special dominance and bounding rules are also developed to reduce the search space and find the exact optimum efficiently. Multiple numerical experiments are conducted to examine the performance of the proposed IAP optimization approach.
KW - Automated vehicle
KW - Branch-and-bound algorithms
KW - Connected vehicle
KW - Intersection automation policy
KW - Phase-time network
KW - Traffic signal control
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U2 - 10.1016/j.trb.2017.09.020
DO - 10.1016/j.trb.2017.09.020
M3 - Article
AN - SCOPUS:85034588523
SN - 0191-2615
VL - 105
SP - 479
EP - 506
JO - Transportation Research Part B: Methodological
JF - Transportation Research Part B: Methodological
ER -