2024
DOI: 10.1111/mice.13365
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Reinforcement learning‐based approach for urban road project scheduling considering alternative closure types

S. E. Seilabi,
M. Saneii,
M. Pourgholamali
et al.

Abstract: Growth in urban population, travel, and motorization continue to cause an increased need for urban projects to expand road capacity. Unfortunately, these projects also cause travel delays, emissions, driver frustration, and other road user adversities. To alleviate these ills, road agencies often face two work zone design choices: close the road fully and re‐reroute traffic or implement partial closure. Both options have significant implications for peri‐construction road capacity, traveler costs, and the proj… Show more

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