Nonlinear decision rule approach for real-time traffic signal control for congestion and emission mitigation
Year of publication: |
2020
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Authors: | Song, Junwoo ; Hu, Simon ; Han, Ke ; Jiang, Chaozhe |
Published in: |
Networks and spatial economics : a journal of infrastructure modeling and computation. - Dordrecht [u.a.] : Springer Science Business Media B.V., ISSN 1572-9427, ZDB-ID 2037373-9. - Vol. 20.2020, 3, p. 675-702
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Subject: | Real-time signal control | Nonlinear decision rule | Congestion | Emissions | Neural networks | Theorie | Theory | Neuronale Netze | Engpass | Bottleneck | Luftverschmutzung | Air pollution | Entscheidung | Decision | Treibhausgas-Emissionen | Greenhouse gas emissions | Verkehrsstau | Traffic congestion |
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