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Machine Learning-Based Eco-Approach and Departure: Real-Time Trajectory Optimization at Connected Signalized Intersections

Journal Article
13-03-01-0004
ISSN: 2640-642X, e-ISSN: 2640-6438
Published October 13, 2021 by SAE International in United States
Machine Learning-Based Eco-Approach and Departure: Real-Time
                    Trajectory Optimization at Connected Signalized Intersections
Sector:
Citation: Esaid, D., Hao, P., Wu, G., Ye, F. et al., "Machine Learning-Based Eco-Approach and Departure: Real-Time Trajectory Optimization at Connected Signalized Intersections," SAE J. STEEP 3(1):41-53, 2022, https://doi.org/10.4271/13-03-01-0004.
Language: English

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