A high resolution agent-based model to support walk-bicycle infrastructure investment decisions: A case study with New York City

H.M. Abdul Aziz1, Byung H. Park1, April Morton1, Robert N. Stewart1, M. Hilliard1, M. Maness1
1Oak Ridge National Laboratory, Computational Sciences and Engineering Division, 1 Bethel Valley Road, Oak Ridge, TN 37830, United States

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