20220504
10504900
1.0
TRUE
Freight_Analysis_Framework_Network_Nodes
USA
National
Roads
NTAD
National Transportation Atlas Database
Transportation
Atlas
Database
Highway
Freight
Freight Model Network
Analysis
Framework
Network
Road
Roadway
FAF
Nodes
The Freight Analysis Framework (FAF), produced through a partnership between Bureau of Transportation Statistics (BTS) and Federal Highway Administration...
The Freight Analysis Framework (FAF5) - Network Nodes dataset was created from 2017 base year data and was published on April 11, 2022 from the Federal Highway Administration (FHWA) and is part of the U.S. Department of Transportation (USDOT)/Bureau of Transportation Statistics (BTS) National Transportation Atlas Database (NTAD). The FAF (Version 5) Network Nodes contains 348,498 node features. All node features are topologically connected to permit network pathbuilding and vehicle assignment using a variety of assignment algorithms. The FAF Node and the FAF Link datasets can be used together to create a network. The link features in the FAF Network dataset include all roads represented in prior FAF networks, and all roads in the National Highway System (NHS) and the National Highway Freight Network (NHFN) that are currently open to traffic. Other included links provide connections between intersecting routes, and to select intermodal facilities and all U.S. counties. The network consists of over 588,000 miles of equivalent road mileage. The dataset covers the 48 contiguous States plus the District of Columbia, Alaska, and Hawaii.
Acknowledgment of the Federal Highway Administration (FHWA), the US Census Bureau, the Office Of Management and Budget (OMB), and the Bureau of Transportation Statistics (BTS) [distributor].
NTAD datasets are intended for public usage and are not for sale/resale
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