Raising Awareness of Artificial Intelligence for Transportation Systems Management and Operations
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Contact Information: Operations Feedback at OperationsFeedback@dot.gov
U.S. Department of Transportation
Federal Highway Administration
Office of Operations
1200 New Jersey Avenue, SE
Washington, DC 20590
ops.fhwa.dot.gov
FHWA-HOP-19-052
December 2019
Table of Contents
[ Foreword ] | [ Notice and Quality Assurance Statement ] | [ Technical Report Documentation Page ] | [ SI (Modern Metric) Conversion Factors ]
Chapter 1. Introduction and Background
Chapter 2. Categories of Artificial Intelligence Technologies
Chapter 3. Commercialization of Artificial Intelligence Technologies
State of the Practice and Commercialization of Artificial Intelligence
Chapter 4. Artificial Intelligence for TSMO Applications
Artificial Intelligence for Incident Detection
Artificial Intelligence for Ramp Metering
Chatbots for Natural Language Question and Answering
Traffic Prediction and Traveler Information
Unmanned Aerial Systems Used by State Departments of Transportation
List of Figures
Figure 1. Photo. The first chatbot interaction.
Figure 2. Diagram. A semantic network representation for just a few words and concepts.
Figure 3. Flowchart. Example of a neural network.
Figure 4. Flowchart. Supervised machine learning algorithm development.
Figure 5. Graph. Example of fuzzy logic sets.
Figure 6. Photo. The Deep Blue chess-playing supercomputer in 1997.
Figure 8. Screenshot. Bill Gates' tweet regarding OpenAI's defeat of expert human players.
Figure 9. Photo. Delivery drone prototype.
Figure 10. Photo. Interior of a driverless car prototype.
Figure 13. Photo. Photo. Driverless shuttle.
Figure 14. Photo. UAS for construction inspection.
Figure 15. Screenshot. Google DialogFlow setup for the "performance report."
Figure 17. Photo. Network modeled by artificial intelligence in Delaware.