Data processing: artificial intelligence – Neural network – Learning task
Reexamination Certificate
2007-06-21
2010-12-07
Holmes, Michael (Department: 2129)
Data processing: artificial intelligence
Neural network
Learning task
Reexamination Certificate
active
07849031
ABSTRACT:
Travel-demand forecasting methods are described for predicting traffic volume based, at least in part, on user-entered data in the form of origin/destination data pairs, user preferences, demographic data and other types of socioeconomic data. This data can source a prediction algorithm or be used to calibrate or more make accurate a current algorithm. Methods and systems are described for, among other things, optimizing traffic predictions, forecasting traffic patterns using user-assigned trip patterns, associating rich attribute information to navigation routes, exposing personal-logistic information to a group, communicating traffic-situation-generated alerts based on user information, optimizing a presentation of user-defined traffic routes, and presenting location indications based on proximity (temporal or geographical).
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Ostrom Michael Richard
Palloto Terrence Matthew
Simon Christopher James
Stehle Tommy Allen
HNTB Holdings Ltd.
Holmes Michael
Shook Hardy & Bacon LLP
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