Providing data analysis insights into real to-the-second timing patterns of passenger rail services using Machine Learning techniques (COF-INP-04)
This feasibility study used machine learning techniques to provide insights into to-the-second timing patterns for station dwell times and between-station track section travel times and explored opportunities to develop an open framework for the preparation, integration and analysis of rail data using machine learning analytics.
Project Reference: COF-INP-04
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