Liaoning Police College, Dalian, 116036, China
With the increase of population pressure in modern society, the problem of traffic congestion becomes more and more serious. Traffic guidance model is one of the main means to alleviate traffic problems. This paper analyzes basic functions the city traffic guidance model should have, including real-time monitoring, intelligent control and accurate prediction, and gives a method of model construction of city traffic guidance based on big data mining to provide some references for the relative researchers.
Guidance Model; Urban Transportation; Big Data Mining Technology
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