Intelligent Control of Traffic Flows for Sustainable Transportation Networks

The following chapter deals with the problems of the sustainable transportation network from the geographic information systems for intelligent control. For this we developed the dynamic geoinformation model with temporal dependence of the parameters and the procedural model of routing with temporal dependence and fuzzy given distance and time. The tasks of routing problem with fuzzy conditions are described and solved.

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