Intelligent traffic signal system based on networked control

Several traffic control systems are simply introduced, and based on the networked control presented is a new intelligent intersection control system. It is characterized by the agent-based control and the local simple remote complex (LSRC) design principle. On one hand the intelligent control of intersection is guaranteed, and on the other hand the cost of the control system is decreased. The structure and function of the whole system are described in detail. According to the characteristic of city traffic, the intersection signal is controlled by fuzzy neural network, which fully uses the advantage of this system.

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