Self-organization of non-signal urban traffic flow with fuzzy model

Problems such as traffic accidents and congestions are becoming more serious with the increase in the number of automobiles. Intelligent transport system (ITS) contributes much to solving these problems. We propose a collective rule organization in the motor vehicle traffic model on a non-signal urban street. We present an acquisition method of strategy at intersections with fuzzy model which imitates the human decision at intersections.

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