Bulanık mantık ile kavşaklarda trafik denetimi sağlayan yazılım

Bulanık mantık kontrol, kavşaklarda trafik düzenlemesinin denetimi için alternatif bir metod olarak kullanılabilir. Bu makalede bulanık mantık denetiminin bilgisayar programı, bir model trafik düzenlemesi için oluşturulmuştur. Model olarak seçilen (Örnek: Kızılay kavşağı) tipik kavşaktaki trafik düzen ve performansı, geleneksel metodlarla yapılan denetimler ile karşılaştırılmıştır. Bulanık mantık metodu ile yapılacak kavşak trafik denetiminin geleneksel metodlara göre daha iyi olduğu ispatlanmaya çalışılmıştır.

Software in fuzzy logic for traffic control of the intersection

Fuzzy Logic Control can be used as an alternative method for the control of traffic environments in the intersections. This paper presents the fuzzy-logic computer program which was constructed for a model traffic environment. A typical cross intersection was chosen for the traffic environment and the performance of the fuzzy logic controller was compared with the performance of conventional control. The fuzzy logic control proved to be a better method of control than conventional control methods.

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