Adaptive neuro-fuzzy traffic signal control for multiple junctions

C. T. Wannige, D. Sonnadara
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引用次数: 12

Abstract

The performance of neuro-fuzzy traffic signal control at two independent traffic junctions is discussed. In this work, traffic conditions at two 4-way traffic junctions were simulated and flow of traffic on the road connecting the two junctions under varying traffic conditions was studied. For a given data set, the developed neuro-fuzzy system automatically draws membership functions and the rules by itself, thus making the designing process easier and reliable compared to conventional fuzzy logic controllers. The traffic inflows of roads are given as inputs to the fuzzy control system which generate the corresponding green light time as the output to control the signal timing. The control systems try to minimize the delay experienced by the drivers at the two traffic junctions. As expected, when compared with a fixed-time signal control system, the neuro-fuzzy system tends to minimize vehicle delays at both junctions. Simulation results show, under variable traffic conditions, neuro-fuzzy control system perform efficiently by making average delay per vehicle under the red light phase smaller and increasing the synchronization of green light phases between junctions. When the volume of traffic at one of the junction changed abruptly, the green light timing of both junctions changed, adapting to the new traffic condition on the road connecting the two junctions.
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多路口自适应神经模糊交通信号控制
讨论了神经模糊交通信号在两个独立交通路口的控制性能。本文模拟了两个四向交通路口的交通状况,研究了不同交通状况下连接两个路口的道路上的交通流。对于给定的数据集,所开发的神经模糊系统可以自动绘制隶属函数和规则,与传统的模糊逻辑控制器相比,设计过程更加简单可靠。将道路的车流流作为模糊控制系统的输入,模糊控制系统产生相应的绿灯时间作为输出来控制信号配时。控制系统尽量减少司机在两个交通路口的延误。正如预期的那样,与固定时间信号控制系统相比,神经模糊系统倾向于最小化两个路口的车辆延误。仿真结果表明,在可变交通条件下,神经模糊控制系统通过减小红灯相位下的车辆平均延误时间和增加路口之间绿灯相位的同步来有效地执行控制。当其中一个路口的交通量发生突然变化时,两个路口的绿灯授时也会发生变化,以适应连接两个路口的道路上新的交通状况。
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