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A Novel Neuro-cognitive Approach To Modeling Traffic Control And Flow Based On Fuzzy Neural Techniques

机译:基于模糊神经技术的交通控制与流量建模的神经认知新方法

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In many developed and developing countries, efficient monitoring and controlling of the city's traffic have become major challenges. Conventional traffic light control methods. Preset Cycle Timing and Preset Cycle Timing with proximity sensors used today are neither sufficiently efficient nor effective to manage different traffic conditions. One solution is to employ a human operator. Unfortunately this method is expensive and error-prone due to lapse in concentration and other factors. Another alternative is to introduce an intelligent controller using fuzzy neural learning memory techniques, which have the capability to mimic human intelligence in controlling the frequency of traffic light changes at a junction.rnThe performances of four suitable soft-computing architectures are investigated in this study as a possible platform to model and develop an intelligent traffic light control regime. These neural fuzzy learning structures construct memories that possess the intelligence and capabilities of a human operator in monitoring and managing the traffic at road intersections under different traffic scenarios. An open source traffic light simulator. Green Light District, is used to create and simulate different traffic conditions at (i) a simple traffic light intersection and (ii) a complex traffic light intersection. Traffic data generated by the simulator under the control of a human operator is then used as inputs for the training and testing of four fuzzy neural network architectures. The four architectures are Generic Self-organizing Fuzzy Neural Network (GenSoFNN), Pseudo Outer Product based Fuzzy Neural Network (POPFNN), Fuzzy Adaptive Learning Control Network (Falcon) and Multilayer Perceptrons (MLP).rnThe performance of each of the neural network architectures was found to be promising from the simulation results derived for both simple and complex traffic light intersections. Performance was based on the mean classified rate, mean training time, mean number of rules, and standard deviation of the classified rate across the traffic conditions simulated. A technique from each of the architectures with the best results is subsequently selected for more in-depth study on its performance in a complex traffic light intersection. Although all the selected techniques from the four architectures suffered a decline in performance in the complex traffic light intersection; architectures such as GenSoFNN and Falcon continue to produce good results. The POPFNN architecture generated a large number of rules and the MLP architecture produced poor classified rates. This work has demonstrated that it is highly feasible to develop neuro-cognitive traffic control regime that can mimic the behaviors of a human operator.
机译:在许多发达国家和发展中国家,有效监控城市交通已成为主要挑战。常规交通信号灯控制方法。当前使用的接近传感器的预设周期定时和预设周期定时既没有足够的效率,也没有足够的效率来管理不同的交通状况。一种解决方案是雇用人工操作员。不幸的是,由于浓度下降和其他因素,该方法昂贵且容易出错。另一个选择是引入一种使用模糊神经学习记忆技术的智能控制器,该控制器具有模仿人类智能来控制路口交通信号灯变化频率的能力。在本研究中,研究了四种合适的软计算体系结构的性能,分别是:一个可能的平台,用于建模和开发智能交通信号灯控制机制。这些神经模糊学习结构构建的存储器具有操作员在不同交通场景下监控和管理道路交叉口交通的智能和能力。开源交通信号灯模拟器。绿灯区用于创建和模拟(i)简单红绿灯路口和(ii)复杂红绿灯路口的不同交通状况。然后,在操作员的控制下,由模拟器生成的交通数据将用作训练和测试四种模糊神经网络体系结构的输入。这四种架构分别是通用自组织模糊神经网络(GenSoFNN),基于伪外部产品的模糊神经网络(POPFNN),模糊自适应学习控制网络(Falcon)和多层感知器(MLP).rn从简单交通信号灯和复杂交通信号灯的交叉路口得出的仿真结果中,我们发现该方法很有希望。性能基于模拟交通状况下的平均分类率,平均训练时间,平均规则数和分类率的标准偏差。随后从每种架构中选择一种效果最佳的技术,以对其在复杂交通信号灯交叉口的性能进行更深入的研究。尽管从四种架构中选择的所有技术在复杂的交通信号灯十字路口的性能都下降了; GenSoFNN和Falcon之类的体系结构继续产生良好的结果。 POPFNN架构生成大量规则,而MLP架构生成较差的分类率。这项工作表明,开发可以模仿人类操作员行为的神经认知交通控制机制非常可行。

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