OPTIMAL ROUTE DEFINITION IN THE RAILWAY INFORMATION NETWORK USING NEURAL-FUZZY MODELS

V. Pakhomova, Y. S. Mandybura
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引用次数: 1

Abstract

Purpose. Modern algorithms for choosing the shortest route, for example, the Bellman-Ford and Dijkstra algorithms, which are currently widely used in existing routing protocols (RIP, OSPF), do not always lead to an effective result. Therefore, there is a need to study the possibility of organizing routing in in the railway network of information and telecommunication system (ITS) using the methods of artificial intelligence. Methodology. On the basis of the simulation model created in the OPNET modeling system a fragment of the ITS railway network was considered and the following samples were formed: training, testing, and control one. For modeling a neural-fuzzy network (hybrid system) in the the MatLAB system the following parameters are input: packet length (three term sets), traffic intensity (five term sets), and the number of intermediate routers that make up the route (four term sets). As the resulting characteristic, the time spent by the packet in the routers along its route in the ITS network (four term sets) was taken. On the basis of a certain time of packet residence in the routers and queue delays on the routers making up different paths (with the same number of the routers) the optimal route was determined. Findings. For the railway ITS fragment under consideration, a forecast was made of the packet residence time in the routers along its route based on the neural-fuzzy network created in the MatLAB system. The authors conducted the study of the average error of the neural-fuzzy network`s training with various membership functions and according to the different methods of training optimization. It was found that the smallest value of the average learning error is provided by the neuro-fuzzy network configuration 3–12–60–60–1 when using the symmetric Gaussian membership function according to the hybrid optimization method. Originality . According to the RIP and OSPF scenarios, the following characteristics were obtained on the simulation model created in the OPNET simulation system: average server load, average packet processing time by the router, average waiting time for packets in the queue, average number of lost packets, and network convergence time. It was determined that the best results are achieved by the simulation network model according to the OSPF scenario. The proposed integrated routing system in the ITS network of railway transport, which is based on the neural-fuzzy networks created, determines the optimal route in the network faster than the existing OSPF routing protocol. Practical value. An integrated routing system in the ITS system of railway transport will make it possible to determine the optimal route in the network with the same number of the routers that make up the packet path in real time.
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基于神经模糊模型的铁路信息网络最优路线定义
目的。在现有的路由协议(RIP、OSPF)中广泛使用的Bellman-Ford算法和Dijkstra算法等现代最短路由选择算法,并不是总能得到有效的结果。因此,有必要研究利用人工智能方法在铁路信息通信系统(ITS)网络中组织路由的可能性。方法。在OPNET建模系统中建立的仿真模型的基础上,考虑了ITS铁路网络的一个片段,形成了训练样本、测试样本和控制样本。为了在MatLAB系统中建模神经模糊网络(混合系统),输入以下参数:数据包长度(三个术语集),流量强度(五个术语集)和组成路由的中间路由器数量(四个术语集)。作为结果特征,取数据包在its网络中沿其路由在路由器中所花费的时间(四个术语集)。根据数据包在路由器中停留的一定时间和组成不同路径(路由器数量相同)的路由器上的队列延迟确定最优路由。发现。针对铁路ITS碎片,基于MatLAB系统构建的神经模糊网络,对其沿线路由器中的数据包停留时间进行了预测。根据不同的训练优化方法,对不同隶属函数下神经模糊网络训练的平均误差进行了研究。根据混合优化方法,使用对称高斯隶属函数时,神经模糊网络配置3-12-60-60-1提供的平均学习误差最小。创意。根据RIP和OSPF两种场景,在OPNET仿真系统中建立仿真模型,得到了服务器平均负载、路由器平均报文处理时间、队列平均等待时间、平均丢包数和网络收敛时间。根据OSPF的具体场景,仿真网络模型的效果最好。本文提出的基于神经模糊网络的铁路交通ITS网络综合路由系统,比现有的OSPF路由协议更快地确定网络中的最优路由。实用价值。在铁路运输ITS系统中,集成路由系统将使在组成分组路径的路由器数量相同的情况下实时确定网络中的最优路由成为可能。
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