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Dynamic Shortest Path Algorithm in Stochastic Traffic Networks Using PSO Based on Fluid Neural Network

机译:基于流体神经网络的PSO随机交通网络动态最短路径算法

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The shortest path planning issure is critical for dynamic traffic assignment and route guidance in intelligent transportation systems. In this paper, a Particle Swarm Optimization (PSO) algorithm with priority-based encoding scheme based on fluid neural network (FNN) to search for the shortest path in stochastic traffic networks is introduced. The proposed algorithm overcomes the weight coefficient symmetry restrictions of the traditional FNN and disadvantage of easily getting into a local optimum for PSO. Simulation experiments have been carried out on different traffic network topologies consisting of 15-65 nodes and the results showed that the proposed approach can find the optimal path and closer sub-optimal paths with good success ratio. At the same time, the algorithms greatly improve the convergence efficiency of fluid neuron network.
机译:最短路径规划发卡对于智能交通系统中的动态交通分配和路由指导至关重要。在本文中,引入了基于流体神经网络(FNN)的优先级的编码方案来搜索随机交通网络中的最短路径的粒子群优化(PSO)算法。该算法克服了传统FNN的权重系数对称限制以及容易进入PSO的局部最优的缺点。在由15-65个节点组成的不同交通网络拓扑上进行了模拟实验,结果表明,该方法可以找到具有良好成功比率的最佳路径和更接近的次优路。同时,该算法大大提高了流体神经元网络的收敛效率。

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