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Urban Traffic Flow Prediction Model with CPSO/SSVM Algorithm under the Edge Computing Framework

机译:与边缘计算框架下的CPSO / SSVM算法城市交通流预测模型

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摘要

Urban traffic flow prediction has always been an important realm for smart city build-up. With the development of edge computing technology in recent years, the network edge nodes of smart cities are able to collect and process various types of urban traffic data in real time, which leads to the possibility of deploying intelligent traffic prediction technology with real-time analysis and timely feedback on the edge. In view of the strong nonlinear characteristics of urban traffic flow, multiple dynamic and static influencing factors involved, and increasing difficulty of short-term traffic flow prediction in a metropolitan area, this paper proposes an urban traffic flow prediction model based on chaotic particle swarm optimization algorithm-smooth support vector machine (CPSO/SSVM). The prediction model has built a new second-order smooth function to achieve better approximation and regression effects and has further improved the computational efficiency of the smooth support vector machine algorithm through chaotic particle swarm optimization. Simulation experiment results show that this model can accurately predict urban traffic flow.
机译:城市交通流量预测一直是智能城市积聚的重要领域。随着近年来边缘计算技术的发展,智能城市的网络边缘节点能够实时收集和处理各种类型的城市交通数据,这导致部署智能流量预测技术与实时分析并及时反馈边缘。鉴于城市交通流量的强烈非线性特征,涉及多种动态和静态影响因素,越来越多的短期交通流量预测在大都市区,提出了一种基于混沌粒子群优化的城市交通流预测模型算法 - 平滑支持向量机(CPSOS / SSVM)。预测模型建立了一个新的二阶平滑功能,以实现更好的近似和回归效果,并通过混沌粒子群优化进一步提高了光滑支持向量机算法的计算效率。仿真实验结果表明,该模型可以准确预测城市交通流量。

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