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HTFM: Hybrid Traffic-Flow Forecasting Model for Intelligent Vehicular Ad hoc Networks

机译:HTFM:智能车辆临时网络混合流量流量预测模型

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Increased vehicular flow on roads along with proposed deployment of autonomous vehicles has necessitated the need for accurate traffic forecasting so as to achieve effective route guidance, traffic management, public safety and congestion avoidance. Although a number of traffic forecasting algorithms have been proposed but most of these algorithms perform short term traffic predictions. However future vehicular systems also defined as intelligent VANETs will require a hybrid traffic forecasting model that predicts the vehicular traffic for varying values of time. This paper proposes a time varying forecasting model that predicts vehicular flow by utilizing Long Short-Term Memory (LSTM) and Convolutional Neural Network(CNN). The model is based on large-scale, network-wide traffic with spatio-temporal features. The temporal features learned by LSTM and spatial features learned by CNNs from the matrices are further fused with external factors to derive the final forecast. Model has been implemented on the traffic data set of Chandigarh city in India, mapped onto three two-dimensional matrices of time and space. The predicted information is then forwarded by the vehicle to all the other vehicles in their vicinity using vehicular adhoc networks. Experimental results indicate that the proposed model performs significantly better than other state-of-the-art models in terms of accuracy and efficiency.
机译:在道路上增加了车辆流量以及拟议的自主车辆部署所需的需要准确的交通预测,以实现有效的路线指导,交通管理,公共安全和拥堵避免。尽管已经提出了许多流量预测算法,但大多数这些算法都执行短期交通预测。然而,未来的车辆系统也定义为智能VANET将需要混合流量预测模型,其预测用于不同时间值的车辆流量。本文提出了一种时变预测模型,其通过利用长短期存储器(LSTM)和卷积神经网络(CNN)来预测车辆流量。该模型基于大规模的网络范围的流量,具有时空特征。由矩阵中的CNN学习的LSTM和空间特征学习的时间特征进一步与外部因素融合以导出最终预测。模型已经在印度的昌迪加尔城市的交通数据集上实施,映射到三维时间和空间的二维矩阵。然后使用车辆ADHOC网络,车辆将预测信息转发到其附近的所有其他车辆。实验结果表明,在准确性和效率方面,所提出的模型比其他最先进的模型更好。

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