A Novel Hybrid Deep Learning Algorithm for Smart City Traffic Congestion Predictions

L. Joseph, P. Goel, Ashish Jain, K. Rajyalakshmi, K. Gulati, Prithvipal Singh
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引用次数: 8

Abstract

A research is an intellectual system, the vehicular adhoc network (VANET), supplies cars in the network with critical information. Over 150,000 individuals are impacted by traffic accidents that must be kept to a minimum, and the development of safety must be included in VANET. Traffic congestion prediction is critical to mitigating car accidents and managing traffic for the benefit of all road users. The cars in the system exhibit dynamic behavior, which adversely affects the performance of deep learning approaches for congestion of traffic prediction. In this article a hybrid approach named boosted long short-term memory ensemble (BLSTME) as well as convolution neural network (CNN) is develop to help cars navigate around congested roads by giving CNN's powerful features access to BLSTME, which helps cars in dynamic environments by forecasting the likelihood of congestion. In order to forecast traffic congestion, CNN collects traffic attribute pictures, as well as suggested BLSTME trains. It also improves classifiers that are weaker. Tensor Flow libraries were used to build the model, which was then evaluated in the actual world in a simulated scenario created using the open source software SUMO and the proprietary software OMNeT++. After several trials, various tests, and evaluations, the experiment's results are analyzed, and the model's predictions are then evaluated using relevant metrics such probable accuracy, precision, as well as recall. Thus, the experimental result indicates that the hypothesis has been proven correct with a degree of accuracy, precision, and recall of 98%, 96%, and 94% respectively. The model outperforms current methods by providing 10% better stability and performance.
一种新的混合深度学习算法用于智能城市交通拥堵预测
研究的是一个智能系统——车辆自组网(VANET),它为网络中的车辆提供关键信息。超过15万人受到交通事故的影响,这些事故必须保持在最低限度,安全发展必须包括在VANET中。交通拥堵预测对于减轻交通事故和管理交通至关重要,有利于所有道路使用者。系统中的汽车表现出动态行为,这对交通拥堵预测的深度学习方法的性能产生不利影响。本文开发了一种名为增强长短期记忆集成(BLSTME)和卷积神经网络(CNN)的混合方法,通过让CNN的强大功能访问BLSTME,帮助汽车在拥挤的道路上导航,从而帮助汽车在动态环境中预测拥堵的可能性。为了预测交通拥堵,CNN收集了交通属性图片,以及建议的BLSTME列车。它还改进了较弱的分类器。使用Tensor Flow库构建模型,然后在使用开源软件SUMO和专有软件omnet++创建的模拟场景中在实际世界中对模型进行评估。经过几次试验、各种测试和评估后,对实验结果进行分析,然后使用相关指标(如可能的准确性、精度和召回率)评估模型的预测。因此,实验结果表明,该假设已被证明是正确的,准确率、精密度和召回率分别为98%、96%和94%。该模型的稳定性和性能比现有方法好10%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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