利用改进的启发式算法和基于阿特鲁斯卷积的混合注意力网络为交通流贴标签以进行拥堵预测

Vivek Srivastava, Sumita Mishra, Nishu Gupta
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引用次数: 0

摘要

城市地区的生活质量和发展受到交通相关问题的影响。优先车辆和紧急车辆(如警车和救护车)的反应迟缓会危及公共安全和福祉。此外,反复发生的拥堵会浪费时间并造成挫败感,从而影响驾驶员的情绪。现有的预测技术不足以应对包括自动驾驶汽车、互联基础设施和综合公共交通在内的城市基础设施的复杂性。本文采用启发式方法,为实时交通管理和控制应用提出了一个新模型。在基于无绳卷积的混合注意力网络中使用了自适应加权特征,以实现高效的交通拥堵预测。这些特征通过草纤维根平均平方误差优化(MSE-GFRO)进行优化选择,并与最优权重相结合,从而提供自适应加权特征。该预测模型结合了基于注意力机制的深度时空卷积网络(DTCN)和门控递归单元(GRU),在自适应加权特征的基础上预测交通拥堵情况。对不同的优化模型和分类器进行了实验分析,以证明所实施模型的效率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Traffic Flow Labelling for Congestion Prediction with Improved Heuristic Algorithm and Atrous Convolution-based Hybrid Attention Networks

Traffic Flow Labelling for Congestion Prediction with Improved Heuristic Algorithm and Atrous Convolution-based Hybrid Attention Networks

The quality of life and the development of urban areas are impacted by traffic-related issues. The delayed response of priority and emergency vehicles, such as police cars and ambulances, jeopardizes public safety and well-being. Further, repeated episodes of congestion affect driver’s temperament by wasting time and causing frustration. Prevailing forecasting techniques are inadequate to address the complexities of urban infrastructure that include autonomous vehicles, connected infrastructure, and integrated public transport. In this article, a new model has been proposed using heuristic methods for real-time traffic management and control applications. The adaptive weighted features are utilized in the atrous convolution-based hybrid attention network for efficient traffic congestion prediction. The features are optimally selected by Mean Square Error of Grass Fibrous Root Optimization (MSE-GFRO) and combined with the optimal weights and thus, are offered the adaptive weighted features. The prediction model combines deep Temporal Convolutional Network (DTCN) and gated recurrent unit (GRU) based on an attention mechanism to predict traffic congestion on the basis of adaptive weighted features. Experimental analysis is performed over distinct optimization models and classifiers to demonstrate the efficiency of the implemented model.

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