Accurate traffic flow prediction, a hotspot for intelligent transportation research, is the prerequisite for mastering traffic and making travel plans. The speed of traffic flow can be affected by roads condition, weather, holidays, etc. Furthermore, the sensors to catch the information about traffic flow will be interfered with by environmental factors such as illumination, collection time, occlusion, etc. Therefore, the traffic flow in the practical transportation system is complicated, uncertain, and challenging to predict accurately. This paper proposes a deep encoder-decoder prediction framework based on variational Bayesian inference. A Bayesian neural network is constructed by combining variational inference with gated recurrent units (GRU) and used as the deep neural network unit of the encoder-decoder framework to mine the intrinsic dynamics of traffic flow. Then, the variational inference is introduced into the multi-head attention mechanism to avoid noise-induced deterioration of prediction accuracy. The proposed model achieves superior prediction performance on the Guangzhou urban traffic flow dataset over the benchmarks, particularly when the long-term prediction.
翻译:准确的交通流量预测是掌握交通和制定交通计划的一个热点,是明智的交通研究的一个热点。交通流量的速度可能受到道路状况、天气、节假日等的影响。此外,收集交通流量信息的传感器将受到环境因素的干扰,如照明、收集时间、隔热等。因此,实际交通系统的交通流量复杂、不确定,而且难以准确预测。本文件提议了一个基于变异贝耶西亚误判的深度编码器-解密预测框架。Bayesian神经网络的构建方式是将变异推断与封闭的经常单元(GRU)相结合,并用作编码解密框架的深神经网络单元,用于挖掘交通流量的内在动力。随后,将变异推引入多头关注机制,以避免噪音引起的预测准确性恶化。拟议模型实现了广州城市交通流量数据对基准的更佳预测性业绩,特别是在长期预测时。