Fusion attention mechanism bidirectional LSTM for short-term traffic flow prediction

IF 2.8 3区 工程技术 Q3 TRANSPORTATION
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Abstract

Short term forecasting is essential and challenging in time series data analysis for traffic flow research. A novel deep learning architecture on short-term traffic flow prediction was presented in this work. In conventional model-driven prediction method, a critical deviation in prediction accuracy was occurred in face of large fluctuations in traffic flow, while machine and deep learning-based approaches performed well in accuracy study than conventional regression-based models. Moreover, a fusion attention mechanism bidirectional long short-term memory model (ATT-BiLSTM) was proposed due to its bidirectional LSTM (BiLSTM) and attention mechanism units. The model not only dealt with forward and backward dependencies in time series data, but also integrated the attention mechanism to improve the ability on key information representation. The BiLSTM layer was exploited to capture bidirectional temporal and spatial features dependencies from historical data. The proposed model was also trained and validated using freeway toll datasets from Humen Bridge. The results showed that compared with ARIMA and SVR models, the indicators of the proposed model have been significantly improved. The ablation experiments were conducted to evaluate the role of the attention mechanism module. Compared with BiLSTM, CNN and 1DCNN-ATT-BiLSTM models, the MAE, RMSE and MAPE indexes of proposed model were reduced by 0.6–5.9%, 1.6–4.7% and 0.6–22.8%, respectively. More accurate predictions were obtained by the proposed model. The research results are of great significance to improve the level of traffic management.

用于短期交通流预测的融合注意力机制双向 LSTM
在交通流研究的时间序列数据分析中,短期预测是必不可少的,也是极具挑战性的。本研究提出了一种新颖的短期交通流预测深度学习架构。在传统的模型驱动预测方法中,面对交通流量的大幅波动,预测精度会出现临界偏差,而基于机器学习和深度学习的方法在精度研究中表现优于传统的回归模型。此外,由于双向 LSTM(BiLSTM)和注意力机制单元,一种融合注意力机制的双向长短期记忆模型(ATT-BiLSTM)被提出。该模型不仅处理了时间序列数据中的前向和后向依赖关系,还融合了注意力机制,提高了关键信息的表征能力。BiLSTM 层被用来捕捉历史数据中的双向时空特征依赖。此外,还使用虎门大桥的高速公路收费数据集对所提出的模型进行了训练和验证。结果表明,与 ARIMA 模型和 SVR 模型相比,所提模型的各项指标均有明显改善。为评估注意力机制模块的作用,进行了消融实验。与 BiLSTM、CNN 和 1DCNN-ATT-BiLSTM 模型相比,拟议模型的 MAE、RMSE 和 MAPE 指标分别降低了 0.6-5.9%、1.6-4.7% 和 0.6-22.8%。拟议模型获得了更准确的预测结果。这些研究成果对提高交通管理水平具有重要意义。
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来源期刊
CiteScore
8.80
自引率
19.40%
发文量
51
审稿时长
15 months
期刊介绍: The Journal of Intelligent Transportation Systems is devoted to scholarly research on the development, planning, management, operation and evaluation of intelligent transportation systems. Intelligent transportation systems are innovative solutions that address contemporary transportation problems. They are characterized by information, dynamic feedback and automation that allow people and goods to move efficiently. They encompass the full scope of information technologies used in transportation, including control, computation and communication, as well as the algorithms, databases, models and human interfaces. The emergence of these technologies as a new pathway for transportation is relatively new. The Journal of Intelligent Transportation Systems is especially interested in research that leads to improved planning and operation of the transportation system through the application of new technologies. The journal is particularly interested in research that adds to the scientific understanding of the impacts that intelligent transportation systems can have on accessibility, congestion, pollution, safety, security, noise, and energy and resource consumption. The journal is inter-disciplinary, and accepts work from fields of engineering, economics, planning, policy, business and management, as well as any other disciplines that contribute to the scientific understanding of intelligent transportation systems. The journal is also multi-modal, and accepts work on intelligent transportation for all forms of ground, air and water transportation. Example topics include the role of information systems in transportation, traffic flow and control, vehicle control, routing and scheduling, traveler response to dynamic information, planning for ITS innovations, evaluations of ITS field operational tests, ITS deployment experiences, automated highway systems, vehicle control systems, diffusion of ITS, and tools/software for analysis of ITS.
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