Traffic conditions keep changing constantly due to the complex relationship between the supply and demand of traffic networks over space and time. The dynamic prediction of traffic conditions, e.g., the traffic flow, can provide future information about traffic states based on past information. These predictions can be used as input for intelligent transportation systems to further provide information for travelers to make better choices (e.g., regarding route, mode, or departure time) as well as for road operators to take effective management and control measures to improve traffic conditions for road networks.
Abstract:
Traffic flow is an important piece of information for traffic management and control. In particular, the dynamic prediction of traffic flow provides the basis for efficie...Show MoreMetadata
Abstract:
Traffic flow is an important piece of information for traffic management and control. In particular, the dynamic prediction of traffic flow provides the basis for efficient control measures. The existing studies focus on improving the prediction accuracy by integrating the long short-term memory (LSTM) into various complex frameworks without paying attention to the feature engineering, which has a significant impact on the performance of machine learning methods. In this article, we propose a dynamic traffic flow prediction approach based on the LSTM framework with different feature organizations: feature division modes and feature selection. The feature division modes consider the periodicity of traffic flow by intervals (e.g., 5 min) and periods (e.g., daily). The feature selection determines different types of features as inputs to the prediction model. The impact of different feature organization strategies on the prediction accuracy is investigated using field data collected by the Caltrans Performance Measurement System. Two types of LSTM frameworks, the fully connected LSTM and the sequence-to-sequence LSTM (seq2seq-LSTM), are used to evaluate the performance of the proposed prediction approach. The results show that the seq2seq-LSTM model with optimized feature organization can significantly improve the prediction performance.
Published in: IEEE Intelligent Transportation Systems Magazine ( Volume: 14, Issue: 6, Nov.-Dec. 2022)
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- IEEE Keywords
- Index Terms
- Long Short-term Memory ,
- Traffic Flow ,
- Dynamic Prediction ,
- Traffic Prediction ,
- Traffic Flow Dynamics ,
- Long Short-term Memory Framework ,
- Prediction Model ,
- Time Series ,
- Prediction Accuracy ,
- Complex Structure ,
- Time And Space ,
- Model Performance ,
- Deep Learning ,
- Typical Features ,
- Predictive Performance ,
- Convolutional Neural Network ,
- Transition State ,
- Equilibrium State ,
- Short-term Memory ,
- Supply And Demand ,
- Mean Absolute Percentage Error ,
- Prediction Horizon ,
- Equilibrium Density ,
- Long Short-term Memory Cell ,
- Mean Absolute Error ,
- Detection Speed ,
- Blue Box ,
- Equilibrium Volume ,
- Past Period
Keywords assist with retrieval of results and provide a means to discovering other relevant content. Learn more.
- IEEE Keywords
- Index Terms
- Long Short-term Memory ,
- Traffic Flow ,
- Dynamic Prediction ,
- Traffic Prediction ,
- Traffic Flow Dynamics ,
- Long Short-term Memory Framework ,
- Prediction Model ,
- Time Series ,
- Prediction Accuracy ,
- Complex Structure ,
- Time And Space ,
- Model Performance ,
- Deep Learning ,
- Typical Features ,
- Predictive Performance ,
- Convolutional Neural Network ,
- Transition State ,
- Equilibrium State ,
- Short-term Memory ,
- Supply And Demand ,
- Mean Absolute Percentage Error ,
- Prediction Horizon ,
- Equilibrium Density ,
- Long Short-term Memory Cell ,
- Mean Absolute Error ,
- Detection Speed ,
- Blue Box ,
- Equilibrium Volume ,
- Past Period