Volume 41 Issue 1
Feb.  2023
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CHEN Yu, WANG Wei, HUA Xuedong, ZHAO De. A Recursive Framework-based Approach for Real-time Traffic Flow Forecasting for Highways[J]. Journal of Transport Information and Safety, 2023, 41(1): 124-131. doi: 10.3963/j.jssn.1674-4861.2023.01.013
Citation: CHEN Yu, WANG Wei, HUA Xuedong, ZHAO De. A Recursive Framework-based Approach for Real-time Traffic Flow Forecasting for Highways[J]. Journal of Transport Information and Safety, 2023, 41(1): 124-131. doi: 10.3963/j.jssn.1674-4861.2023.01.013

A Recursive Framework-based Approach for Real-time Traffic Flow Forecasting for Highways

doi: 10.3963/j.jssn.1674-4861.2023.01.013
  • Received Date: 2022-05-22
    Available Online: 2023-05-13
  • Real-time and accurate traffic flow forecasting is a prerequisite for intelligent management and control of highways, which requires an effective approach for data processing as well as for meeting the real-time requirement. However, few studies have considered the accuracy of traffic flow forecasting for highways from a real-time perspective. Based on this consideration, a recursive framework for traffic flow forecasting is developed combining adaptive Kalman filter (KF) and long short-term memory (LSTM) autoencoder to meet the real-time and accuracy requirements of intelligent transportation systems. Historical data of traffic flow and speed are adopted, and smoothed by a KF method to enhance the prediction accuracy. An unsupervised machine learning algorithm, LSTM autoencoder, is introduced to model the time-varying characteristics of highway traffic flow efficiently. Considering the real-time requirement of traffic flow forecasting for highways, a recursive forecasting framework is proposed. The output of the KF algorithm is replaced by the predicted value of LSTM autoencoder. Based on the real-time data, the adaptive KF algorithm is conducted to correct the current optimal state value. A case study is conducted based on a real-world traffic dataset collected from the Minnesota Twin Cities, USA. Study results show that the recursive framework of forecasting the highway traffic flow proposed in this study has relatively competitive advantages in terms of both computational cost and prediction accuracy. The mean absolute percentage error of prediction is 5.0% (< 7.4% of the combined KF and LSTM autoencoder model); and total training time is 85 s, which is lower than the standard LSTM (101 s).

     

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  • [1]
    VLAHOGIANNI E I, KARLAFTIS M G, GOLIAS J C. Short-term traffic forecasting: where we are and where we're going[J]. Transportation Research Part C: Emerging Technologies, 2014, 43: 3-19. doi: 10.1016/j.trc.2014.01.005
    [2]
    OH S, BYON Y J, JANG K, et al. Short-term travel-time prediction on highway: a review on model-based approach[J]. KSCE Journal of Civil Engineering, 2018, 22(1): 298-310. doi: 10.1007/s12205-017-0535-8
    [3]
    DO L N N, TAHERIFAR N, VU H L. Survey of neural network-based models for short-term traffic state prediction[J]. Wiley Interdisciplinary Reviews-Data Mining and Knowledge Discovery, 2019, 9(1): e1285.
    [4]
    KASHYAP A A, RAVIRAJ S, DEVARAKONDA A, et al. Traffic flow prediction models: a review of deep learning techniques[J]. Cogent Engineering, 2022, 9(1): 2010510. doi: 10.1080/23311916.2021.2010510
    [5]
    CHAN K Y, DILLON T S, SINGH J, et al. Neural-network-based models for short-term traffic flow forecasting using a hybrid exponential smoothing and Levenberg-Marquardt algorithm[J]. IEEE Transactions on Intelligent Transportation Systems, 2012, 13(2): 644-654. doi: 10.1109/TITS.2011.2174051
    [6]
    ZHAO L N, WEN X Y, WANG Y P, et al. A novel hybrid model of ARIMA-MCC and CKDE-GARCH for urban short-term traffic flow prediction[J]. IET Intelligent Transport Systems, 2022, 16(2): 206-217. doi: 10.1049/itr2.12138
    [7]
    GIRAKA O, SELVARAJ V K. Short-term prediction of intersection turning volume using seasonal ARIMA model[J]. Transportation Letters-The International Journal of Transportation Research, 2020, 12(7): 483-490.
    [8]
    KUMAR B P, HARIHARAN K. Time series traffic flow prediction with hyper-parameter optimized ARIMA models for intelligent transportation system[J]. Journal of Scientific & Industrial Research, 2022, 81(4): 408-15.
    [9]
    EMAMI A, SARVI M, BAGLOEE S A. Using Kalman filter algorithm for short-term traffic flow prediction in a connected vehicle environment[J]. Journal of Modern Transportation, 2019, 27(3): 222-232. doi: 10.1007/s40534-019-0193-2
    [10]
    CAI L R, ZHANG Z C, YANG J J, et al. A noise-immune Kalman filter for short-term traffic flow forecasting[J]. Physica A-Statistical Mechanics and its Applications, 2019, 536(C): 122601.
    [11]
    王科伟, 徐志红. 基于混沌时间序列的道路断面短时交通流预测模型[J]. 交通运输工程与信息学报, 2010, 8(1): 70-74. doi: 10.3969/j.issn.1672-4747.2010.01.014

    WANG K W, XU Z H. Chaotic-time-series-based short-term traffic flow forecast model of road cross-section[J]. Journal of Transportation Engineering and Information, 2010, 8(1): 70-74. (in Chinese) doi: 10.3969/j.issn.1672-4747.2010.01.014
    [12]
    周晓, 唐宇舟, 刘强. 基于卡尔曼滤波的道路平均速度预测模型研究[J]. 浙江工业大学学报, 2020, 48(4): 392-396, 404. https://www.cnki.com.cn/Article/CJFDTOTAL-ZJGD202004006.htm

    ZHOU X, TAND Y Z, LIU Q. Research on road average speed prediction model based on Kalman filter[J]. Journal of Zhejiang University of Technology, 2020, 48(4): 392-396, 404. (in Chinese) https://www.cnki.com.cn/Article/CJFDTOTAL-ZJGD202004006.htm
    [13]
    申雷霄, 陆宇航, 郭建华. 卡尔曼滤波短时交通流预测普通国省道适应性研究[J]. 交通信息与安全, 2021, 39(5): 117-127. doi: 10.3963/j.jssn.1674-4861.2021.05.015

    SHEN X X, LU Y H, GUO J H. Adaptability of Kalman filter for short-time traffic flow forecasting on national and provincial highways[J]. Journal of Transport Information and Safety, 2021, 39(5): 117-127. (in Chinese) doi: 10.3963/j.jssn.1674-4861.2021.05.015
    [14]
    KUMAR K, PARIDA M, KATIYAR V K. Short term traffic flow prediction for a non urban highway using artificial neural network[J]. Procedia Social and Behavioral Sciences, 2013, 104: 755-764. doi: 10.1016/j.sbspro.2013.11.170
    [15]
    CHEN Y Y, CHEN H Y, YE P J, et al. Acting as a decision maker: Traffic-condition-aware ensemble learning for traffic flow prediction[J]. IEEE Transactions on Intelligent Transportation Systems, 2022, 23(4): 3190-3200. doi: 10.1109/TITS.2020.3032758
    [16]
    许岩岩, 翟希, 孔庆杰, 等. 高速路交通流短时预测方法[J]. 交通运输工程学报, 2013, 13(2): 114-119.

    XU Y Y, ZHAI X, KONG Q J, et al. Short-term prediction method of freeway traffic flow[J]. Journal of Traffic and Transportation Engineering, 2013, 13(2): 114-119. (in Chinese)
    [17]
    李巧茹, 赵蓉, 陈亮. 基于SVM与自适应时空数据融合的短时交通流量预测模型[J]. 北京工业大学学报, 2015, 41 (4): 597-602.

    LI Q R, ZHAO R, CHEN L. Short-term traffic flow forecasting model based on SVM and adaptive spatio-temporal data fusion[J]. Journal of Beijing University of Technology, 2015, 41(4): 597-602. (in Chinese)
    [18]
    CHEN Y, WANG W, HUA X D, et al. Survey of decomposition-reconstruction-based hybrid approaches for short-term traffic state forecasting[J]. Sensors, 2022, 22(14): 5263.
    [19]
    LYU Y S, DUAN Y J, KANG W W, et al. Traffic flow prediction with big data: A deep learning approach[J]. IEEE Transactions on Intelligent Transportation Systems, 2015, 16(2): 865-873.
    [20]
    ZHANG Y N, ZHOU Y H, LU H P, et al. Traffic network flow prediction using parallel training for deep convolutional neural networks on spark cloud[J]. IEEE Transactions on Industrial Informatics, 2020, 16(12): 7369-7380.
    [21]
    WEI W Y, WU H H, MA H. An AutoEncoder and LSTM-based traffic flow prediction method[J]. Sensors, 2019, 19(13): 2946.
    [22]
    CHEN Z F, XU J M, LIN Y J, et al. A traffic flow forecasting method regarding traffic network as an digraph[J]. International Journal of Pattern Recognition and Artificial Intelligence, 2021, 35(15): 2159043.
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