Volume 41 Issue 5
Oct.  2023
Turn off MathJax
Article Contents
LIU Qingmei, WAN Ming, YAN Lixin, GUO Junhua. A Method for Predicting Traffic Accidents Based on an Ensemble Empirical Mode Decomposition and an Optimized LSTM Model[J]. Journal of Transport Information and Safety, 2023, 41(5): 12-23. doi: 10.3963/j.jssn.1674-4861.2023.05.002
Citation: LIU Qingmei, WAN Ming, YAN Lixin, GUO Junhua. A Method for Predicting Traffic Accidents Based on an Ensemble Empirical Mode Decomposition and an Optimized LSTM Model[J]. Journal of Transport Information and Safety, 2023, 41(5): 12-23. doi: 10.3963/j.jssn.1674-4861.2023.05.002

A Method for Predicting Traffic Accidents Based on an Ensemble Empirical Mode Decomposition and an Optimized LSTM Model

doi: 10.3963/j.jssn.1674-4861.2023.05.002
  • Received Date: 2022-05-01
    Available Online: 2024-01-18
  • Accurate prediction of road traffic accidents is essential to improve traffic safety effectively. Due to the frequent non-linear, fluctuating, and nonperiodic characteristics of accident data, existing algorithms have the problem of poor prediction performance. Therefore, a method for traffic prediction that uses a long short-term memory network (LSTM) combined with ensemble empirical mode decomposition (EEMD) and particle swarm optimization (PSO) is proposed. Based on a single model, the EEMD is first used to break down the noise of accident data and obtain multiple subsequences and a residual. Based on LSTM optimized by PSO, the temporal feature information extracted from the data is predicted under the optimal network structure of LSTM. Then, the prediction results of each subsequence and residual are summed to obtain the final prediction result. The results show that, compared with the EMD-PSO-LSTM, PSO-LSTM, EEMD-LSTM, and LSTM, the ermse of EEMD-PSO-LSTM is reduced by 8.7%, 48.3%, 53.1%, and 57.6%, respectively. Meanwhile, the emape is reduced by 12.4%, 36.9%, 50.6%, and 61.2%, respectively. Compared with the PSO-LSTM, the ermse of the EEMD-PSO-LSTM is reduced by 60.2%, the emape is reduced by 12.4%, and the r2 is increased by 0.616 5. The PSO Introduced to optimize neural networks can help improve prediction performance. Compared with the EEMD-LSTM, the ermse of the EEMD-PSO-LSTM is reduced by 53.1%, the emape is diminished by 50.6%, and the r2 is climbed to 0.807 8. The results can improve the prediction accuracy of traffic accidents and help relevant departments effectively improve road traffic safety.

     

  • loading
  • [1]
    PARVAREH M, KARIMIA, REZAEIS, et al. Assessment and prediction of road accident Injuries trend using timeseries models in Kurdistan[J]. Burns & Trauma, 2018, 6(1): 55-62.
    [2]
    HUANG T Y, WANG Y. Forecasting model of urban traffic accidents based on Grey Model-GM(1, 1)[C]. Second Workshop on Digital Media and its Application in Museum & Heritages(DMAMH 2007), Chongqing, China: IEEE, 2008.
    [3]
    XU CH CH, WANG W, LI Z B, et al. Using support vector machine models for crash injury severity analysis[J]. Accident Analysis & Prevention, 2012, 45 (2): 478-486.
    [4]
    谢学斌, 孔令燕. 基于ARIMA和XGBoost组合模型的交通事故预测[J]. 安全与环境学报, 2021, 21 (1): 277-284.

    XIE X B, KONG L Y. On the ways to the traffic accident prediction based on the AMRIA and XGBoost combined model[J]. Journal of Safety and Environment, 2021, 21(1): 277-284. (in Chinese)
    [5]
    DOGRU N, SUBASI A. Traffic accident detection using random forest classifier[C]. 2018 15th Learning and Technology Conference(L&T), Jeddah, Saudi Arabia: IEEE, 2018.
    [6]
    李文书, 邹涛涛, 王洪雁, 等. 基于双尺度长短期记忆网络的交通事故量预测模型[J]. 浙江大学学报(工学版), 2020, 54 (8): 1613-1619.

    LI W S, ZOU T T, WANG H Y, et al. Traffic accident quantity prediction model based on dual-scale long short-term memory network[J]. Journal of Zhejiang University(Engineering Science), 2020, 54 (8): 1613-1619. (in Chinese)
    [7]
    ZHENG M, LI T, ZHU R, et al. Traffic accident's severity prediction: A deep-learning approach-based CNN network[J]. IEEE Access, 2019, 7: 39897 - 39910. doi: 10.1109/ACCESS.2019.2903319
    [8]
    ZHANG Z H, YANG W Z, WUSHOUR S. Traffic accident prediction based on LSTM-GBRT model[J]. Journal of Control Science and Engineering, 2020, 2020 (20): 1-10.
    [9]
    LIN F, XU Y, YANG Y, et al. A spatial-temporal hybrid model for short-term traffic prediction[J]. Mathematical Problems in Engineering, 2019, 2019 (PT. 1): 1-12.
    [10]
    HUANG N E, WU Z H. Ensemble empirical mode decomposition: a noise-assisted data analysis method. Advances in Adaptive Data Analysis, 2009 (1): 1-41.
    [11]
    KIM N S, CHUNG K, AHN S, et al. Denoising traffic collision data using ensemble empirical mode decomposition (EEMD)and its application for constructing continuous risk profile(CRP)[J]. Accident Analysis & Prevention, 2014, 71 (1), 29-37.
    [12]
    马莹莹, 靳雪振. 基于EEMD和小波阈值的短时交通流预测研究[J]. 重庆交通大学学报(自然科学版), 2022, 41 (6): 22-29.

    MA Y Y, JIN X Z. Short-term traffic flow forecast method based on EEMD-Wavelet threshold[J]. Journal of Chongqing Jiaotong University(Natural Science), 2022, 41(6): 22-29. (in Chinese)
    [13]
    王盛, 杨信丰. 基于EEMD-GWO-LSSVM的公共交通短期客流预测[J]. 计算机工程与应用, 2019, 55(20): 216-221, 239.

    WANG S, YANG X F. Short-Term passenger flow forecasting of public transport based on EEMD-GWO-LSSVM[J]. Computer Engineering and Applications, 2019, 55(20): 216-221, 239. (in Chinese)
    [14]
    肖进丽, 李晓磊. 基于集合经验模态分解和差分进化算法优化BP神经网络的船舶交通流预测[J]. 大连海事大学学报, 2018, 44 (2): 9-14. doi: 10.3969/j.issn.1671-7031.2018.02.003

    XIAO J L, LI X L. Vessel traffic flow prediction method based on ensemble empirical mode decomposition and back propagation neural network optimized with differential evolution algorithm[J]. Journal of Dalian Maritime University, 2018, 44 (2): 9-14. (in Chinese) doi: 10.3969/j.issn.1671-7031.2018.02.003
    [15]
    殷礼胜, 唐圣期, 李胜, 等. 基于EEMD-IPSO-LSSVM的交通流组合预测模型[J]. 电子测量与仪器学报, 2019, 33 (12): 126-133.

    YIN S L, TANG S Q, LI S, et al. Combined model based on EEMD-IPSO-LSSVM for short-term flow traffic prediction[J]. Journal of Electronic Measurement and Instrumentation, 2019, 33 (12): 126-133. (in Chinese)
    [16]
    刘东辉, 肖雪, 张珏. 基于粒子群和LSTM模型的变区间短时停车需求预测方法[J]. 交通信息与安全, 2021, 39 (4): 77-83. doi: 10.3963/j.jssn.1674-4861.2021.04.010

    LIU D H, XIAO X, ZHANG J. A prediction method for short-term parking demands in variable interval based on particle swarm optimization and LSTM model[J]. Journal of Transport Information and Safety, 2021, 39(4): 77-83. (in Chinese) doi: 10.3963/j.jssn.1674-4861.2021.04.010
    [17]
    史宇辰, 晏松, 姚丹亚, 等. 基于SVM-LSTM的车辆跟驰行为识别与信息可信甄别[J]. 交通运输工程学报, 2022, 22 (3): 115-125.

    SHI Y C, YAN S, YAO D Y. SVM-LSTM-based car-following behavior recognition and information credibility discirmination[J]. Journal of Traffic and Transportation Engineering, 2022, 22 (3): 115-125. (in Chinese)
    [18]
    熊晓夏, 刘擎超, 沈钰杰, 等. 基于LSTM-BF的高速公路交通事故风险模型[J]. 中国安全科学学报, 2022, 32(5): 170-176.

    XIONG X X, LIU Q C, SHEN Y J, et al. Study on risk model of highway traffic accidents based on LSTM-BF[J], China Safety Science Journal, 2022, 32(5): 170-176. (in Chinese)
    [19]
    陈华伟, 邵毅明, 敖谷昌, 等. 面向在线地图的GCN-LSTM神经网络速度预测[J]. 交通运输工程学报, 2021, 21(4): 183-196.

    CHEN H W, SHAO Y M, AO G C, at al. Speed prediction by online map-based GCN-LSTM neural network[J], Journal of Traffic and Transportation Engineering, 2021, 21(4): 183-196. (in Chinese)
    [20]
    HOCHREITER S, SCHMIDHUBER J. Long short-term memory[J]. Neural Computation, 1997, 9 (8): 1735-1780.
  • 加载中

Catalog

    通讯作者: 陈斌, bchen63@163.com
    • 1. 

      沈阳化工大学材料科学与工程学院 沈阳 110142

    1. 本站搜索
    2. 百度学术搜索
    3. 万方数据库搜索
    4. CNKI搜索

    Figures(11)  / Tables(5)

    Article Metrics

    Article views (684) PDF downloads(72) Cited by()
    Proportional views
    Related

    /

    DownLoad:  Full-Size Img  PowerPoint
    Return
    Return