A parking occupancy prediction method incorporating time series decomposition and temporal pattern attention mechanism

被引:3
作者
Ye, Wei [1 ]
Kuang, Haoxuan [1 ]
Li, Jun [1 ]
Lai, Xinjun [2 ]
Qu, Haohao [1 ]
机构
[1] Sun Yat Sen Univ, Sch Intelligent Syst Engn, Shenzhen 518107, Peoples R China
[2] Guangdong Univ Technol, Sch Electromech Engn, Guangdong CIM Prov Key Lab, Guangzhou, Peoples R China
关键词
intelligent transportation systems; learning (artificial intelligence); time series;
D O I
10.1049/itr2.12433
中图分类号
TM [电工技术]; TN [电子技术、通信技术];
学科分类号
0808 ; 0809 ;
摘要
Parking occupancy prediction is an important reference for travel decisions and parking management. However, due to various related factors, such as commuting or traffic accidents, parking occupancy has complex change features that are difficult to model accurately, thus making it difficult for parking occupancy to be accurately predicted. Moreover, how to give appropriate weights to these changing features in prediction becomes a new challenge in the era of machine learning. To tackle these challenges, a parking occupancy prediction method called time series decomposition-long and short-term memory neural network (LSTM)-temporal pattern attention mechanism, which consists of three modules, namely 1) time series decomposition: modelling parking occupancy changes by extracting features such as trend, period, and effect; 2) encoder: extracting temporal correlations of feature sequences with LSTM; 3) temporal pattern attention mechanism: assigning attention to different features, are proposed. The evaluation results of 30 parking lots in Guangzhou city show that the proposed model 1) improves accuracy over the baseline model LSTM by 9.14% on average; 2) performs outstanding in four prediction time intervals and six types of parking lots, proving its validity and generality; 3) demonstrates its rationality and interpretability through ablation experiments and Shapley additive explanation. We propose a parking occupancy prediction method based on the integration of time series decomposition (TSD), long and short-term memory neural network (LSTM), and temporal pattern attention mechanism (TPA) . Specifically, the adoption of the TSD module enables the LSTM network to extract the temporal features more efficiently. Correspondingly, the TPA module gives appropriate weight to each temporal feature. We tested the accuracy, generalizability, and interpretability of the proposed method on a real-world shared dataset with 30 parking lots in Guangzhou, China. The results show that TSD-LSTM-TPA achieves outstanding performance in four prediction time intervals and six types of parking lots. It is found that the trend and cycle features play a major role in prediction and quantified the importance of features in each input time step through ablation experiment and shapley additive explanations, respectively. image
引用
收藏
页码:58 / 71
页数:14
相关论文
共 36 条
  • [1] CoPASample: A Heuristics Based Covariance Preserving Data Augmentation
    Agrawal, Rishabh
    Kothari, Paridhi
    [J]. MACHINE LEARNING, OPTIMIZATION, AND DATA SCIENCE, 2019, 11943 : 308 - 320
  • [2] Bai S., 2018, arXiv
  • [3] Smart Parking: Using a Crowd of Taxis to Sense On-Street Parking Space Availability
    Bock, Fabian
    Di Martino, Sergio
    Origlia, Antonio
    [J]. IEEE TRANSACTIONS ON INTELLIGENT TRANSPORTATION SYSTEMS, 2020, 21 (02) : 496 - 508
  • [4] Real-time parking information management to reduce search time, vehicle displacement and emissions
    Caicedo, Felix
    [J]. TRANSPORTATION RESEARCH PART D-TRANSPORT AND ENVIRONMENT, 2010, 15 (04) : 228 - 234
  • [5] Missing traffic data imputation and pattern discovery with a Bayesian augmented tensor factorization model
    Chen, Xinyu
    He, Zhaocheng
    Chen, Yixian
    Lu, Yuhuan
    Wang, Jiawei
    [J]. TRANSPORTATION RESEARCH PART C-EMERGING TECHNOLOGIES, 2019, 104 : 66 - 77
  • [6] Cho K., 2014, CoRR, abs/1406.1078, DOI DOI 10.3115/V1/D14-1179
  • [7] An effective spatial-temporal attention based neural network for traffic flow prediction
    Do, Loan N. N.
    Vu, Hai L.
    Vo, Bao Q.
    Liu, Zhiyuan
    Dinh Phung
    [J]. TRANSPORTATION RESEARCH PART C-EMERGING TECHNOLOGIES, 2019, 108 : 12 - 28
  • [8] FINDING STRUCTURE IN TIME
    ELMAN, JL
    [J]. COGNITIVE SCIENCE, 1990, 14 (02) : 179 - 211
  • [9] Short-term load forecasting based on empirical wavelet transform and random forest
    Fan, Guo-Feng
    Peng, Li-Ling
    Hong, Wei-Chiang
    [J]. ELECTRICAL ENGINEERING, 2022, 104 (06) : 4433 - 4449
  • [10] Predicting Vacant Parking Space Availability: A Long Short-Term Memory Approach
    Fan, Junkai
    Hu, Qian
    Xu, Yingying
    Tang, Zhenzhou
    [J]. IEEE INTELLIGENT TRANSPORTATION SYSTEMS MAGAZINE, 2022, 14 (02) : 129 - 143