Parking Lot Traffic Prediction Based on Fusion of Multifaceted Spatio-Temporal Features.

Lechuan Zhang, Bin Wang, Qian Zhang, Sulei Zhu, Yan Ma
Author Information
  1. Lechuan Zhang: College of Information, Mechanical and Electrical Engineering, Shanghai Normal University, Shanghai 201400, China. ORCID
  2. Bin Wang: College of Information, Mechanical and Electrical Engineering, Shanghai Normal University, Shanghai 201400, China.
  3. Qian Zhang: College of Information, Mechanical and Electrical Engineering, Shanghai Normal University, Shanghai 201400, China.
  4. Sulei Zhu: College of Information, Mechanical and Electrical Engineering, Shanghai Normal University, Shanghai 201400, China.
  5. Yan Ma: College of Information, Mechanical and Electrical Engineering, Shanghai Normal University, Shanghai 201400, China. ORCID

Abstract

With the rapid growth of population and vehicles, issues such as traffic congestion are becoming increasingly apparent. Parking guidance and information (PGI) systems are becoming more critical, with one of the most important tasks being the prediction of traffic flow in parking lots. Predicting parking traffic can effectively improve parking efficiency and alleviate traffic congestion, traffic accidents, and other problems. However, due to the complex characteristics of parking spatio-temporal data, high levels of noise, and the intricate influence of external factors, there are three challenges to predicting parking traffic in a city effectively: (1) how to better model the nonlinear, asymmetric, and complex spatial relationships among parking lots; (2) how to model the temporal autocorrelation of parking flow more accurately for each parking lot, whether periodic or aperiodic; and (3) how to model the correlation between external influences, such as holiday weekends, POIs (points of interest), and weather factors. In this context, this paper proposes a parking lot traffic prediction model based on the fusion of multifaceted spatio-temporal features (MFF-STGCN). The model consists of a feature embedding module, a spatio-temporal attention mechanism module, and a spatio-temporal convolution module. The feature embedding module embeds external features such as weekend holidays, geographic POIs, and weather features into the time series, the spatio-temporal attention mechanism module captures the dynamic spatio-temporal correlation of parking traffic, and the spatio-temporal convolution module captures the spatio-temporal features by using graph convolution and gated recursion units. Finally, the outputs of adjacent time series, daily series, and weekly series are weighted and fused to obtain the final prediction results, thus predicting the parking lot traffic flow more accurately and effectively. Results on real datasets demonstrate that the proposed model enhances prediction performance.

Keywords

References

  1. Sensors (Basel). 2023 May 31;23(11): [PMID: 37299974]
  2. Neural Comput. 1997 Nov 15;9(8):1735-80 [PMID: 9377276]

Grants

  1. 61373004/National Natural Science Foundation of China

Word Cloud

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