KGCN‐LSTM: A graph convolutional network considering knowledge fusion of point of interest for vehicle trajectory prediction

Author:

Chen Juan12,Fan Daiqian1,Qian Xinran1,Mei Lanxiao1

Affiliation:

1. SILC Business School Shanghai University Shanghai China

2. Smart City Research Institute Shanghai University Shanghai China

Abstract

AbstractUrban vehicle trajectory prediction positively alleviates traffic congestion, avoids traffic accidents, and optimizes the urban transportation system. Since taxi trajectories are influenced by the driving intention, it is significant to consider the Points of Interest (POI) as the spatial features for trajectory prediction. A Knowledge Graph Convolutional Network Long Short‐Term Memory (KGCN‐LSTM) model is proposed here to improve the accuracy and robustness of trajectory prediction. POI information is considered as the prior‐knowledge of the trajectory by the Graph Convolutional Network (GCN). Under multiple comparison experiments, Shopping POI gains the highest positive effect weight of 15% in holidays, and Hospital POI gains the highest weight of 16% in working days. In holidays, higher accuracy and robustness are achieved compared with benchmarks when performing the KGCN‐LSTM model with POI of shopping, food, life service, scenic spots, and entertainment classes, while the performance is not improved with the rest of the POI classes. In working days, higher accuracy and stronger robustness are achieved compared with benchmarks when performing the KGCN‐LSTM model with POI of hospital, life service, and exercise. While the performance is not improved with the rest of the POI classes.

Funder

National Natural Science Foundation of China

Publisher

Institution of Engineering and Technology (IET)

Subject

Law,Mechanical Engineering,General Environmental Science,Transportation

Reference57 articles.

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2. Graph neural network driven traffic forecasting technology: Exploration and challenge;Zhou Y.;Chin. J. Internet Things,2021

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