Spatiotemporal Forecasting of Traffic Flow using Wavelet-based Temporal Attention

Bibliographic Details
Title: Spatiotemporal Forecasting of Traffic Flow using Wavelet-based Temporal Attention
Authors: Jakhmola, Yash, Panja, Madhurima, Mishra, Nitish Kumar, Ghosh, Kripabandhu, Kumar, Uttam, Chakraborty, Tanujit
Source: IEEE Access, 2024, Volume: 12
Publication Year: 2024
Collection: Computer Science
Subject Terms: Computer Science - Machine Learning, Computer Science - Neural and Evolutionary Computing
More Details: Spatiotemporal forecasting of traffic flow data represents a typical problem in the field of machine learning, impacting urban traffic management systems. In general, spatiotemporal forecasting problems involve complex interactions, nonlinearities, and long-range dependencies due to the interwoven nature of the temporal and spatial dimensions. Due to this, traditional statistical and machine learning methods cannot adequately handle the temporal and spatial dependencies in these complex traffic flow datasets. A prevalent approach in the field combines graph convolutional networks and multi-head attention mechanisms for spatiotemporal processing. This paper proposes a wavelet-based temporal attention model, namely a wavelet-based dynamic spatiotemporal aware graph neural network (W-DSTAGNN), for tackling the traffic forecasting problem. Wavelet decomposition can help by decomposing the signal into components that can be analyzed independently, reducing the impact of non-stationarity and handling long-range dependencies of traffic flow datasets. Benchmark experiments using three popularly used statistical metrics confirm that our proposal efficiently captures spatiotemporal correlations and outperforms ten state-of-the-art models (including both temporal and spatiotemporal benchmarks) on three publicly available traffic datasets. Our proposed ensemble method can better handle dynamic temporal and spatial dependencies and make reliable long-term forecasts. In addition to point forecasts, our proposed model can generate interval forecasts that significantly enhance probabilistic forecasting for traffic datasets.
Document Type: Working Paper
DOI: 10.1109/ACCESS.2024.3516195
Access URL: http://arxiv.org/abs/2407.04440
Accession Number: edsarx.2407.04440
Database: arXiv
More Details
DOI:10.1109/ACCESS.2024.3516195