TY - GEN
T1 - Wavelet Decomposition Self-Supervised Neural Networks for Traffic Flow Forecasting
AU - Li, Yingda
AU - Sun, Zhongqi
AU - Du, Changkun
AU - Jiang, Zuo
AU - Xia, Yuanqing
N1 - Publisher Copyright:
© 2024 Technical Committee on Control Theory, Chinese Association of Automation.
PY - 2024
Y1 - 2024
N2 - Accurate traffic flow forecasting is of great significance for improving traffic flow efficiency, optimizing public traffic resources, and improving traffic management capability. However, there are two challenges in current traffic flow forecasting: i) most existing models directly deal with the original sequence where multiple temporal patterns coexist, which cannot effectively handle the interdependence among different temporal patterns or remove the influence of irregular noise in the original sequence; ii) they fail to efficiently and simultaneously capture the spatio-temporal heterogeneity of traffic flow to extract the rich latent spatio-temporal representations.. To address these challenges, we propose an efficient wavelet decomposition self-supervised learning network (waveSSL). Specifically, the discrete wavelet transform is used to convert the original traffic sequence into two components: high frequency and low frequency. These components represent two temporal patterns, short-term changes, and long-term trends, respectively. Each component undergoes a spatio-temporal processing method to fuse the spatio-temporal relationships. Additionally, a self-supervised learner based on a spatio-temporal masking strategy is incorporated to obtain rich latent spatio-temporal representations of traffic flow and enhance the prediction's generalization ability.
AB - Accurate traffic flow forecasting is of great significance for improving traffic flow efficiency, optimizing public traffic resources, and improving traffic management capability. However, there are two challenges in current traffic flow forecasting: i) most existing models directly deal with the original sequence where multiple temporal patterns coexist, which cannot effectively handle the interdependence among different temporal patterns or remove the influence of irregular noise in the original sequence; ii) they fail to efficiently and simultaneously capture the spatio-temporal heterogeneity of traffic flow to extract the rich latent spatio-temporal representations.. To address these challenges, we propose an efficient wavelet decomposition self-supervised learning network (waveSSL). Specifically, the discrete wavelet transform is used to convert the original traffic sequence into two components: high frequency and low frequency. These components represent two temporal patterns, short-term changes, and long-term trends, respectively. Each component undergoes a spatio-temporal processing method to fuse the spatio-temporal relationships. Additionally, a self-supervised learner based on a spatio-temporal masking strategy is incorporated to obtain rich latent spatio-temporal representations of traffic flow and enhance the prediction's generalization ability.
KW - Self-supervised learning
KW - Spatio-temporal forecasting
KW - Traffic engineering
KW - Traffic flow forecasting
KW - Wavelet transform
UR - http://www.scopus.com/inward/record.url?scp=85205467863&partnerID=8YFLogxK
U2 - 10.23919/CCC63176.2024.10662847
DO - 10.23919/CCC63176.2024.10662847
M3 - Conference contribution
AN - SCOPUS:85205467863
T3 - Chinese Control Conference, CCC
SP - 6550
EP - 6555
BT - Proceedings of the 43rd Chinese Control Conference, CCC 2024
A2 - Na, Jing
A2 - Sun, Jian
PB - IEEE Computer Society
T2 - 43rd Chinese Control Conference, CCC 2024
Y2 - 28 July 2024 through 31 July 2024
ER -