TY - JOUR
T1 - A Spatial-Temporal Transformer Network for City-Level Cellular Traffic Analysis and Prediction
AU - Gu, Bo
AU - Zhan, Junhui
AU - Gong, Shimin
AU - Liu, Wanquan
AU - Su, Zhou
AU - Guizani, Mohsen
N1 - Publisher Copyright:
© 2002-2012 IEEE.
PY - 2023/12/1
Y1 - 2023/12/1
N2 - With the accelerated popularization of 5G applications, accurate cellular traffic prediction is becoming increasingly important for efficient network management. Currently, the latest algorithms for cellular traffic prediction generally neglect extraction of the shallow features of cellular traffic and the prediction accuracy is hence limited. Therefore, we propose a global-local spatial-Temporal transformer network (GLSTTN) that can fully excavate diverse spatial-Temporal characteristics of cellular traffic for accurate cellular traffic prediction. Specifically, GLSTTN achieves this goal by constructing two modules: The global spatial-Temporal module and the local spatial-Temporal module. In the global spatial-Temporal module, GLSTTN captures global correlations using stacked spatial-Temporal blocks, where each block is composed of one spatial transformer and one temporal transformer. A skip connection is then used in each block to strengthen feature propagation. In the local spatial-Temporal module, GLSTTN fully extracts the local spatial-Temporal dependencies hidden in globally encoded features using densely connected convolutional neural networks. Extensive experiments demonstrate that GLSTTN achieves more accurate cellular traffic prediction than existing approaches on a real-world cellular traffic dataset.
AB - With the accelerated popularization of 5G applications, accurate cellular traffic prediction is becoming increasingly important for efficient network management. Currently, the latest algorithms for cellular traffic prediction generally neglect extraction of the shallow features of cellular traffic and the prediction accuracy is hence limited. Therefore, we propose a global-local spatial-Temporal transformer network (GLSTTN) that can fully excavate diverse spatial-Temporal characteristics of cellular traffic for accurate cellular traffic prediction. Specifically, GLSTTN achieves this goal by constructing two modules: The global spatial-Temporal module and the local spatial-Temporal module. In the global spatial-Temporal module, GLSTTN captures global correlations using stacked spatial-Temporal blocks, where each block is composed of one spatial transformer and one temporal transformer. A skip connection is then used in each block to strengthen feature propagation. In the local spatial-Temporal module, GLSTTN fully extracts the local spatial-Temporal dependencies hidden in globally encoded features using densely connected convolutional neural networks. Extensive experiments demonstrate that GLSTTN achieves more accurate cellular traffic prediction than existing approaches on a real-world cellular traffic dataset.
KW - Cellular traffic prediction
KW - allocation of network resources
KW - spatial-Temporal network
KW - transformer
UR - https://www.scopus.com/pages/publications/85159790507
U2 - 10.1109/TWC.2023.3270441
DO - 10.1109/TWC.2023.3270441
M3 - 文章
AN - SCOPUS:85159790507
SN - 1536-1276
VL - 22
SP - 9412
EP - 9423
JO - IEEE Transactions on Wireless Communications
JF - IEEE Transactions on Wireless Communications
IS - 12
ER -