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. 2023 Jun 27:109413.
doi: 10.1016/j.cie.2023.109413. Online ahead of print.

Graph Spatio-Temporal Networks for Manufacturing Sales Forecast and Prevention Policies in Pandemic Era

Affiliations

Graph Spatio-Temporal Networks for Manufacturing Sales Forecast and Prevention Policies in Pandemic Era

Chia-Yen Lee et al. Comput Ind Eng. .

Abstract

Worldwide manufacturing industries are significantly affected by COVID-19 pandemic because of their production characteristics with low-cost country sourcing, globalization, and inventory level. To analyze the correlated time series, spatial-temporal model becomes more attractive, and the graph convolution network (GCN) is also commonly used to provide more information to the nodes and its neighbors in the graph. Recently, attention-adjusted graph spatio-temporal network (AGSTN) was proposed to address the problem of pre-defined graph in GCN by combining multi-graph convolution and attention adjustment to learn spatial and temporal correlations over time. However, AGSTN may show potential problem with limited small non-sensor data; particularly, convergence issue. This study proposes several variants of AGSTN and applies them to non-sensor data. We suggest data augmentation and regularization techniques such as edge selection, time series decomposition, prevention policies to improve AGSTN. An empirical study of worldwide manufacturing industries in pandemic era was conducted to validate the proposed variants. The results show that the proposed variants significantly improve the prediction performance at least around 20% on mean squared error (MSE) and convergence problem.

Keywords: Correlated time series; Data augmentation; Data scarcity; Graph convolutional networks; Regularization.

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Conflict of interest statement

The authors declare that they have no known competing financial interests or personal relationships that could have appeared to influence the work reported in this paper.

Figures

Figure 1
Figure 1
The architecture of AGSTN (Lu and Li, 2020)
Figure 2
Figure 2
An illustration of NeuralSparse (revised from Zheng et al., 2020)
Figure 3
Figure 3
The architecture of the AGSTN variants
Figure 4
Figure 4
The proposed research framework
Figure 5
Figure 5
Linear interpolation of data
Figure 6
Figure 6
Time series decomposition for new order
Figure 7
Figure 7
US new orders in each period of big events
Figure 8
Figure 8
Illustration of investigating the selected variables
Figure 9
Figure 9
Comparison between AGSTN and AGSTN+NS
Figure 10
Figure 10
Comparison between AGSTN+PP and AGSTN+NS+TSD
Figure 11
Figure 11
Model comparison in time period A
Figure 12
Figure 12
Model comparison in time period B

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