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Data-driven optimization for production planning with multiple demand features

Xiaoli Su (School of Economics and Management, Fuzhou University, Fuzhou, China)
Lijun Zeng (School of Economics and Management, Fuzhou University, Fuzhou, China)
Bo Shao (Department of Industrial and Systems Engineering, University of Wisconsin-Madison, Madison, WI, USA)
Binlong Lin (School of Economics and Management, Fuzhou University, Fuzhou, China)

Kybernetes

ISSN: 0368-492X

Article publication date: 12 October 2023

52

Abstract

Purpose

The production planning problem with fine-grained information has hardly been considered in practice. The purpose of this study is to investigate the data-driven production planning problem when a manufacturer can observe historical demand data with high-dimensional mixed-frequency features, which provides fine-grained information.

Design/methodology/approach

In this study, a two-step data-driven optimization model is proposed to examine production planning with the exploitation of mixed-frequency demand data is proposed. First, an Unrestricted MIxed DAta Sampling approach is proposed, which imposes Group LASSO Penalty (GP-U-MIDAS). The use of high frequency of massive demand information is analytically justified to significantly improve the predictive ability without sacrificing goodness-of-fit. Then, integrated with the GP-U-MIDAS approach, the authors develop a multiperiod production planning model with a rolling cycle. The performance is evaluated by forecasting outcomes, production planning decisions, service levels and total cost.

Findings

Numerical results show that the key variables influencing market demand can be completely recognized through the GP-U-MIDAS approach; in particular, the selected accuracy of crucial features exceeds 92%. Furthermore, the proposed approach performs well regarding both in-sample fitting and out-of-sample forecasting throughout most of the horizons. Taking the total cost and service level obtained under the actual demand as the benchmark, the mean values of both the service level and total cost differences are reduced. The mean deviations of the service level and total cost are reduced to less than 2.4%. This indicates that when faced with fluctuating demand, the manufacturer can adopt the proposed model to effectively manage total costs and experience an enhanced service level.

Originality/value

Compared with previous studies, the authors develop a two-step data-driven optimization model by directly incorporating a potentially large number of features; the model can help manufacturers effectively identify the key features of market demand, improve the accuracy of demand estimations and make informed production decisions. Moreover, demand forecasting and optimal production decisions behave robustly with shifting demand and different cost structures, which can provide manufacturers an excellent method for solving production planning problems under demand uncertainty.

Keywords

Acknowledgements

The authors sincerely appreciate helpful comments from the editor and two anonymous reviewers. This research work is supported by the National Social Science Foundation of China under Grant No. 20BGL112. The authors also express sincere gratitude for valuable suggestions provided by Professor Xingxuan Zhuo.

Citation

Su, X., Zeng, L., Shao, B. and Lin, B. (2023), "Data-driven optimization for production planning with multiple demand features", Kybernetes, Vol. ahead-of-print No. ahead-of-print. https://doi.org/10.1108/K-04-2023-0690

Publisher

:

Emerald Publishing Limited

Copyright © 2023, Emerald Publishing Limited

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