Article (Scientific journals)
A machine learning approach for implementing data-driven production control policies
Khayyati, Siamak; Tan, Barış
2022In International Journal of Production Research, 60 (10), p. 3107 - 3128
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Keywords :
discrete event simulation; machine learning; Production control; real-time control; stochastic models; Information signals; Information sources; Machine learning approaches; Optimal policies; Production system; Real time signal; Search space size; Systematic method; Strategy and Management; Management Science and Operations Research; Industrial and Manufacturing Engineering
Abstract :
[en] Given the extensive data being collected in manufacturing systems, there is a need for developing a systematic method to implement data-driven production control policies. For an effective implementation, first, the relevant information sources must be selected. Then, a control policy that uses the real-time signals collected from these sources must be implemented. We analyse the production control policy implementation problem in three levels: choosing the information sources, forming clusters of information signals to be used by the policy and determining the optimal policy parameters. Due to the search-space size, a machine-learning-based framework is proposed. Using machine learning speeds up optimisation and allows utilising the collected data with simulation. Through two experiments, we show the effectiveness of this approach. In the first experiment, the problem of selecting the right machines and buffers for controlling the release of materials in a production/inventory system is considered. In the second experiment, the best dispatching policy based on the selected information sources is identified. We show that selecting the right information sources and controlling a production system based on the real-time signals from the selected sources with the right policy improve the system performance significantly. Furthermore, the proposed machine learning framework facilitates this task effectively.
Disciplines :
Production, distribution & supply chain management
Author, co-author :
Khayyati, Siamak  ;  Université de Liège - ULiège > HEC Liège Research > HEC Liège Research: Business Analytics & Supply Chain Mgmt ; Department of Industrial Engineering, Koç University, Istanbul, Turkey
Tan, Barış ;  College of Administrative Sciences and Economics, Koç University, Istanbul, Turkey
Language :
English
Title :
A machine learning approach for implementing data-driven production control policies
Publication date :
2022
Journal title :
International Journal of Production Research
ISSN :
0020-7543
eISSN :
1366-588X
Publisher :
Taylor and Francis Ltd.
Volume :
60
Issue :
10
Pages :
3107 - 3128
Peer reviewed :
Peer Reviewed verified by ORBi
Funders :
TÜBİTAK - Scientific and Technological Research Council of Turkey
Funding text :
Research leading to these results has received funding from the EU ECSEL Joint Undertaking under grant agreement no. 737459 (project Productive4.0) and from TUBITAK (217M145).This work was supported by Electronic Components and Systems for European Leadership [737459 (project Productive4.0)] and Scientific and Technological Research Council of Turkey [27M145]. Research leading to these results has received funding from the EU ECSEL Joint Undertaking under grant agreement no. 737459 (project Productive4.0) and from TUBITAK (217M145).
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