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A multi-MLP prediction for inventory management in manufacturing execution systemopen access

Authors
Ahakonye, Love Allen ChijiokeZainudin, AhmadShanto, Md Javed AhmedLee, Jae -MinKim, Dong-SeongJun, Taesoo
Issue Date
Jul-2024
Publisher
ELSEVIER
Keywords
AI; Inventory management; MES; Prediction; Multi-MLP
Citation
INTERNET OF THINGS, v.26
Journal Title
INTERNET OF THINGS
Volume
26
URI
https://scholarworks.bwise.kr/kumoh/handle/2020.sw.kumoh/28726
DOI
10.1016/j.iot.2024.101156
ISSN
2543-1536
2542-6605
Abstract
Artificial intelligence (AI) positively remodels industrial processes, notably inventory management (IM), from planning, scheduling, and optimization to logistics. Intelligent technologies such as AI have enabled innovative processes in the production line of manufacturing execution systems (MES), particularly in predicting IM. This study proposes a Multi-MLP model with LightGBM feature selection technique for MES IM prediction to enable high prediction accuracy, minimal computation cost, low prediction error, and minimum time cost. The proposed model is evaluated using publicly available Product Backorder datasets to prove its reliability. Investigating varying feature selection techniques results in identifying appropriate data features relevant to building an AI -based solution for the IM prediction in MES. The experiment results demonstrate efficient decision -making of the proposed system with a low error prediction MAE of 0.2331, MSE of 0.1225, and RMSE of 0.3504.
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Department of Computer Software Engineering > 1. Journal Articles

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