An open innovative inventory management based demand forecasting approach for the steel industry

Q1 Economics, Econometrics and Finance
Nonthaphat Sukolkit, Sirawadee Arunyanart, Arthit Apichottanakul
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引用次数: 0

Abstract

This research focuses on accurately forecasting steel wire mesh demand to ensure timely order fulfillment. Various univariate time series forecasting methods were employed, including Prophet, Support Vector Regression (SVR), 1-Dimensional Convolutional Neural Network (1D-CNN), Recurrent Neural Network (RNN), Gated Recurrent Unit (GRU), and Long Short-Term Memory (LSTM). These RNN-based models were implemented to enhance the dynamics of open innovation. The study also employed the split test method to assess the impact of data size on model performance. Following a comprehensive comparative analysis, LSTM outperformed other models at 80:20 data split ratio, achieving the lowest RMSE of 51,473 and MAPE of 1.43. The robust performance of LSTM underscores its ability to expertly predict complex demand patterns. Moreover, forecast accuracy was enhanced using ensemble models, with RNN-LSTM delivering the best results (RMSE of 45,931 and MAPE of 1.20) at the same data split ratio. This accurate forecasting supports steel wire mesh companies in making informed decisions regarding inventory management. The study additionally demonstrated the integration of forecasting results into inventory strategies to improve decision-making for cost optimization.
钢铁行业基于需求预测的开放式创新库存管理方法
本研究的重点是准确预测钢丝网的需求,以确保及时完成订单。研究采用了多种单变量时间序列预测方法,包括先知、支持向量回归(SVR)、一维卷积神经网络(1D-CNN)、循环神经网络(RNN)、门控循环单元(GRU)和长短期记忆(LSTM)。实施这些基于 RNN 的模型是为了增强开放式创新的活力。研究还采用了拆分测试法来评估数据规模对模型性能的影响。经过综合比较分析,LSTM 在数据分割比例为 80:20 时的表现优于其他模型,实现了最低的 RMSE(51,473)和 MAPE(1.43)。LSTM 的稳健表现凸显了其专业预测复杂需求模式的能力。此外,使用集合模型也提高了预测准确性,其中 RNN-LSTM 在相同的数据分割率下取得了最佳结果(RMSE 为 45,931,MAPE 为 1.20)。这种准确的预测有助于钢丝网公司在库存管理方面做出明智的决策。该研究还证明了将预测结果整合到库存战略中,以改进成本优化决策。
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来源期刊
Journal of Open Innovation: Technology, Market, and Complexity
Journal of Open Innovation: Technology, Market, and Complexity Economics, Econometrics and Finance-Economics, Econometrics and Finance (all)
CiteScore
11.00
自引率
0.00%
发文量
196
审稿时长
1 day
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