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An Approach for Demand Forecasting in Steel Industries Using Ensemble Learning
Author(s) -
S. M. Taslim Uddin Raju,
Amlan Sarker,
Apurba Das,
Md. Milon Islam,
Mabrook AlRakhami,
Atif Alamri,
Tasniah Mohiuddin,
Fahad R. Albogamy
Publication year - 2022
Publication title -
complexity
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 0.447
H-Index - 61
eISSN - 1099-0526
pISSN - 1076-2787
DOI - 10.1155/2022/9928836
Subject(s) - extreme learning machine , ensemble learning , boosting (machine learning) , random forest , support vector machine , machine learning , artificial intelligence , ensemble forecasting , hyperparameter , computer science , feature selection , mean squared error , multilayer perceptron , gradient boosting , artificial neural network , hyperparameter optimization , perceptron , lasso (programming language) , decision tree , mathematics , statistics , world wide web
This paper aims to introduce a robust framework for forecasting demand, including data preprocessing, data transformation and standardization, feature selection, cross-validation, and regression ensemble framework. Bagging (random forest regression (RFR)), boosting (gradient boosting regression (GBR) and extreme gradient boosting regression (XGBR)), and stacking (STACK) are employed as ensemble models. Different machine learning (ML) approaches, including support vector regression (SVR), extreme learning machine (ELM), and multilayer perceptron neural network (MLP), are adopted as reference models. In order to maximize the determination coefficient ( R 2 ) value and reduce the root mean square error (RMSE), hyperparameters are set using the grid search method. Using a steel industry dataset, all tests are carried out under identical experimental conditions. In this context, STACK1 (ELM + GBR + XGBR-SVR) and STACK2 (ELM + GBR + XGBR-LASSO) models provided better performance than other models. The highest accuracies of R2 of 0.97 and 0.97 are obtained using STACK1 and STACK2, respectively. Moreover, the rank according to performances is STACK1, STACK2, XGBR, GBR, RFR, MLP, ELM, and SVR. As it improves the performance of models and reduces the risk of decision-making, the ensemble method can be used to forecast the demand in a steel industry one month ahead.

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