Man-hour Prediction for Complex Industrial Products
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info:eu-repo/semantics/closedAccessDate
2023Author
Unal, Ahmet EminBoyar, Halit
Pak, Burcu Kuleli
Cem Yildiz, Mehmet
Erten, Ali Erman
Gungor, Vehbi Cagri
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Accurately predicting the cost is crucial for the
success of complex industrial projects. There can be several
sources contributing to the cost. Traditional methods for cost
estimation may not provide the required accuracy and speed to
ensure the success of the project. Recently, machine learning
techniques have shown promising results in improving cost
estimation in various industrial products. This study
investigates the performance of gradient-boosting machine
learning models and feature engineering techniques on a private
dataset of metal sheet project man-hour costs. A comparison of
distinct models is conducted, key aspects influencing cost are
identified, and the implications of incorporating domainspecific knowledge, including its advantages and disadvantages,
are assessed based on performance outcomes. Experimental
results demonstrate that LightGBM and XGBoost outperform
other models, and feature selection and synthetic data
generation techniques improve the performance. Overall, this
study highlights the potential of machine learning in metal sheet
sampling projects and emphasizes the importance of feature
engineering and domain expertise for better model
performance.