Optimasi Random Forest Untuk Predictive Maintenance Dengan Random Search Dan Multiclass One-vs-Rest

Manalu, Daniel (2025) Optimasi Random Forest Untuk Predictive Maintenance Dengan Random Search Dan Multiclass One-vs-Rest. Undergraduate thesis, UPN Veteran Jawa Timur.

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Abstract

This study aims to develop an optimized Random Forest model for predictive maintenance by integrating Random Search for hyperparameter tuning and a multiclass One-vs-Rest (OvR) classification approach. The research focuses on predicting six types of machine failures (Tool Wear Failure, Heat Dissipation Failure, Power Failure, Overstrain Failure, Random Failure, and No Failure) using synthetic vehicle sensor data from the Predictive Maintenance Dataset (AI4I 2020). The methodology includes data preprocessing (normalization, feature engineering), Random Search for optimizing hyperparameters (e.g., n_estimators, max_depth), and OvR to handle class imbalance. Evaluation metrics such as accuracy, precision, recall, F1-score, ROC-AUC, and Matthews Correlation Coefficient (MCC) were used. Results show that the optimized model achieved 99.1% accuracy with MCC 0.86, outperforming the baseline. However, challenges remain in detecting minority classes (e.g., Random Failure). This research contributes to industrial applications by enhancing maintenance efficiency through data-driven failure prediction.

Item Type: Thesis (Undergraduate)
Contributors:
ContributionContributorsNIDN/NIDKEmail
Thesis advisorPuspaningrum, Eva YuliaNIDN0005078908evapuspaningrum.if@upnjatim.ac.id
Thesis advisorPutra, Chrystia AjiNIDN0008108605ajiputra@upnjatim.ac.id
Subjects: T Technology > T Technology (General)
T Technology > T Technology (General) > T385 Computer Graphics
T Technology > T Technology (General) > T55.4-60.8 Industrial engineering. Management engineering
T Technology > TE Highway engineering. Roads and pavements
T Technology > TF Railroad engineering and operation
Divisions: Faculty of Computer Science > Departemen of Informatics
Depositing User: Daniel Manalu
Date Deposited: 19 Jun 2025 02:13
Last Modified: 19 Jun 2025 02:13
URI: https://repository.upnjatim.ac.id/id/eprint/38532

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