IMPLEMENTASI ALGORITMA MACHINE LEARNING UNTUK KLASIFIKASI KONDISI MESIN MOBIL BERBASIS AUTOMOTIVE VEHICLES ENGINE HEALTH DATASET

Authors

DOI:

https://doi.org/10.37638/gatotkaca.v5i1.1134

Keywords:

machine learning, classification, engine health, predictive maintenance, automotive industry

Abstract

The rapid advancements in machine learning techniques have significantly impacted various industries, including the automotive sector. This study explores the implementation of machine learning algorithms to classify the condition of car engines based on an automotive vehicle engine health dataset. The primary objective of this research is to develop a reliable predictive model to facilitate proactive maintenance and reduce unexpected failures. Several algorithms, including Support Vector Machine (SVM), Naive Bayes, and K-Nearest Neighbor (KNN), were evaluated. The dataset was preprocessed and split into 80% training data and 20% test data. Model performance was assessed using metrics such as accuracy, precision, recall, and F1-score. The results indicate that Naive Bayes outperformed the other models, achieving an accuracy of 66% and a precision of 82%. This study demonstrates the potential of machine learning in predictive maintenance applications and highlights the importance of selecting appropriate algorithms and preprocessing techniques. Future work will focus on expanding the dataset and exploring ensemble methods to further enhance model accuracy and reliability.

Author Biography

sunardi sunardi, Study Program of Mechanical Engineering, Faculty of Engineering, Universitas Muhammadiyah Yogyakarta

Lecturer

References

Ahmed, R., El Sayed, M., Gadsden, S. A., Tjong, J., & Habibi, S. (2014). Automotive internal-combustion-engine fault detection and classification using artificial neural network techniques. IEEE Transactions on vehicular technology, 64(1), 21-33.

Aydin, O., & Guldamlasioglu, S. (2017). Using LSTM networks to predict engine condition on large scale data processing framework. 2017 4th International Conference on Electrical and Electronic Engineering (ICEEE),

Damayunita, A., Fuadi, R. S., & Juliane, C. (2022). Comparative Analysis of Naive Bayes, K-Nearest Neighbors (KNN), and Support Vector Machine (SVM) Algorithms for Classification of Heart Disease Patients. Jurnal Online Informatika, 7(2), 219-225.

Fanny, F., Muliono, Y., & Tanzil, F. (2018). A comparison of text classification methods k-NN, Naïve Bayes, and support vector machine for news classification. Jurnal Informatika: Jurnal Pengembangan IT, 3(2), 157-160.

Feng, W., Sun, J., Zhang, L., Cao, C., & Yang, Q. (2016). A support vector machine based naive Bayes algorithm for spam filtering. 2016 IEEE 35th International Performance Computing and Communications Conference (IPCCC),

Fonna, N. (2019). Pengembangan revolusi industri 4.0 dalam berbagai bidang. Guepedia.

Iliyas Ahmad, M., Yusof, Y., Daud, M. E., Latiff, K., Abdul Kadir, A. Z., & Saif, Y. (2020). Machine monitoring system: a decade in review. The International Journal of Advanced Manufacturing Technology, 108(11), 3645-3659.

Lei, Y., Yang, B., Jiang, X., Jia, F., Li, N., & Nandi, A. K. (2020). Applications of machine learning to machine fault diagnosis: A review and roadmap. Mechanical Systems and Signal Processing, 138, 106587.

Patel, A. K., Chatterjee, S., & Gorai, A. K. (2017). Development of machine vision-based ore classification model using support vector machine (SVM) algorithm. Arabian Journal of Geosciences, 10, 1-16.

Putra, R. F., Zebua, R. S. Y., Budiman, B., Rahayu, P. W., Bangsa, M. T. A., Zulfadhilah, M., Choirina, P., Wahyudi, F., & Andiyan, A. (2023). Data Mining: Algoritma dan Penerapannya. PT. Sonpedia Publishing Indonesia.

Shahid, S. M., Ko, S., & Kwon, S. (2019). Real-time classification of diesel marine engine loads using machine learning. Sensors, 19(14), 3172.

Sheth, V., Tripathi, U., & Sharma, A. (2022). A comparative analysis of machine learning algorithms for classification purpose. Procedia Computer Science, 215, 422-431.

Sinaga, L. M., & Suwilo, S. (2020). Analysis of classification and Naïve Bayes algorithm k-nearest neighbor in data mining. IOP Conference Series: Materials Science and Engineering,

Vergara, M., Ramos, L., Rivera-Campoverde, N. D., & Rivas-Echeverría, F. (2023). EngineFaultDB: A Novel Dataset for Automotive Engine Fault Classification and Baseline Results. IEEE Access, 11, 126155-126171.

Vitola, J., Pozo, F., Tibaduiza, D. A., & Anaya, M. (2017). A sensor data fusion system based on k-nearest neighbor pattern classification for structural health monitoring applications. Sensors, 17(2), 417.

Xu, Z., & Saleh, J. H. (2021). Machine learning for reliability engineering and safety applications: Review of current status and future opportunities. Reliability Engineering & System Safety, 211, 107530.

Yacouby, R., & Axman, D. (2020). Probabilistic extension of precision, recall, and f1 score for more thorough evaluation of classification models. Proceedings of the first workshop on evaluation and comparison of NLP systems,

Zhao, R., Yan, R., Chen, Z., Mao, K., Wang, P., & Gao, R. X. (2019). Deep learning and its applications to machine health monitoring. Mechanical Systems and Signal Processing, 115, 213-237.

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Published

2024-06-30

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Articles