Klasterisasi Kerusakan Bearing Motor Induksi 3 Fasa Menggunakan Metode Transformasi Wavelet Diskrit dan K-Medoids

Authors

  • Eska Rizqi Naufal Universitas Widyagama Malang
  • Gigih Priyandoko Universitas Widyagama Malang
  • Fachrudin Hunaini Universitas Widyagama Malang

DOI:

https://doi.org/10.26418/elkha.v12i2.41511

Keywords:

Induction Motor, Bearing Fault, Discrete Wavelet Transformation, K-Medoids

Abstract

The 3 phase induction motor is a reliable and strong motor also has cheap price. However induction motor are also vulnerable, from the result of survey conducted by Electric Power Research Institute (EPRI), there are 41% cases of damage occur in the bearing caused by working environment condition, bearing age, and several other factors. Bearing fault is not easily to identified, with applying the data extraction method using the Discrete Wavelet Transform (DWT) and the K-Medoids clustering method will facilitate the identification process. The extraction method will pass the data in the form of current signals into the digital filter (Low Pass Filter and High Pass Filter) to be mapped into the region of frequency and time simultaneously, and clustering method will group data based on certain characteristics. Based on the clustering tests that have been done on the 3 phase induction motor current signal data with 3 bearing conditions, the Discrete Wavelet Transformation with mother wavelet bior1.1 decomposition level 2 and K-Medoids produce an accuracy rate of 86.8%.

Author Biographies

Eska Rizqi Naufal, Universitas Widyagama Malang

Jurusan Teknik Elektro

Gigih Priyandoko, Universitas Widyagama Malang

Department of Electrical Engineering, Faculty of Engineering, Widyagama University, Indonesia

Fachrudin Hunaini, Universitas Widyagama Malang

Lecturer, Researcher, Teknik ELektro, Universitas Widyagama Malang

References

J. S. Sufrianti and A. H. Hamzah, “Simulasi Dan Deteksi Gangguan Belitan Stator Motor Induksi Tiga Fasa Menggunakan Arus Starting Dengan Matlab/Simulink,†Jom FTEKNIK, vol. 4, pp. 1–11, 2017.

D. Meidiasha, M. Rif, and M. Subekti, “Alat Pengukur Getaran, Suara Dan Suhu Motor Induksi Tiga Fasa Sebagai Indikasi Kerusakan Motor Induksi Berbasis Arduino,†J. Electr. Vocat. Educ. Technol., vol. 5, no. 1, pp. 366–370, 2020.

M. Abduh, I. D.P.K, and B. Y. Dewantara, “Deteksi Kerusakan Outer Race Bearing pada Motor Induksi Menggunakan Analisis Arus Stator,†Semin. Nas. Inov. dan Apl. Teknol. di Ind., vol. 1, no. 2, pp. 1–6, 2019.

A. Radiansyah and A. Gifson, “Inspeksi Overhaul Motor Induksi 3 Fasa 1000 KW di PT. Mesindo Tekninesia,†TESLA J. Tek. Elektro, vol. 21, no. 2, pp. 14–26, 2019.

E. R. Purnamasari, I. Diah, and B. Y. Dewantara, “Monitoring Kondisi Ball Bearing Pada Motor Induksi Melalui Analisa Arus Stator Berbasis Wavelet Transform,†Pros. SNST ke-10 Tahun 2019 Fak. Tek. Univ. Wahid Hasyim 49, pp. 48–53, 2019.

B. P. W. Rianto, E. S. Ningrum, Z. Darojah, and H. Hermawan, “Artificial Neural Network Through Energy Value of Empirical Mode Decomposition Feature Extraction based: Application on Bearing Fault Diagnosis,†IES 2019 - Int. Electron. Symp. Role Techno-Intelligence Creat. an Open Energy Syst. Towar. Energy Democr. Proc., pp. 387–393, 2019.

Iradiratu, “Deteksi Kerusakan Inner Race Bearing Menggunakan Motor Current Signature Analysis Berbasis Fast Fourier Transform,†J. Tek. Elektro Dan Komput. Triac, vol. 6, no. 1, pp. 6–9, 2019.

V. Asanza, E. Pelaez, and F. Loayza, “EEG signal clustering for motor and imaginary motor tasks on hands and feet,†2017 IEEE 2nd Ecuador Tech. Chapters Meet., vol. 2017-Jan, pp. 1–5, 2018.

F. Ilman Huda, I. D.P.K, and B. Yan Dewantara, “Identifikasi Gangguan Belitan Stator Motor Induksi Metode Wavelet,†Pros. SNST ke-10 Tahun 2019, pp. 42–47, 2017.

N. Hasanah, A. B. Muljono, and I. M. B. Suksmadana, “Penentuan Lokasi Gangguan Hubung Singkat Pada Saluran Transmisi 150 Kv Berbasis Transformasi Wavelet,†Dielektrika, vol. 5, no. 1, pp. 42–47, 2018.

V. Apryaleva, B. Hidayat, and S. Aulia, “Simulasi Dan Analisis Sistem Klasifikasi Batubara Menggunakan Discrete Wavelet Transform (Dwt), Fuzzy Color Histogram (Fch) Dan K-Nearest Neighbor (K-Nn) Pada Citra Digital,†e-Proceeding Eng., vol. 3, no. 2, pp. 1911–1918, 2016.

T. I. Saputra, F. Fauziah, and N. Hayati, “Implementasi Discrete Wavelet Transform Pada Aplikasi Kompresi Citra Medis,†J. InfomediaTeknik Inform. Multimed. Jar., vol. 4, no. 2, pp. 101–107, 2020.

I. Kamila, U. Khairunnisa, and Mustakim, “Perbandingan Algoritma K-Means dan K-Medoids untuk Pengelompokan Data Transaksi Bongkar Muat di Provinsi Riau,†J. Ilm. Rekayasa dan Manaj. Sist. Inf., vol. 5, no. 1, pp. 119–125, 2019.

Z. Mustofa and I. S. Suasana, “Algoritma Clustering K-Medoids pada E-Goverment Bidang Information and Communication,†J. Teknol. Inf. dan Komun., vol. 9, no. 1, pp. 1–10, 2018.

A. Amalia, D. R., Narasatu, R., Faqih, “Perbandingan Hasil Klasifikasi Rasa Minuman Thai Tea yang Paling Digemari Menggunakan K-means dan K-medoids,†Pros. Semin. Nas. Unimus, vol. 2, pp. 401–407, 2019.

D. F. Pramesti, Lahan, M. Tanzil Furqon, and C. Dewi, “Implementasi Metode K-Medoids Clustering Untuk Pengelompokan Data,†J. Pengemb. Teknol. Inf. dan Ilmu Komput., vol. 1, no. 9, pp. 723–732, 2017.

M. I. Ghozali, R. Z. Ehwan, and W. H. Sugiharto, “Analisa Pola Belanja Menggunakan Algoritma Fp Growth, Self Organizing Map (Som) Dan K Medoids,†Simetris J. Tek. Mesin, Elektro dan Ilmu Komput., vol. 8, no. 1, pp. 317–326, 2017.

M. Basis, O. Equipment, and E. Oee, “Penentuan Fungsi Basis Wavelet Terbaik Untuk Sinyal Suara,†Simp. Nas. Teknol. Terap. 5, vol. 3, no. 1988, pp. 172–178, 2017.

B. Robi’in, “Analisis Dekomposisi Wavelet Pada Pengenalan Pola Lurik Dengan Metode Learning Vector Quantization,†Ilk. J. Ilm., vol. 9, pp. 153–160, 2017.

W. S. Manjoro, M. Dhakar, and B. K. Chaurasia, “Operational analysis of k-medoids and k-means algorithms on noisy data,†Int. Conf. Commun. Signal Process. ICCSP 2016, pp. 1500–1505, 2016.

Downloads

Published

2020-10-11

Issue

Section

Vol.12 No. 2 October 2020