Identifikasi Pola Pengerjaan Alat Berat Menggunakan Algoritma K-Prototype Clustering
DOI:
https://doi.org/10.58776/jriti.v2i2.154Kata Kunci:
k-prototype clustering, working patterns, heavy equipment, dozer, operational optimizationAbstrak
This research aims to identify work patterns for heavy equipment, namely dozers, dump trucks and excavators, using the K-Prototype Clustering algorithm. This algorithm was chosen because of its ability to handle data that has a combination of numeric and categorical attributes, which are often found in heavy equipment operational data. By applying K-Prototype Clustering, we can group heavy equipment usage data into several representative clusters. The results show that heavy equipment usage patterns can be grouped effectively, allowing the identification of clusters with similar operational characteristics. This cluster helps in optimizing heavy equipment allocation, planning preventive maintenance, and improving overall operational efficiency. Implementation of clustering results in operational practice shows the potential for reducing idle time and increasing machine productivity. This research concludes that the use of the K-Prototype Clustering algorithm is an effective method for identifying heavy equipment work patterns. Strategic recommendations resulting from clustering can be applied to improve operational efficiency and effectiveness in the construction and mining industries.Referensi
. Safira, R. Salkiawati, and W. Priatna, “Penerapan Algoritma K-Means untuk Mengetahui Pola Persediaan Barang pada Toko Raja Bekasi,” J. Inform. Inf. Secur., vol. 3, no. 1, pp. 99–110, 2022, doi: 10.31599/jiforty.v3i1.1253.”
. Y. E. P. Sinaga, G. Ginting, and M. Panjaitan, “Penerapan Data Mining Dalam Meningkatkan Mutu Perawatan dan Perbaikan Perlengkapan Alat-Alat Kapal Laut Menerapkan Metode K-Means Clustering,” J. Sist. Komput. dan Inform., vol. 2, no. 3, p. 232, 2021, doi: 10.30865/json.v2i3.2626.
. P. Pada and S. M. K. Tamansiswa, “Penerapan Metode Klasterisasi K-Means Untuk Strategi Promosi Pada SMK Taman Siswa Sukadamai,” vol. 1, no. 2, pp. 141–146, 2021.
. H. Annur, “Strategi Penjualan Variasi Mobil Menggunakan Metode KMeans Cluster ing,” CosPhi, vol. 2, no. 2, pp. 43–46, 2018.
. F. Nurdiyansyah and I. Akbar, “Implementasi Algoritma K-Means untuk Menentukan Persediaan Barang pada Poultry Shop,” J. Teknol. dan Manaj. Inform., vol. 7, no. 2, pp. 86–94, 2021, doi: 10.26905/jtmi.v7i2.6377.
. Subhan, A., Faqih, A. & Irawan , B., 2022. Clustering Item Fast Moving dan Slow Moving pada Produk Unilever Menggunakan Algoritma K-Prototype. JATI (Jurnal Mahasiswa Teknik Informatika), pp. 629-634.
. E. S. J. Deny, S. Muhammad, M. Herman, Teknik Evaluasi Cluster: Solusi Menggunakan Python Dan Rapidminer. CV Budi Utama, 2021.
. R. Ishak and A. Bengnga, “Clustering Tingkat Pemahaman Mahasiswa Pada Perkuliahan Probabilitas Statistika Dengan Metode K-Means,” Jambura J. Electr. Electron. Eng., vol. 4, no. 1, pp. 65–69, 2022, doi: 10.37905/jjeee.v4i1.11997.
. F. Muhammad setiawan, “Metode K-Means Untuk Sistem Informasi Pengelompokan Mahasiswa Baru Pada Perguruan Tinggi,” J. Inform., pp. 130–145, 2019.
. N. Manullang, R. W. Sembiring, I. Gunawan, I. Parlina, and I. Irawan, “Implementasi Teknik Data Mining untuk Prediksi Peminatan Jurusan Siswa Menggunakan Algoritma C4.5,” J. Ilmu Komput. dan Teknol., vol. 2, no. 2, pp. 1–5, 2021, doi: 10.35960/ikomti.v2i2.700.
. Nurrahmah et al., “Pengantar Statistika 1,” Tangerang Media Sains Indones., 2021.
. S. Ramadhani, D. Azzahra, and T. Z, “Comparison of K-Means and K-Medoids Algorithms in Text Mining based on Davies Bouldin Index Testing for Classification of Student’s Thesis,”2020.
Unduhan
Diterbitkan
Cara Mengutip
Terbitan
Bagian
Lisensi
Hak Cipta (c) 2025 Ahmad Muslih

Artikel ini berlisensiCreative Commons Attribution-NonCommercial-ShareAlike 4.0 International License.






