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Journal : Journal of Computer Networks, Architecture and High Performance Computing

Analysis of Predicting the Number of Rejected Chips Using Random Forest at PT. Wahyu Kartumasindo Internasional Supriyadi, Agus; Sunge, Aswan Supriyadi; Tedi, Nanang
Journal of Computer Networks, Architecture and High Performance Computing Vol. 7 No. 4 (2025): Articles Research October 2025
Publisher : Information Technology and Science (ITScience)

Show Abstract | Download Original | Original Source | Check in Google Scholar | DOI: 10.47709/cnahpc.v7i4.7028

Abstract

Manufacturing industries face significant challenges in maintaining consistent product quality, particularly in minimizing reject rates across production machines, as high reject levels not only increase operational costs but also reduce overall efficiency and competitiveness. This study aims to develop a predictive approach using the Random Forest algorithm to forecast monthly chip rejects across different production machines, with historical reject data consisting of 1,820 records from June 2023 to September 2024 analyzed based on four primary reject categories and five production machines (DCL1, DCL2, CMI200, CMI200+, and YMJ400). The Random Forest model was applied to classify and predict reject patterns, and its performance was evaluated based on prediction accuracy and error rates, showing that the algorithm is effective in predicting reject counts with an absolute error of 0.640 ± 0.183, especially for lower reject values under 300, although accuracy decreases when handling higher reject levels above 500. Machine-level analysis further reveals that DCL1 and DCL2 consistently contribute the highest reject counts with high variability, while CMI200 and CMI200+ demonstrate stable performance with most rejects below 300, and YMJ400 generally records lower rejects but occasionally exhibits spikes, suggesting inconsistent performance. In conclusion, the Random Forest model provides a reliable predictive framework for monitoring reject trends, identifying DCL1 and DCL2 as priority targets for improvement, and supporting proactive maintenance strategies to enhance overall production quality.
Co-Authors Abdul Muis Abdullah , Humaira DJ Abrianto, Heri Achmad Basuki Adam, Samsudin Hi. Aditya, Sri Praba Agung Budi Muljono Agus Setiya Budi, Agus Setiya Aisyah, Nur Siti Amir, Rini Arfandi Arfandi, Arfandi Arifatunurrillah, Aldilla Aswan Supriyadi Sunge Bagus Adi Pamungkas Cirella, Giuseppe T Corrina, Fatti Dian Indiyati Edy Purnomo Edy Purwanto Eka Darmana, Eka Eka Wahjuningsih Eriyanto, Eriyanto Guznan, Mahendra Harjian, Muhammad Rivaldi Haslindar, Yoga Sabraina Hermanto Hermanto Herucahyo, Dwi Putra Hi Mumamad, Hujaefa Hidayanti, Fitria Hidayati, Titiek Rohanah Irmadiani, Nadia Jatnika, Ika Juwita, Melda R Kardiatun, Tutur Khotibul Umam Kusno Adi Sambowo La Ode Baytul Abidin Listyorini, Listyorini Mahmud, Toni Anwar Marliana, Intan Maharani Dian Marwanto, Ary Masbudi, Masbudi Masbudi, Masbudi Mirati, R. Elly muchtar, ali masjono Muhammad Muttaqin Muhammad Nashirudin, Muhammad Muhammad Ramli Muttaqien, Adi Yusuf Nafi, Muna Khoirun Nidya Dudija Nugraha, Lanjar Aji Nurnawati Hindra Hastuti Octaviyanto, Fauzi Ardi Parijo . Pradika, Jaka Prasetyo, Faishal Shiddiq Rachman, Nissa Zahra Ramadhani, Muhammad Fauzan Ramadhani, Muhammad Fauzan Repi, Viktor Vekky Ronald Rizki, Annisa Safitri, Susi Salamet, R. Apit Rahmat Samsudin, Mohamad Aso Sekar Arum, Sekar Senot Sangadji, Senot Sholeha, Maratus Sholeha, Mar’atus Sihabuddin, Sihabuddin Stefanus Adi Kristiawan Sumbayak, Klaudia Anggita Supardi Supardi Syaeful Karim, Syaeful Tedi, Nanang Vidyasari, Rahmanita Wang, Tao Widiyowati, Estu Wulan Sari, Fitria Yanuardi Yanuardi Zainal Abidin Zainuddin .