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Journal : International Journal of Science, Engineering and Information Technology

Implementation of a Web-Based Decision Support System Using Simple Additive Weighting (SAW) For Assessment Of “Siswa Berprestasi” In Sumenep High Schools Najib, Muhammad
International Journal of Science, Engineering, and Information Technology Vol 8, No 2 (2024): IJSEIT Volume 08 Issue 02 31 July 2024
Publisher : Universitas Trunojoyo Madura

Show Abstract | Download Original | Original Source | Check in Google Scholar | DOI: 10.21107/ijseit.v8i2.27184

Abstract

The assessment of student achievement in schools is a crucial aspect of determining educational success. This research developed a web-based Decision Support System (DSS) utilizing the Simple Additive Weighting (SAW) method to evaluate outstanding students, known as “Siswa Berprestasi,” in several high schools in the Sumenep region. Data were collected from 30 respondents via online questionnaires. The validity and reliability of the data collection instruments were tested using construct validity and Cronbach’s Alpha reliability tests. The results indicate that the SAW method effectively assesses student performance by considering academic, non-academic, and extracurricular criteria. The DSS implemented in case studies across five high schools in Sumenep showed significant improvements in assessment transparency and accuracy. The findings suggest the SAW-based DSS enhances the quality of student evaluations and is recommended for broader adoption in schools across the region.
Improving Root Cause Analysis of Production Defect Using AI: A Case Study in an Automotive Manufacturing Plant Najib, Muhammad; Rifa'i, Emon
International Journal of Science, Engineering, and Information Technology Vol 9, No 2 (2025): IJSEIT Volume 09 Issue 02 July 2025
Publisher : Universitas Trunojoyo Madura

Show Abstract | Download Original | Original Source | Check in Google Scholar | DOI: 10.21107/ijseit.v9i2.31226

Abstract

In automotive manufacturing, repetitive defects often occur across different time periods, creating a valuable historical dataset containing defect names and their corresponding root causes. Traditionally, identifying the root cause of a production defect relied heavily on human analysis, requiring significant time and on-site inspection. This often led to delayed countermeasures, increased production downtime, and additional issues such as line stops. This study presents an AI-based approach to assist root cause analysis using historical defect data, aiming to reduce the analysis time and improve feedback accuracy. The implementation focused on enabling faster and more accurate identification of root causes by integrating a machine learning model into the factory’s defect recording system (ATPPM, Analisa Tindakan Penanggulangan dan Pencegahan Masalah). The development process involved data preprocessing, model training, and API deployment. The original dataset consisted of 3,128 records, which were cleaned and reduced to 1,449 labeled entries, each annotated with one of 161 unique root cause labels. Eleven machine learning models were evaluated, including Logistic Regression, Random Forest, SVM, and RNN. Initial evaluation using F1-score, precision, and recall showed Logistic Regression achieving the best F1-score of 0.83. Further validation using 5-Fold Cross Validation identified the Support Vector Machine (SVM) as the best-performing model, with an average accuracy of 89.1%. This model was deployed via a Python Flask API and integrated into the existing ATPPM system. The AI-powered system significantly accelerated the root cause analysis process, reducing the average analysis time by 228 minutes. Potential future enhancements involve automating the model’s training process on a regular schedule (weekly or daily), integrating additional data sources including big data and quality management systems, and scaling the current API implementation to multiple production lines for wider impact.
Co-Authors A.M. Yamin Astha Agung Pratama Ahda Mulyati Ahmad, Nur Fatih Ali, Indra Mu'thi Andi Prastowo Andini, Tania Nur Andleeb, Naima Andri Eko Putra, Andri Eko Anis Mahmudah, Anis Arif Prasetyo, Arif Awalia, Rezki Aziz Budianta Badi'ah, Atik Bobyanti, Feny Bondan Palestin, Bondan Bunyamin Maftuh Chairy, Ach Claudiana, Nur Shelly Ester Colin, Michelle Natasha De Chaniago, Fathimathuz Zachra Destriana, Ayu Gita Elly Malihah Emilda, Emilda Fahlevi, Zakia Aurora Fahritsani, Husni Fajriati, Nita Gasong, Ristasya Wini Hamidiyah, Emmy Heryati Heryati Ismail Thoib Jamil Suprihatiningrum Janah, Futihatul Karlena, Neni Lestari, Hikmah Lestari, Nafa Indah Budi Lita, Sari Mafra, Nisa’ Ulul Mahfudloh, Ririn Inayatul Majduddin, Mohammad Margaret, Adeline Mohammad Makinuddin Muhammad Munir Muzaini, M. Choirul Nabila, Dwi Ayu Nahdiyah, Atika Cahya Fajriyati Ninin Non Ayu Salmah, Ninin Non Ayu Nisa, Ani Khoirotun Nisa’ Ulul Mafra Nisa’, Hamidah Salwa Khoirun Nurul Humaidah Nurul Lailatul Khusniyah Oktariansyah Oktariansyah, Oktariansyah Putro, Khamim Zarkasih Qoaruddin Qomaruddin Rachmat Mudiyono, Rachmat Rahayu, Mutiara Putri Rahmanita, B. Nuraulia Rahmi, Tata Aisyah Rifa'i, Emon Rina Fajri Nuwarda, Rina Fajri Rizkhi, R Rosidah, Ilmiyatur Roza, Faisal Santi Puspita Saprudin Saprudin, Saprudin Sarifuddin Sarita, Maya Rahma Setyadi, Ahmad Sholikah, Nisa’us Sugianti, Sugianti Sulistyo, Juny Andri Suprapto Suprapto Supriadi Takwim Syani Amrulloh, Friendis Syarifuddin Syarifuddin TRI PRABOWO Wujarso, Riyanto Yuni Kartika, Yuni Yuni, Yuni Asparani