Design and Construction of an Automatic Body Weighing Scale for Classification of Pencak Silat Athlete Classes Using the Decision Tree Method

Authors

  • adi Saputro trunojoyo madura
  • monika faswiaf
  • romanjavaters
  • diana rahmawati
  • fiqhi ibadillah
  • muttaqin hardiwansyah

DOI:

https://doi.org/10.21070/jeeeu.v10i1.1707

Keywords:

Decision tree, automatic weighing system, pencak silat athletes, Body Mass Index, ESP32

Abstract

General Background: Automated athlete measurement systems are increasingly required in combat sports to support accurate classification, efficient data management, and competition validation processes. Specific Background: Conventional weighing procedures in pencak silat competitions still rely on manual measurements and independent weighing devices without integrated classification or web-based recording systems, creating risks of athlete misclassification and administrative difficulties. Knowledge Gap: Previous studies primarily focused on nutritional assessment systems using rule-based or z-score methods, while limited research has integrated automatic athlete classification, Body Mass Index (BMI) analysis, website integration, and decision tree algorithms in pencak silat competitions. Aims: This study aims to design and develop an automatic body weighing system for pencak silat athlete class classification using the decision tree method and integrated website monitoring. Results: The system utilized load cell sensors for body weight measurement and Time of Flight (ToF) sensors for height detection, while the ESP32 microcontroller processed classification and BMI calculations. Experimental results demonstrated an average error rate of 0.81% and success rate of 99.19% for body weight measurements, while height measurements achieved an average error rate of 1.52% and success rate of 98.48%. The decision tree classification results were consistent with manual calculations across athlete categories from pre-teen to adult levels. Novelty: The study integrates automatic athlete classification, BMI evaluation, sensor-based measurements, and website-based monitoring within a single decision tree framework. Implications: The proposed system supports accurate athlete verification, digital sports data management, and automated classification processes for pencak silat competitions.

References

[1] PB IPSI, “Peraturan Pertandingan Pra Usia Dini, Pra Remaja & Remaja 2023,” Jakarta, 2023.
[2] F. Syamsudin et al., “Optimalisasi Peran Pelatih dan Orangtua dalam Periode Peak Height Velocity dan Perkembangan Fisiologis Atlet,” BERNAS J. Pengabdi. Kpd. Masy., vol. 5, no. 4, pp. 2566–2572, Oct. 2024, doi: 10.31949/jb.v5i4.10489.
[3] PB IPSI, “Materi Penataran Upgrading Wasit-Juri Nasional Peraturan Pertandingan Silat IPSI 2022,” Jakarta, 2022.
[4] M. Ulum and H. Sukri, “Rancang Bangun Sensor Deteksi Gizi Berdasarkan Standar Atropometri Anak,” Rekayasa, vol. 16, no. 3, pp. 265–271, 2023.
[5] D. Rahmawati, H. Sukri, A. Fiqhi Ibadillah, A. Dian Lestari, T. Elektro, and U. Trunojoyo Madura, “Rancang Bangun Bmi (Body Mass Index) Scale Dengan Metode Rule Based System,” Med. Tek. J. Tek. Elektromedik Indones., vol. 1, no. 2, pp. 44–51, 2020.
[6] Novianto Muhammad Ilham, “Implementation of Digital Weight and Height Measurers for Babies Integrated mPosyandu Application,” vol. 9, no. 1, pp. 79–87, 2023.
[7] Permenkes RI No 2, “KEMENKES. Antropometri Anak. Standar,” no. 7, p. 16, 2020.
[8] G. N. Panggraita et al., “Penyuluhan Kesehatan Olahraga Dan Pengukuran Antropometri Bagi Siswa Sekolah Dasar,” vol. 6, no. 2, pp. 486–493, 2023.
[9] E. P. Prawirohartono, Stunting : dari teori dan bukti ke implementasi di lapangan. D.I. Yogyakarta: Gadjah Mada University Press, 2021.
[10] M. Shokhibul, I. Gian, M. Imam, K. Rifky, M. Z. Abdullah, and L. Hakim, “Pendataan dan Penganalisaan Berat Badan Secara Otomatis Menggunakan Load Cell,” vol. 5, no. 4, 2023.
[11] N. Nasution, M. N. Widyawati, D. Ramlan, and P. P. R. C1nta, Pemanfaatan Sensor Load Cell Dalam Menentukan Berat Badan Baduta. Penerbit Pustaka Rumah Cinta, 2023.
[12] “3 Buku TEKNOLOGI INTERNET OF THINGS (IoT) DAN HIDROPONIK (2).pdf.crdownload.”
[13] F. Piron, D. Morrison, M. R. Yuce, and J.-M. Redouté, “A Review of Single-Photon Avalanche Diode Time-of-Flight Imaging Sensor Arrays,” IEEE Sens. J., vol. 21, no. 11, pp. 12654–12666, 2021, doi: 10.1109/JSEN.2020.3039362.
[14] A. K. Saputro, K. A. Wibisono, R. Alfita, R. V. Nahari, A. F. Ibadillah, and M. N. Anwar, Pemrograman Dasar Web Dengan HTML, 1st ed. Jogjakarta: PENERBIT KBM INDONESIA, 2024.
[15] R. Syamwil and D. Febiharsa, Sistem Informasi Lembaga Sertifikasi Profesi (SILSP). Cerdas Ulet Kreatif Publisher, 2018.
[16] M. P. Dr. Rabwan Satriawan, Tes Dan Pengukuran Olahraga. 2023.
[17] N.- Tarigan, R. R. Simanjuntak, and O. Nainggolan, “Maternal Age At Birth and Low Birth Weight (Lbw) in Indonesia (Analysis of Riskesdas 2018),” Gizi Indones., vol. 46, no. 1, pp. 1–10, 2023, doi: 10.36457/gizindo.v46i1.694.

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Published

2026-04-30

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Section

Electrical Engineering

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