Andra Erlangga
Program Studi Teknik Elektro, Universitas Muhammadiyah Sidoarjo

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Silicone Turbidity Monitoring System Using IoT for Extruder Machine: Sistem Pemantauan Kekeruhan Berbasis Silikon yang Menggunakan IoT untuk Mesin Ekstruder Andra Erlangga; Arief Wicaksono
Indonesian Journal of Innovation Studies Vol. 27 No. 1 (2026): January
Publisher : Universitas Muhammadiyah Sidoarjo

Show Abstract | Download Original | Original Source | Check in Google Scholar | DOI: 10.21070/ijins.v27i1.2077

Abstract

This study presents a real-time monitoring system for silicone turbidity in an industrial extruder process. General Background: Quality control in manufacturing processes requires accurate monitoring systems to prevent product defects caused by inconsistent material composition. Specific Background: In silicone coating processes, improper silicone-to-water ratios can result in sticky or overly slippery film surfaces. Knowledge Gap: Conventional monitoring methods rely on manual observation, which is inefficient and prone to human error. Aims: This research aims to design and implement an IoT-based turbidity monitoring system to ensure optimal silicone mixture conditions. Results: The system utilizes a turbidity sensor SEN0189 integrated with NodeMCU ESP8266, displaying data via LCD and ThingSpeak platform, successfully identifying optimal ratios between 1:20 and 1:25 and triggering alarms for abnormal conditions. Novelty: The integration of real-time turbidity sensing with IoT-based remote monitoring and automated alert system provides a digital solution for industrial quality control. Implications: This system supports efficient monitoring, reduces manual inspection, and contributes to digital transformation in manufacturing aligned with Industry 4.0 principles. Keywords: Silicone Turbidity, IoT Monitoring, NodeMCU ESP8266, Industrial Quality Control, Turbidity Sensor Key Findings Highlights Real-time detection distinguishes optimal and defective mixture conditions Remote visualization enables continuous supervision without physical presence Automated alert system signals deviations from predefined standards