Implementation Of The Internet of Things for X̅ and R Control Chart in Quality Control

Authors

  • Aldi N. Firdaus Departement of Industrial Engineering, Institut Teknologi Nasional (Itenas), Bandung – INDONESIA
  • Cahyadi Nugraha Departement of Industrial Engineering, Institut Teknologi Nasional (Itenas), Bandung – INDONESIA
  • Fadillah Ramadhan Departement of Industrial Engineering, Institut Teknologi Nasional (Itenas), Bandung – INDONESIA

Keywords:

Internet of Things (IoT), Statistical Process Control, Digital Caliper, X̅ and R Control Chart, Web Based System

Abstract

Quality control is one of the important things in an industrial enterprise, but in carrying out the process the enterprise is constrained by the speed, and accuracy produced by the quality control process. A set of basic quality control tools are X̅ and R control charts. These basic charting is sometimes face speed and accuracy problem due to the required measurement, data recording, and calculation processes. Considering these problems, an appropriate, fast and accurate quality control system is proposed and prototyped for computing the quality control process with the assistance of the Internet of Things. This system’s prototype uses digital calliper, microcontroller-based wireless data recorder, database, and web-based application environment. System test is comprised of accuracy verification, speed comparison for quality control process, and process integration evaluation. System test has shown that this quality control system has the accuracy and speed in calculating the quality control process with an accuracy rate of 100% and a calculation speed of 4.731 seconds, significantly compared to manual system, so that it can overcome existing quality control problems.

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Published

2021-04-22

Issue

Section

FoITIC 2020