MATEC Web of Conferences (Jan 2021)

Prediction of defects using machine learning techniques in order to improve quality management system – A case study

  • Sârb Adina,
  • Burja Udrea Cristina,
  • Nagy–Oniţa Daniela,
  • Itul Liliana,
  • Popa Maria

DOI
https://doi.org/10.1051/matecconf/202134305010
Journal volume & issue
Vol. 343
p. 05010

Abstract

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According to ISO 9000, a quality management system is part of a set of related or interacting elements of an organization that sets policies and objectives, as well as the processes necessary to achieve the quality objectives. Quality is the extent to which a set of intrinsic characteristics of an object meets the requirements. Based on these definitions, the factory, considered in this paper, S.C. APULUM S.A.,decided to implement a quality management system since 1998. Subsequently, the organization’s attention is focus on the continuous improvement of the implemented quality management system. The purpose of this paper is to study the percent of specified defects specific to ceramic products in the future to improve the quality management system. In this regard, machine learning techniques were applied for defects forecasting for different types of products: mugs, pressed plates and jiggered plates. The experimental evaluation was performed on real data sets that contain percentages about different types of defects collected in 2018-2019. The experimental results show that for each type of product exists an algorithm that forecasts the future defects.