TY - JOUR N2 - This paper proposes the application of the digital numerical control (DNC) technique to connect the smart meter to the inspection system and evaluate the total harmonic distortion (THD) value of power supply voltage in IEEE 519 standard by measuring the system. Experimental design by the Taguchi method is proposed to evaluate the compatibility factors to choose Urethane material as an alternative to SS400 material for roller fabrication at the machining center. Computer vision uses artificial intelligence (AI) technique to identify object iron color in distinguishing black for urethane material and white for SS400 material, color recognition results are evaluated by measuring system, system measurement is locked when the object of identification is white material SS400. Computer vision using AI technology is also used to recognize facial objects and control the layout of machining staff positions according to their respective skills. The results obtained after the study are that the surface scratches in the machining center are reduced from 100% to zero defects and the surface polishing process is eliminated, shortening production lead time, and reducing 2 employees. The total operating cost of the processing line decreased by 5785 USD per year. Minitab 18.0 software uses statistical model analysis, experimental design, and Taguchi technical analysis to evaluate the process and experimentally convert materials for roller production. MATLAB 2022a runs a computer vision model using artificial intelligence (AI) to recognize color objects to classify Urethane and SS400 materials and recognize the faces of people who control employee layout positions according to their respective skills. L1 - http://journals.pan.pl/Content/124578/PDF/6_777_12_corr.pdf L2 - http://journals.pan.pl/Content/124578 PY - 2022 IS - No 3 EP - 74 DO - 10.24425/mper.2022.142383 KW - Digital Numerical Control KW - Taguchi KW - ANOVA KW - Lean Six Sigma A1 - Ly Duc, Minh A1 - Bilik, Petr PB - Production Engineering Committee of the Polish Academy of Sciences, Polish Association for Production Management VL - vol. 13 DA - 30.09.2022 T1 - Zero Defect Manufacturing Using Digital Numerical Control SP - 61 UR - http://journals.pan.pl/dlibra/publication/edition/124578 T2 - Management and Production Engineering Review ER -