Optimize Injection-Molding Process Parameters and Build an Adaptive Process Control System Based on Nozzle Pressure Profile and Clamping Force

Author:

Liou Guan-Yan1,Su Wei-Jie2,Cheng Feng-Jung1,Chang Chen-Hsiang1,Tseng Ren-Ho1,Hwang Sheng-Jye1,Peng Hsin-Shu2,Chu Hsiao-Yeh3ORCID

Affiliation:

1. Department of Mechanical Engineering, National Cheng Kung University, Tainan 701401, Taiwan

2. Department of Mechanical and Computer-Aided Engineering, Feng Chia University, Taichung 407802, Taiwan

3. Department of Mechanical Engineering, Kun Shan University, Tainan 71070, Taiwan

Abstract

The injection-molding process is a non-linear process, and the product quality and long-term production stability are affected by several factors. To stabilize the product quality effected by these factors, this research establishes a standard process parameter setup procedure and an adaptive process control system based on the data collected by a nozzle pressure sensor and a tie-bar strain gauge to achieve this goal. In this research, process parameters such as the V/P switchover point, injection speed, packing pressure, and clamping force are sequentially optimized based on the characteristics of the pressure profile. After the optimization process, this research defines the standard quality characteristics through the optimized process parameters and combines it with the adaptive process control system in order to achieve the purpose of automatic adjustment of the machine and maintain high-quality production. Finally, three different viscosity materials are used to verify the effectiveness of the optimization procedure and the adaptive process control system. With the system, the variation of product weight was reduced to 0.106%, 0.092%, and 0.079%, respectively.

Funder

Minster of science

Publisher

MDPI AG

Subject

Polymers and Plastics,General Chemistry

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