1. Introduction
In the context of the continuous development of industrial automation, the concept of smart machines plays a pivotal role in driving forward Industry 4.0. The design of smart machines enables them to be connected, visible, transparent, predictable, and adaptively controllable. By connecting different equipment and systems, data are visualized, and the causes of machine or production abnormalities are made transparent. This allows for a clear understanding of the reasons behind the problems. Additionally, predictions can be made for the production process. When abnormalities occur in the product, the adaptive control system automatically adjusts process parameters to counteract external disturbances, improving production efficiency and maintaining product quality consistency.
In the injection molding process, the setting of process parameters significantly influences product quality. Different process parameter settings can result in varying pressure profile characteristics. Pressure profiles are highly related to product quality, can be used to optimize process parameters, and also serve as the foundation for establishing a scientific molding parameter setup.
To capture the changes in molten material during the injection molding process, previous studies have installed sensors on machines and molds to collect data such as temperature, pressure, and clamping force, analyzing the correlation between these data and product quality. Gao et al. [
1] used sensors to monitor melt pressure, temperature, velocity, and viscosity and employed regression models to predict product quality, demonstrating that sensor-based in situ quality monitoring can significantly improve productivity and achieve quality control. Su et al. [
2] utilized a nozzle pressure sensor and a tie-bar strain gauge to collect data, conducting experiments with materials of three different viscosities. The
V/
P switchover point was determined based on the nozzle peak pressure, while the appropriate clamping force was identified using the clamping force peak. Tsou et al. [
3] used single and multiple pressure sensors to monitor changes in residual stress near the gate during different processes and conducted temperature disturbance experiments to verify the effectiveness of process variables, indicating that the process variables defined using multiple sensors were highly correlated with residual stress near the gate. Ke et al. [
4] used the melt pressure curve to define quality indexes and examined the correlations of these quality indexes with the geometric width of the injection molded parts. The quality indexes were input into a multilayer perceptron model for learning, and the accuracy of the model’s prediction was verified. The results indicated that the training and testing accuracy of the geometric width quality indexes exceeded 92%. Su et al. [
5] installed strain sensors on the tie bars and defined an appropriate clamping force peak value as the control basis for clamping force through continuous production experiments, showing that the clamping force peak value not only optimized the clamping force but could also be used to predict product quality. Chang et al. [
6] collected data using mold cavity pressure sensors and set different packing pressure methods for experiments, indicating that using multi-stage packing pressure could improve the tensile strength, total shrinkage and warpage of the product. Chen et al. [
7] installed five sensors in the mold cavity and discovered through experiments with different process parameter settings that the pressure integral has a higher correlation with the product weight. Chen et al. [
8] installed pressure sensors in the cavity, runner, and nozzle to measure pressure changes during the filling stage and used two different materials to study the melt flow behavior and melt quality indexes. The experiments revealed that the peak pressure had the highest correlation with product weight, while the pressure gradient showed the lowest correlation.
Some studies have utilized data to define online quality characteristic values, which are subsequently used to optimize process parameters to achieve the best product quality. Liou et al. [
9] proposed a method for defining online quality characteristic values based on the nozzle pressure curve and tie-bar strain curve. They used these values to optimize process parameters for three materials of different viscosities. Lin [
10] used relative viscosity to define the appropriate injection speed. The optimal injection speed is where the relative viscosity change stabilizes. Párizs et al. [
11] applied cavity pressure sensors to a multi-cavity mold to optimize clamping force,
V/
P switchover point, and packing time. Nian et al. [
12] established a parameter optimization process based on cavity pressure sensors, reducing product warpage defects by setting multiple stages of packing pressure. Huang et al. [
13] analyzed the impact of multiple stage packing pressure and injection speed setups on product quality. Process parameters were optimized based on the pressure curve, improving product weight, dimensions, and warpage. Xu et al. [
14] proposed a method to measure the clamping force before injection and during cooling. By calculating the difference, the appropriate clamping force setting can be determined.
In previous studies, adaptive process control methods have been used to stabilize product quality. This approach primarily utilizes information gathered by sensors to monitor changes in the product, including pressure, temperature, and strain values. Chen et al. [
15] used a tie-bar strain sensor to monitor the peak clamping force increment. When the peak clamping force increment exceeds the specified limits, the process can be successfully restored to stable production conditions by modifying the
V/
P switchover point and holding pressure. Krantz et al. [
16] established an auto-viscosity control system to monitor the time taken for the melt to reach the sensor and thereby adjust the screw velocity to reduce the variability of recycled materials during the production process. Cheng et al. [
17] used the adaptive process control method to confirm that the system can stabilize the weight of thin-walled parts during long-term production. Chen et al. [
18] analyzed the impact of cavity pressure on tie-bar strain during the injection process, indicating a strong correlation between variations in clamping force and product weight, demonstrating that controlling the clamping force effectively stabilizes product weight during long-term production. Xu et al. [
19] defined the pressure integral over time as the melt viscosity and utilized it as a control reference. By automatically adjusting the
V/
P switchover point and packing pressure in real time, the melt viscosity was successfully stabilized, and variations in product weight were controlled during long-term production, including experiments with both virgin and recycled materials. Chang et al. [
20] demonstrated through experiments that there is a strong correlation between screw position and injection time, product weight, and clamping force peak. They further proved that adjusting process parameters based on changes in the clamping force peak can stabilize product weight during continuous production. Huang et al. [
21] utilized cavity peak pressure as a monitoring characteristic for long-term production. In continuous injection experiments, increasing the barrel temperature increased cavity peak pressure and product weight, showing a high correlation. The study ultimately demonstrated that adjusting packing pressure could prevent excessive product quality deviations and maintain its consistency. Schiffers et al. [
22] applied the viscosity index as an adaptive control method to adjust the
V/
P switchover point, showing that this method could reduce the part weight variation to 0.25%.
In this study, a nozzle pressure sensor and a tie-bar strain gauge were installed to capture sensing curves, and characteristic values were established based on these sensing curves. The sensing curve characteristic values could optimize the parameter settings of the injection, packing, and clamping stages to determine the optimal process parameters. Finally, this study established an adaptive control system to stabilize product quality. Continuous production experiments were conducted to verify the effectiveness of the scientific molding parameter setup and the adaptive process control system during long-term and multi-site production.
5. Conclusions
This study installed two external sensors to collect data, establishing a standardized scientific molding parameter setup. The scientific molding parameter setup sequentially optimizes injection speed, V/P switchover point, packing pressure, packing time, and clamping force. As the injection speed increases, the relative viscosity of melts gradually stabilizes, and the appropriate injection speed can be determined by relative viscosity. The appropriate V/P switchover point occurs just before the nozzle peak pressure rises rapidly, while a late V/P switchover point leads to excessive melt compression in the mold cavity. In the packing pressure experiments, when the nozzle pressure stabilizes and the screw continues to advance, it indicates that the melt is effectively compensating into the mold cavity, resulting in a gradually stabilized product weight. Setting a longer packing time allows for the observation of a noticeable pressure difference during the packing phase. This phenomenon occurs because the screw continues to advance at the set packing pressure even after the gate has solidified, compressing the melt in the hot runner and nozzle. The appropriate packing time can be determined by the gate solidification time. The clamping force difference value closely corresponds to the product weight trend, which can detect mold separation issues. Thus, the appropriate clamping force has been defined as the point where the clamping force difference value reaches zero.
An adaptive process control system was established based on the optimal parameters and online quality characteristic values. Continuous production experiments were conducted in different environments to validate the effectiveness of the adaptive process control system by minimizing the standard deviation and coefficient of variation in product weight. In the adaptive process quality control experiments, the system successfully stabilizes the product weight, with the standard deviation of product weight decreasing to 0.0289 g and 0.0148 g, and the coefficient of variation decreasing to 0.065% and 0.035%, respectively.
The proposed external sensors monitoring method in industrial manufacturing can reduce sensor installation and maintenance costs while using a scientific approach to optimize process parameters. Additionally, this study establishes an adaptive control system that automatically adjusts parameters to maintain product quality consistency, laying a good foundation for the development of intelligent injection molding systems.