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Industry 4.0 In-Line AI Quality Control of Plastic Injection Molded Parts
by
Aminabadi, Saeid Saeidi
, Habersohn, Christoph
, Berger-Weber, Gerald
, Gruber, Dieter Paul
, Friesenbichler, Walter
, Steiner, Alexander
, Tabatabai, Paul
in
Accuracy
/ Artificial intelligence
/ Artificial neural networks
/ Communications software
/ Control systems
/ Data analysis
/ Decision trees
/ Design of experiments
/ Fuzzy logic
/ Heuristic methods
/ Information management
/ Information sources
/ Injection molding
/ Injection molding machines
/ Iterative methods
/ Machine learning
/ Mathematical models
/ Measuring instruments
/ Molds
/ Neural networks
/ Optimization
/ Parameters
/ Plastics
/ Plastics industry
/ Prediction models
/ Predictive control
/ Process controls
/ Quality control
/ Quality management
/ Researchers
/ Sensors
/ Support vector machines
/ Surface properties
/ Taguchi methods
/ Variables
2022
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Industry 4.0 In-Line AI Quality Control of Plastic Injection Molded Parts
by
Aminabadi, Saeid Saeidi
, Habersohn, Christoph
, Berger-Weber, Gerald
, Gruber, Dieter Paul
, Friesenbichler, Walter
, Steiner, Alexander
, Tabatabai, Paul
in
Accuracy
/ Artificial intelligence
/ Artificial neural networks
/ Communications software
/ Control systems
/ Data analysis
/ Decision trees
/ Design of experiments
/ Fuzzy logic
/ Heuristic methods
/ Information management
/ Information sources
/ Injection molding
/ Injection molding machines
/ Iterative methods
/ Machine learning
/ Mathematical models
/ Measuring instruments
/ Molds
/ Neural networks
/ Optimization
/ Parameters
/ Plastics
/ Plastics industry
/ Prediction models
/ Predictive control
/ Process controls
/ Quality control
/ Quality management
/ Researchers
/ Sensors
/ Support vector machines
/ Surface properties
/ Taguchi methods
/ Variables
2022
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Industry 4.0 In-Line AI Quality Control of Plastic Injection Molded Parts
by
Aminabadi, Saeid Saeidi
, Habersohn, Christoph
, Berger-Weber, Gerald
, Gruber, Dieter Paul
, Friesenbichler, Walter
, Steiner, Alexander
, Tabatabai, Paul
in
Accuracy
/ Artificial intelligence
/ Artificial neural networks
/ Communications software
/ Control systems
/ Data analysis
/ Decision trees
/ Design of experiments
/ Fuzzy logic
/ Heuristic methods
/ Information management
/ Information sources
/ Injection molding
/ Injection molding machines
/ Iterative methods
/ Machine learning
/ Mathematical models
/ Measuring instruments
/ Molds
/ Neural networks
/ Optimization
/ Parameters
/ Plastics
/ Plastics industry
/ Prediction models
/ Predictive control
/ Process controls
/ Quality control
/ Quality management
/ Researchers
/ Sensors
/ Support vector machines
/ Surface properties
/ Taguchi methods
/ Variables
2022
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Industry 4.0 In-Line AI Quality Control of Plastic Injection Molded Parts
Journal Article
Industry 4.0 In-Line AI Quality Control of Plastic Injection Molded Parts
2022
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Overview
Automatic in-line process quality control plays a crucial role to enhance production efficiency in the injection molding industry. Industry 4.0 is leading the productivity and efficiency of companies to minimize scrap rates and strive for zero-defect production, especially in the injection molding industry. In this study, a fully automated closed-loop injection molding (IM) setup with a communication platform via OPC UA was built in compliance with Industry 4.0. The setup included fully automated inline measurements, in-line data analysis, and an AI control system to set the new machine parameters via the OPC UA communication protocol. The surface quality of the injection molded parts was rated using the ResNet-18 convolutional neural network, which was trained on data gathered by a heuristic approach. Further, eight different machine learning models for predicting the part quality (weight, surface quality, and dimensional properties) and for predicting sensor data were trained using data from a variety of production information sources, including in-mold sensors, injection molding machine (IMM) sensors, ambient sensors, and inline product quality measurements. These models are the backbone of the AI control system, which is a heuristic model predictive control (MPC) method. This method was applied to find new sets of machine parameters during production to control the specified part quality feature. The control system and predictive models were successfully tested for two groups of quality features: Geometry control and surface quality control. Control parameters were limited to injection speed and holding pressure. Moreover, the geometry control was repeated with mold temperature as an additional control parameter.
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