The authors of this work propose a deep learning-based fault detection model that can be implemented in the field of plastic injection molding. Compared to conventional approaches to fault detection in this domain, recent deep learning approaches prove useful for on-site problems involving complex underlying dynamics with a large number of variables. In addition, the advent of advanced sensors that generate data types in multiple modalities prompts the need for multimodal learning with deep neural networks to detect faults. This process is able to facilitate information from various modalities in an end-to-end learning fashion. The proposed deep learning-based approach opts for an early fusion scheme, in which the low-level feature represen...
Injection molding is one of the most important processes for the mass production of plastic parts. I...
The manufacturing sector is heavily influenced by artificial intelligence-based technologies with th...
The optimal machine settings in polymer processing are usually the result of time-consuming and expe...
A deep learning-based fault detection model, which can be implemented for plastic injection molding ...
Artificial intelligence technology has enabled the manufacturing industry and actively guided its tr...
This study investigates the applicability of diverse deep learning techniques in detecting and class...
In most manufacturing processes the defect rate is very low. Sometimes, only a few parts per million...
© 2021 IEEE. Personal use of this material is permitted. Permission from IEEE must be obtained for a...
This study investigates the impact of plastic injection moulding process parameters on overflow defe...
Manufacturers are eager to replace the human inspector with automatic inspection systems to improve ...
This study utilizes a working artificial neural network (ANN) to monitor an industrial injection mol...
Automated fault detection is an important part of a quality control system. It has the potential to ...
In the realisation that ball bearing fault is the number one fault that most commonly occur in indus...
In modern industries, early fault detection is crucial for maintaining process safety and product qu...
Thesis: M. Eng., Massachusetts Institute of Technology, Department of Electrical Engineering and Com...
Injection molding is one of the most important processes for the mass production of plastic parts. I...
The manufacturing sector is heavily influenced by artificial intelligence-based technologies with th...
The optimal machine settings in polymer processing are usually the result of time-consuming and expe...
A deep learning-based fault detection model, which can be implemented for plastic injection molding ...
Artificial intelligence technology has enabled the manufacturing industry and actively guided its tr...
This study investigates the applicability of diverse deep learning techniques in detecting and class...
In most manufacturing processes the defect rate is very low. Sometimes, only a few parts per million...
© 2021 IEEE. Personal use of this material is permitted. Permission from IEEE must be obtained for a...
This study investigates the impact of plastic injection moulding process parameters on overflow defe...
Manufacturers are eager to replace the human inspector with automatic inspection systems to improve ...
This study utilizes a working artificial neural network (ANN) to monitor an industrial injection mol...
Automated fault detection is an important part of a quality control system. It has the potential to ...
In the realisation that ball bearing fault is the number one fault that most commonly occur in indus...
In modern industries, early fault detection is crucial for maintaining process safety and product qu...
Thesis: M. Eng., Massachusetts Institute of Technology, Department of Electrical Engineering and Com...
Injection molding is one of the most important processes for the mass production of plastic parts. I...
The manufacturing sector is heavily influenced by artificial intelligence-based technologies with th...
The optimal machine settings in polymer processing are usually the result of time-consuming and expe...