When addressing product quality standards in manufacturing lines, a critical issue is the identification of the parameters that define the quality of the final product and their tracking. The problem of process control under inconsistent working condition of an automatic machinery, i.e. when some parameters are highly variable, is still quite unexplored in literature. This objective becomes even more challenging when the most important process variables are not directly measurable. This paper demonstrates that it is possible to achieve quality control by coupling a soft sensor, whose predictive model is a neural network, with an anomaly detector. The methodology has been applied to automatic machinery placed in a manufacturing line, where h...
The traditional use of control charts assumes the independence of data. It is widely recognized that...
With the growing of automation in manufacturing, process quality characteristics are being measured ...
In this paper Quality Control Charts without memory are compared to neural networks trained with the...
When addressing product quality standards in manufacturing lines, a critical issue is the identifica...
The use of neural networks began to be applied because the traditional control charts used for monit...
Modern manufacturing facilities are large scale, highly complex, and operate with large number of va...
Neural networks are potential tools that can be used to improve process quality control. In fact, va...
SCOPUS eid=2-s2.0-20144384127 - Neural networks have recently received a great deal of attention in ...
In order to produce products with constant quality, manufacturing systems need to be monitored for a...
For implementing data analytic tools in real-world applications, researchers face major challenges s...
The current intense international and domestic market competition has forced manufacturers to look t...
The demand for quality products in industry is continuously increasing. To produce products with con...
Nowadays in some manufacturing processes, the quality of a product or process is well expressed by b...
The traditional use of control charts assumes the independence of data. It is widely recognized that...
With the growing of automation in manufacturing, process quality characteristics are being measured ...
In this paper Quality Control Charts without memory are compared to neural networks trained with the...
When addressing product quality standards in manufacturing lines, a critical issue is the identifica...
The use of neural networks began to be applied because the traditional control charts used for monit...
Modern manufacturing facilities are large scale, highly complex, and operate with large number of va...
Neural networks are potential tools that can be used to improve process quality control. In fact, va...
SCOPUS eid=2-s2.0-20144384127 - Neural networks have recently received a great deal of attention in ...
In order to produce products with constant quality, manufacturing systems need to be monitored for a...
For implementing data analytic tools in real-world applications, researchers face major challenges s...
The current intense international and domestic market competition has forced manufacturers to look t...
The demand for quality products in industry is continuously increasing. To produce products with con...
Nowadays in some manufacturing processes, the quality of a product or process is well expressed by b...
The traditional use of control charts assumes the independence of data. It is widely recognized that...
With the growing of automation in manufacturing, process quality characteristics are being measured ...
In this paper Quality Control Charts without memory are compared to neural networks trained with the...