The paper illustrates the design and implementation process of a neural network to identify characteristic patterns of variability in a demand signal, extracting peculiar and critical elements. The starting assumption comes out from an analogy with the behaviour of general manufacturing and industrial processes. With this statement, it was possible to develop classical statistical process control tools to compile X-R charts, defining the progress of average and dispersion value of the demand. The introduction of a decision support system, a Multi-Layer Perceptron neural network, helps the operators to identify common and special causes of variability and gives an hint to plan specific market analysis to better understand customer’s behaviou...
The identification of control chart patterns is very important in statistical process control. Contr...
In this paper Quality Control Charts without memory and neural networks are compared. Neural network...
With the growing employment of automatic data-collection methods and the enhancements on computerise...
The use of neural networks began to be applied because the traditional control charts used for monit...
The use of neural networks began to be applied because the traditional control charts used for monit...
The use of neural networks began to be applied because the traditional control charts used for monit...
The use of neural networks began to be applied because the traditional control charts used for monit...
The use of neural networks began to be applied because the traditional control charts used for monit...
To produce products with consistent quality, manufacturing processes need to be closely monitored fo...
Using outputs of a supply chain system dynamics model, neural networks’ pattern recognition capabili...
Abstract: The continuous detection and correction of unnatural process behaviours, due to special ca...
Using outputs of a supply chain system dynamics model, neural networks’ pattern recognition capabili...
Research has shown that Neural Networks (NNs) when trained appropriately are the best forecasting sy...
In this paper Quality Control Charts without memory are compared to neural networks trained with the...
Automated recognition of process variation patterns using an artificial neural network (ANN) model c...
The identification of control chart patterns is very important in statistical process control. Contr...
In this paper Quality Control Charts without memory and neural networks are compared. Neural network...
With the growing employment of automatic data-collection methods and the enhancements on computerise...
The use of neural networks began to be applied because the traditional control charts used for monit...
The use of neural networks began to be applied because the traditional control charts used for monit...
The use of neural networks began to be applied because the traditional control charts used for monit...
The use of neural networks began to be applied because the traditional control charts used for monit...
The use of neural networks began to be applied because the traditional control charts used for monit...
To produce products with consistent quality, manufacturing processes need to be closely monitored fo...
Using outputs of a supply chain system dynamics model, neural networks’ pattern recognition capabili...
Abstract: The continuous detection and correction of unnatural process behaviours, due to special ca...
Using outputs of a supply chain system dynamics model, neural networks’ pattern recognition capabili...
Research has shown that Neural Networks (NNs) when trained appropriately are the best forecasting sy...
In this paper Quality Control Charts without memory are compared to neural networks trained with the...
Automated recognition of process variation patterns using an artificial neural network (ANN) model c...
The identification of control chart patterns is very important in statistical process control. Contr...
In this paper Quality Control Charts without memory and neural networks are compared. Neural network...
With the growing employment of automatic data-collection methods and the enhancements on computerise...