Automated recognition of process variation patterns using an artificial neural network (ANN) model classifier is a useful technique for multivariate quality control. Proper design of the classifier is critical for achieving effective recognition performance (RP). The existing classifiers were mainly designed empirically. In this research, full factorial design of experiment was utilized for investigating the effect of four design parameters, i.e., recognition window size, training data amount, training data quality and hidden neuron amount. The pattern recognition study focuses on bivariate correlated process mean shifts for cross correlation function, ρ = 0.1 ~ 0.9 and mean shifts, µ = ± 0.75 ~ 3.00 standard deviations. Raw data was used a...
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...
In quality control, monitoring unnatural variation (UV) in manufacturing process has become more cha...
In multivariate quality control, the artificial neural networks (ANN)-based pattern recognition sche...
In multivariate quality control, the artificial neural networks (ANN)-based pattern recognition sche...
Monitoring and diagnosis of mean shifts in manufacturing processes become more challenging when invo...
Several approaches to identifying the out-of-control variables after the detection of abnormal patte...
Time-series statistical pattern recognition is of prime importance in statistics, especially in qual...
Artificial intelligence based pattern recognition is one of the most important tools in process cont...
In manufacturing operations, unnatural process variation has become a major contributor to a poor qu...
There are many traits in the manufacturing technology to assure the quality of products. One of the ...
AbstractVarious artificial neural networks (ANN)-based pattern recognition schemes have been develop...
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...
In quality control, monitoring unnatural variation (UV) in manufacturing process has become more cha...
In multivariate quality control, the artificial neural networks (ANN)-based pattern recognition sche...
In multivariate quality control, the artificial neural networks (ANN)-based pattern recognition sche...
Monitoring and diagnosis of mean shifts in manufacturing processes become more challenging when invo...
Several approaches to identifying the out-of-control variables after the detection of abnormal patte...
Time-series statistical pattern recognition is of prime importance in statistics, especially in qual...
Artificial intelligence based pattern recognition is one of the most important tools in process cont...
In manufacturing operations, unnatural process variation has become a major contributor to a poor qu...
There are many traits in the manufacturing technology to assure the quality of products. One of the ...
AbstractVarious artificial neural networks (ANN)-based pattern recognition schemes have been develop...
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...
In quality control, monitoring unnatural variation (UV) in manufacturing process has become more cha...