Statistical quality control (SQC) applies multivariate statistics to monitor production processes over time and detect changes in their performance in terms of meeting specification limits on key product quality metrics. These limits are imposed by customers and typically assumed to be a single target value, however, for some products, it is more reasonable to target a range of values. Under this assumption we propose a multi-stage approach for mapping operating conditions to product quality classes. We use principal component analysis (PCA) and a pattern mining algorithm to reduce dimensionality and identify predictive patterns in time series of operating conditions in order to improve the performance of the classifier. We apply this appro...
Forecasting of product quality by means of anomaly detection is crucial in real-world applications s...
For implementing data analytic tools in real-world applications, researchers face major challenges s...
Abstract: The introduction of AI applications is accelerated by an on-going development phase at pre...
Statistical quality control (SQC) applies multivariate statistics to monitor production processes ov...
For manufacturing enterprises, product quality is a key factor to assess production capability and i...
Multivariate statistical process control (MSPC) has emerged as an effective technique for monitoring...
One of the major challenges of today's manufacturing industry is the reliable detection of process a...
Focusing on quality-related complex industrial process performance monitoring, a novel multimode pro...
Extensive overload of data obtained from batch processes see the need for reduced dimensional analys...
The great challenge in quality control and process management is to devise computationally efficient...
Abstract:- The present paper describes some quality control tools that develop an interactive and on...
AbstractQuality prediction model, as the key to realize the real-time online quality monitoring proc...
With the advent of new technologies, process plants whether it be continuous or batch process\ud pla...
Abstract—Growing demand for higher performance, safety and reliability of industrial systems has inc...
Principal Component Analysis(PCA) reduces the dimensionality of the process by creating a new set of...
Forecasting of product quality by means of anomaly detection is crucial in real-world applications s...
For implementing data analytic tools in real-world applications, researchers face major challenges s...
Abstract: The introduction of AI applications is accelerated by an on-going development phase at pre...
Statistical quality control (SQC) applies multivariate statistics to monitor production processes ov...
For manufacturing enterprises, product quality is a key factor to assess production capability and i...
Multivariate statistical process control (MSPC) has emerged as an effective technique for monitoring...
One of the major challenges of today's manufacturing industry is the reliable detection of process a...
Focusing on quality-related complex industrial process performance monitoring, a novel multimode pro...
Extensive overload of data obtained from batch processes see the need for reduced dimensional analys...
The great challenge in quality control and process management is to devise computationally efficient...
Abstract:- The present paper describes some quality control tools that develop an interactive and on...
AbstractQuality prediction model, as the key to realize the real-time online quality monitoring proc...
With the advent of new technologies, process plants whether it be continuous or batch process\ud pla...
Abstract—Growing demand for higher performance, safety and reliability of industrial systems has inc...
Principal Component Analysis(PCA) reduces the dimensionality of the process by creating a new set of...
Forecasting of product quality by means of anomaly detection is crucial in real-world applications s...
For implementing data analytic tools in real-world applications, researchers face major challenges s...
Abstract: The introduction of AI applications is accelerated by an on-going development phase at pre...