Once a multivariate model is developed, it can be combined with tools and techniques from univariate statistical process control to form multivariate statistical process control tools. It allows development of advanced process monitoring strategies. In the current study, copper plant history data with multiple variables was successfully treated by principal component analysis to detect abnormal process behavior, particularly, in copper solvent extraction. The multivariate model was based on the concentration levels of main process metals recorded by the industrial on-stream x-ray fluorescence analyzer. Normal operating conditions were defined through control limits that were assigned to Hotelling T2 values on x-axis and to squared predictio...
Due to the scarcity of water resources and stricter government regulations, water recycling in the m...
Abstract: The main objective of this industry-university collaboration is to develop an on-line proc...
Malfunction of plant equipment, instrumentation and degradation in process operation increase the op...
Extensive overload of data obtained from batch processes see the need for reduced dimensional analys...
Traditional statistical process control approaches are less effective in dealing with multivariate a...
With the increasing availability of large amounts of real-time process data and a better fundamental...
A major technical challenge facing the manufacturing and process control industries is the need to i...
The paper deals with Statistical Process Control (SPC) applied to three original and three generated...
Currently, chemical plants face numerous challenges like stringent requirements are needed on the de...
Multivariate statistical process control (MSPC) has emerged as an effective technique for monitoring...
The dynamic behaviour of an industrial copper solvent extraction mixer–settler cascade is modelled t...
Statistical Process Control is widely used in Semiconductor Manufacturing. Univariate control charts...
Detecting out-of-control status and diagnosing disturbances leading to the abnormal process operatio...
Abnormal event management (AEM) is an important problem in industrial chemical process operations. P...
The control and monitoring of an industrial process is performed in this paper by the multivariate c...
Due to the scarcity of water resources and stricter government regulations, water recycling in the m...
Abstract: The main objective of this industry-university collaboration is to develop an on-line proc...
Malfunction of plant equipment, instrumentation and degradation in process operation increase the op...
Extensive overload of data obtained from batch processes see the need for reduced dimensional analys...
Traditional statistical process control approaches are less effective in dealing with multivariate a...
With the increasing availability of large amounts of real-time process data and a better fundamental...
A major technical challenge facing the manufacturing and process control industries is the need to i...
The paper deals with Statistical Process Control (SPC) applied to three original and three generated...
Currently, chemical plants face numerous challenges like stringent requirements are needed on the de...
Multivariate statistical process control (MSPC) has emerged as an effective technique for monitoring...
The dynamic behaviour of an industrial copper solvent extraction mixer–settler cascade is modelled t...
Statistical Process Control is widely used in Semiconductor Manufacturing. Univariate control charts...
Detecting out-of-control status and diagnosing disturbances leading to the abnormal process operatio...
Abnormal event management (AEM) is an important problem in industrial chemical process operations. P...
The control and monitoring of an industrial process is performed in this paper by the multivariate c...
Due to the scarcity of water resources and stricter government regulations, water recycling in the m...
Abstract: The main objective of this industry-university collaboration is to develop an on-line proc...
Malfunction of plant equipment, instrumentation and degradation in process operation increase the op...