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1.
Biotechnol Bioeng ; 107(1): 96-104, 2010 Sep 01.
Artigo em Inglês | MEDLINE | ID: mdl-20506395

RESUMO

Historical manufacturing data can potentially harbor a wealth of information for process optimization and enhancement of efficiency and robustness. To extract useful data multivariate data analysis (MVDA) using projection methods is often applied. In this contribution, the results obtained from applying MVDA on data from inactivated polio vaccine (IPV) production runs are described. Data from over 50 batches at two different production scales (700-L and 1,500-L) were available. The explorative analysis performed on single unit operations indicated consistent manufacturing. Known outliers (e.g., rejected batches) were identified using principal component analysis (PCA). The source of operational variation was pinpointed to variation of input such as media. Other relevant process parameters were in control and, using this manufacturing data, could not be correlated to product quality attributes. The gained knowledge of the IPV production process, not only from the MVDA, but also from digitalizing the available historical data, has proven to be useful for troubleshooting, understanding limitations of available data and seeing the opportunity for improvements.


Assuntos
Interpretação Estatística de Dados , Previsões , Indústrias/métodos , Modelos Biológicos , Análise Multivariada , Vacina Antipólio de Vírus Inativado/biossíntese , Vacina Antipólio de Vírus Inativado/isolamento & purificação , Animais , Chlorocebus aethiops , Células Vero
2.
Appl Spectrosc ; 57(8): 1007-19, 2003 Aug.
Artigo em Inglês | MEDLINE | ID: mdl-14661845

RESUMO

A good process understanding is the foundation for process optimization, process monitoring, end-point detection, and estimation of the end-product quality. Performing good process measurements and the construction of process models will contribute to a better process understanding. To improve the process knowledge it is common to build process models. These models are often based on first principles such as kinetic rates or mass balances. These types of models are also known as hard or white models. White models are characterized by being generally applicable but often having only a reasonable fit to real process data. Other commonly used types of models are empirical or black-box models such as regression and neural nets. Black-box models are characterized by having a good data fit but they lack a chemically meaningful model interpretation. Alternative models are grey models, which are combinations of white models and black models. The aim of a grey model is to combine the advantages of both black-box models and white models. In a qualitative case study of monitoring industrial batches using near-infrared (NIR) spectroscopy, it is shown that grey models are a good tool for detecting batch-to-batch variations and an excellent tool for process diagnosis compared to common spectroscopic monitoring tools.


Assuntos
Indústria Química/métodos , Modelos Teóricos , Controle de Qualidade , Espectroscopia de Luz Próxima ao Infravermelho/métodos , Indústria Química/normas , Etanol/análise , Etanol/química , Isocianatos/análise , Isocianatos/química , Manufaturas/normas , Reprodutibilidade dos Testes , Tecnologia , Fatores de Tempo , Uretana/análise , Uretana/química
3.
Analyst ; 128(1): 98-102, 2003 Jan.
Artigo em Inglês | MEDLINE | ID: mdl-12572811

RESUMO

Many high quality products are produced in a batch wise manner. One of the characteristics of a batch process is the recipe driven nature. By repeating the recipe in an identical manner a desired end-product is obtained. However, in spite of repeating the recipe in an identical manner, process differences occur. These differences can be caused by a change of feed stock supplier or impurities in the process. Because of this, differences might occur in the end-product quality or unsafe process situations arise. Therefore, the need to monitor an industrial batch process exists. An industrial process is usually monitored by process measurements such as pressures and temperatures. Nowadays, due to technical developments, spectroscopy is more and more used for process monitoring. Spectroscopic measurements have the advantage of giving a direct chemical insight in the process. Multivariate statistical process control (MSPC) is a statistical way of monitoring the behaviour of a process. Combining spectroscopic measurements with MSPC will notice process perturbations or process deviations from normal operating conditions in a very simple manner. In the following an application is given of batch process monitoring. It is shown how a calibration model is developed and used with the principles of MSPC. Statistical control charts are developed and used to detect batches with a process upset.

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