Case Example 2: Data analysis for diagnostics and process monitoring of automotive engines

1999 ◽  
pp. 281-301 ◽  
Author(s):  
Bruce D. Bryant ◽  
Kenneth A. Marko
2014 ◽  
Author(s):  
Woong Jae Chung ◽  
Young Ki Kim ◽  
John Tristan ◽  
Jeong Soo Kim ◽  
Lokesh Subramany ◽  
...  

2015 ◽  
Vol 738-739 ◽  
pp. 844-848
Author(s):  
Qing Kai Wang ◽  
Xiao Yu Zou ◽  
Shu Wang ◽  
Da Kuo He ◽  
Yang Zhou ◽  
...  

Hydrometallurgy is a popular metallurgical technology. Filter press is common but vital to the production of hydrometallurgy. Hence, the process monitoring of filter press is of great significance for hydrometallurgy. Due to data analysis and related knowledge of filter press, Principal component analysis (PCA) is applied to process monitoring of the filter press via two traditional statistics. However, modeling and test data collected from actual production suffers from outliers, missing data, inconsistent sampling period between variables. Based on these practical problems, corresponding data proceeding technique is proposed. The final application simulation illustrates the validity of the proposed method.


2020 ◽  
Vol 7 (2) ◽  
pp. 50
Author(s):  
Barbara Pretzner ◽  
Christopher Taylor ◽  
Filip Dorozinski ◽  
Michael Dekner ◽  
Andreas Liebminger ◽  
...  

Process monitoring is a critical task in ensuring the consistent quality of the final drug product in biopharmaceutical formulation, fill, and finish (FFF) processes. Data generated during FFF monitoring includes multiple time series and high-dimensional data, which is typically investigated in a limited way and rarely examined with multivariate data analysis (MVDA) tools to optimally distinguish between normal and abnormal observations. Data alignment, data cleaning and correct feature extraction of time series of various FFF sources are resource-intensive tasks, but nonetheless they are crucial for further data analysis. Furthermore, most commercial statistical software programs offer only nonrobust MVDA, rendering the identification of multivariate outliers error-prone. To solve this issue, we aimed to develop a novel, automated, multivariate process monitoring workflow for FFF processes, which is able to robustly identify root causes in process-relevant FFF features. We demonstrate the successful implementation of algorithms capable of data alignment and cleaning of time-series data from various FFF data sources, followed by the interconnection of the time-series data with process-relevant phase settings, thus enabling the seamless extraction of process-relevant features. This workflow allows the introduction of efficient, high-dimensional monitoring in FFF for a daily work-routine as well as for continued process verification (CPV).


2018 ◽  
Vol 210 ◽  
pp. 02018 ◽  
Author(s):  
Anna Stoynova ◽  
Irina Aleksandrova ◽  
Anatoly Aleksandrov ◽  
Geno Ganev

This paper presents the features of infrared thermography (IRT) for contactless study of elastic abrasive cutting process of rotating workpieces. IRT monitoring specifics along with the experimental procedures and techniques for data analysis are discussed. IRT measurement results of the influence of workpiece rotational speed, during the processing of various materials, on heat release and heat distribution at the workpiece surface, on the cut-off wheel, the cut piece and the cutting time period are presented. The operational methodology and the results obtained can be used for optimizing the abrasive cutting of rotating workpieces.


Sign in / Sign up

Export Citation Format

Share Document