Author/Authors
N.F. Thornhill، نويسنده , , M.A.A. Shoukat Choudhury and S.L. Shah، نويسنده ,
DocumentNumber
1384587
Title Of Article
The impact of compression on data-driven process analyses
شماره ركورد
11488
Latin Abstract
Stored process data in the form of high fidelity time trends are a resource for data-driven process analyses such as statistical
monitoring, minimum variance control loop benchmarking, fault detection, data reconciliation and development of inferential
sensors. However, many commercial data historians compress the data before archiving it and a question therefore arises of how
useful the compressed data are for the intended purposes.
This article examines the impact of compression on data-driven methods and presents an automated algorithm by which the
presence of piecewise linear compression may be inferred during the pre-processing phase of a data-driven analysis.
The results show that compression interferes with many types of data-driven analyses and the paper strongly recommends
caution in the use of compressed process data archives.
From Page
389
NaturalLanguageKeyword
Non-linearity , Processmonitoring , Process trend , Data reconciliation , Data compression , Chemical process , Fault detection , Controller performance monitoring , Spectrum , Statistical process control
JournalTitle
Studia Iranica
To Page
398
To Page
398
Link To Document