A Compound Test With High Confidence Level For Gross Error Detection
Price
Free (open access)
Volume
22
Pages
9
Published
1998
Size
634 kb
Paper DOI
10.2495/DATA980121
Copyright
WIT Press
Author(s)
Wang Xiruo & Rong Gang
Abstract
Measured process data are inherently inaccurate and violate process constraints because of their underlying stochastic properties and possible gross errors caused by process disturbances, malfunctioning or miscalibrated instrumentation and even process leaks, etc. Therefore, the theory of gross error detection (GED) and data reconciliation has been developed to solve the contradictions between the measurements and their constraints. A number of gross error detection techniques are widely applied in different chemical processes. However, their performances have not always been so satisfactory: if the probability of type I error is low then that of t
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