Industrial Processes: Data Reconciliation and Gross Error Detection

Process data plays a vital role in industrial processes, which are the basis for process control, monitoring, optimization and business decision making. However, it is inevitable that process data measurements will be corrupted by random errors. Therefore, data reconciliation has been developed to i...

Full description

Bibliographic Details
Main Authors: Yu Miao, Hongye Su, Rong Gang, Jian Chu
Format: Article
Language:English
Published: SAGE Publishing 2009-09-01
Series:Measurement + Control
Online Access:https://doi.org/10.1177/002029400904200704
Description
Summary:Process data plays a vital role in industrial processes, which are the basis for process control, monitoring, optimization and business decision making. However, it is inevitable that process data measurements will be corrupted by random errors. Therefore, data reconciliation has been developed to improve accuracy of process data by reducing the effect of random errors. Unfortunately, reconciled values would be deteriorated by gross errors, which may be present during measurement. Therefore, gross error detection is necessary to guarantee the efficiency of data reconciliation, which has been developed to identify and eliminate gross errors in process data. In this paper, a review of data reconciliation and gross error detection and relevant industrial applications are presented. As the efficiency of data reconciliation and gross error detection largely depends upon the locations of sensors, sensor networks design is also included in the review. Meanwhile, some achievements of the authors are also included.
ISSN:0020-2940