Nonlinear data reconciliation with gross error detection and identification for steady-state and dynamic processes

Sensor measurements in a process network inherently contain random noise and/or gross errors. Thus, operational plant data should be pre-conditioned for process control, monitoring, and optimization. This work developed a strategy for nonlinear steady-state and nonlinear dynamic data reconciliation...

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Bibliographic Details
Main Author: Pilario, Karl Ezra S. (Author)
Other Authors: Muñoz, Jose C. (adviser.)
Format: Thesis
Language:English
Published: Quezon City College of Engineering, University of the Philippines Diliman 2015.
Subjects: