Valve friction and nonlinear process model closed-loop identification
Abstract
Among several process variability sources, valve friction and inadequate controller tuning are supposed to be two of the most prevalent. Friction quantification methods can be applied to the development of model-based compensators or to diagnose valves that need repair, whereas accurate process models can be used in controller retuning. This paper extends existing methods that jointly estimate the friction and process parameters, so that a nonlinear structure is adopted to represent the process model. The developed estimation algorithm is tested with three different data sources: a simulated first order plus dead time process, a hybrid setup (composed of a real valve and a simulated pH neutralization process) and from three industrial datasets corresponding to real control loops. The results demonstrate that the friction is accurately quantified, as well as "good" process models are estimated in several situations. Furthermore, when a nonlinear process model is considered, the proposed extension presents significant advantages: (i) greater accuracy for friction quantification and (ii) reasonable estimates of the nonlinear steady-state characteristics of the process. © 2010 Elsevier Ltd. All rights reserved.
- Control valves
- Identification algorithms
- Nonlinear models
- Stiction
- Algorithms
- Controllers
- Estimation
- Identification (control systems)
- Nonlinear systems
- Safety valves
- Stiction
- Three term control systems
- Tribology
- Closed loop identification
- Control loop
- Control valves
- Controller tuning
- Data sets
- Data source
- Estimation algorithm
- Existing method
- First order plus dead time
- Identification algorithms
- Model-based
- Non-linear model
- Nonlinear process models
- Nonlinear structure
- PH neutralization process
- Process model
- Process parameters
- Process Variability
- Quantification methods
- Steady state characteristics
- Mathematical models
URI
https://www.scopus.com/inward/record.uri?eid=2-s2.0-79953828046&doi=10.1016%2fj.jprocont.2010.11.009&partnerID=40&md5=634d91180b1b440f2a4c704be44c4e8ehttps://repositorio.maua.br/handle/MAUA/1228
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