This paper investigates and improves a technique known as Nonlinear Dynamic Data Reconciliation (NDDR) for a real industrial process. NDDRS is a technique for data reconciliation that requires an objective function to be minimised subject to both algebraic and differential, equality and inequality constraints. These constraints are obtained from the mathematical description of the process and ensure that the measurement data can be optimised to conform as closely as possible to the true behaviour of the process. One of the difficulties of using the original NDDR is that a rigorous process dynamic model is required as a constraint. Unfortunately it is very hard to establish a rigorous dynamic model for a complex industrial process, particula...
Online uses of first-principles models include nonlinear model predictive control, softsensors, real...
Online uses of first-principles models include nonlinear model predictive control, softsensors, real...
Online uses of first-principles models include nonlinear model predictive control, softsensors, real...
This work studies the problem of dynamic data reconciliation through a nonlinear dynamic data reconc...
In a modern chemical plant, the implementation of a distributed control system leads to a large numb...
Abstract: The aim of this work is to compare Dynamic Data Reconciliation techniques by both theoreti...
Data reconciliation is a model-based technique that reduces measurement errors by making use of redu...
The renewed interest in the process data reconciliation by both the academic world and the process i...
Measurement noise reduction and parameter estimation is a topic of central importance in plant contr...
Measurement noise reduction and parameter estimation is a topic of central importance in plant contr...
All process measurements obtained from measurement devices are corrupted with noise. In any modern c...
AbstractDynamic data reconciliation problems are discussed from the perspective of the mathematical ...
This thesis presents, discusses and compares a set of methodologies and several appropriate combinat...
The operation of power plants and chemical processes requires process measurements for optimal opera...
Online uses of first-principles models include nonlinear model predictive control, softsensors, real...
Online uses of first-principles models include nonlinear model predictive control, softsensors, real...
Online uses of first-principles models include nonlinear model predictive control, softsensors, real...
Online uses of first-principles models include nonlinear model predictive control, softsensors, real...
This work studies the problem of dynamic data reconciliation through a nonlinear dynamic data reconc...
In a modern chemical plant, the implementation of a distributed control system leads to a large numb...
Abstract: The aim of this work is to compare Dynamic Data Reconciliation techniques by both theoreti...
Data reconciliation is a model-based technique that reduces measurement errors by making use of redu...
The renewed interest in the process data reconciliation by both the academic world and the process i...
Measurement noise reduction and parameter estimation is a topic of central importance in plant contr...
Measurement noise reduction and parameter estimation is a topic of central importance in plant contr...
All process measurements obtained from measurement devices are corrupted with noise. In any modern c...
AbstractDynamic data reconciliation problems are discussed from the perspective of the mathematical ...
This thesis presents, discusses and compares a set of methodologies and several appropriate combinat...
The operation of power plants and chemical processes requires process measurements for optimal opera...
Online uses of first-principles models include nonlinear model predictive control, softsensors, real...
Online uses of first-principles models include nonlinear model predictive control, softsensors, real...
Online uses of first-principles models include nonlinear model predictive control, softsensors, real...
Online uses of first-principles models include nonlinear model predictive control, softsensors, real...