Article

Nonlinear identification with local model networks using GTLS techniques and equality constraints.

Institute of Mechanics and Mechatronics, Division of Control and Process Automation, Vienna University of Technology, Vienna, Austria.
IEEE Transactions on Neural Networks (impact factor: 2.95). 07/2011; 22(9):1406-18. DOI:10.1109/TNN.2011.2159309 pp.1406-18
Source: PubMed

ABSTRACT Local model networks approximate a nonlinear system through multiple local models fitted within a partition space. The main advantage of this approach is that the identification of complex nonlinear processes is alleviated by the integration of structured knowledge about the process. This paper extends these concepts by the integration of quantitative process knowledge into the identification procedure. Quantitative knowledge describes explicit dependences between inputs and outputs and is integrated in the parameter estimation process by means of equality constraints. For this purpose, a constrained generalized total least squares algorithm for local parameter estimation is presented. Furthermore, the problem of proper integration of constraints in the partitioning process is treated where an expectation-maximization procedure is combined with constrained parameter estimation. The benefits and the applicability of the proposed concepts are demonstrated by means of two illustrative examples and a practical application using real measurement data.

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Keywords

complex nonlinear processes
 
constrained generalized total
 
constrained parameter estimation
 
equality constraints
 
expectation-maximization procedure
 
explicit dependences
 
identification procedure
 
illustrative examples
 
local parameter estimation
 
main advantage
 
multiple local models
 
nonlinear system
 
parameter estimation process
 
partition space
 
partitioning process
 
proper integration
 
proposed concepts
 
Quantitative knowledge
 
quantitative process knowledge
 
real measurement data
 

Christoph Hametner