Measurement problems arising from the use of a recursive algorithm for model identification of electrical systems

The use of parameter estimation techniques in practical applications requires accurate analysis of the associated measurement and computation problems. With reference to an already proposed model identification procedure, the authors deal with the experimental tests carried out in order to highlight problems and to find the most appropriate solutions. In particular, a synchronization method is described, and some suggestions concerning the optimal working conditions of all the necessary devices are reported. >

[1]  H. Rake,et al.  Step response and frequency response methods , 1980, Autom..

[2]  Rolf Isermann,et al.  Practical aspects of process identification , 1979, Autom..

[3]  Alan S. Willsky,et al.  A survey of design methods for failure detection in dynamic systems , 1976, Autom..

[4]  Y. D. Landau,et al.  Adaptive control: The model reference approach , 1979, IEEE Transactions on Systems, Man, and Cybernetics.

[5]  Rolf Isermann Practical Aspects of Process Identification , 1981 .

[6]  Rolf Isermann,et al.  Process fault detection based on modeling and estimation methods - A survey , 1984, Autom..

[7]  Paul M. Frank,et al.  Fault diagnosis in dynamic systems using analytical and knowledge-based redundancy: A survey and some new results , 1990, Autom..

[8]  Karl Johan Åström,et al.  BOOK REVIEW SYSTEM IDENTIFICATION , 1994, Econometric Theory.

[9]  I. Landau Unbiased recursive identification using model reference adaptive techniques , 1976 .

[10]  I. Landau,et al.  Elimination of the real positivity condition in the design of parallel MRAS , 1978 .

[11]  Ing M. D'Apuzzo,et al.  Consistent structure determination of a noisy measurement system model , 1985 .

[12]  I. D. Landau,et al.  A survey of model reference adaptive techniques - Theory and applications , 1973, Autom..

[13]  M FrankPaul Fault diagnosis in dynamic systems using analytical and knowledge-based redundancya survey and some new results , 1990 .

[14]  Keith R. Godfrey,et al.  Correlation methods , 1980, Autom..