Identification of Dynamic Systems: An Introduction with Applications

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Precise dynamic models of processes are required for many applications, ranging from control engineering to the natural sciences and economics. Frequently, such precise models cannot be derived using theoretical considerations alone. Therefore, they must be determined experimentally. This book treats the determination of dynamic models based on measurements taken at the process, which is known as system identification or process identification. Both offline and online methods are presented, i.e. methods that post-process the measured data as well as methods that provide models during the measurement. The book is theory-oriented and application-oriented and most methods covered have been used successfully in practical applications for many different processes. Illustrative examples in this book with real measured data range from hydraulic and electric actuators, machine tools, industrial robots, pumps, vehicles to combustion engines. Real experimental data is also provided on the Springer webpage, allowing readers to gather their first experience with the methods presented in this book.

Among others, the book covers the following subjects: determination of the nonparametric frequency response, (fast) Fourier transform, correlation analysis, parameter estimation with a focus on the method of Least Squares and modifications, identification of time-variant processes, identification in closed-loop, identification of continuous time processes, and subspace methods. Some methods for nonlinear system identification are also considered, such as the Extended Kalman filter and neural networks. The different methods are compared by using a real three-mass oscillator process, a model of a drive train. For many identification methods, hints for the practical implementation and application are provided. The book is intended to meet the needs of students and practicing engineers working in research and development, design and manufacturing.

Author(s): Rolf Isermann, Marco Münchhof (auth.)
Series: Advanced Textbooks in Control and Signal Processing
Edition: 1
Publisher: Springer-Verlag Berlin Heidelberg
Year: 2011

Language: English
Pages: 705
Tags: Control, Robotics, Mechatronics;Complexity;Calculus of Variations and Optimal Control, Optimization;Simulation and Modeling;Numerical and Computational Physics

Front Matter....Pages i-xxv
Introduction....Pages 1-32
Mathematical Models of Linear Dynamic Systems and Stochastic Signals....Pages 33-74
Front Matter....Pages 75-75
Spectral Analysis Methods for Periodic and Non-Periodic Signals....Pages 77-98
Frequency Response Measurement with Non-Periodic Signals....Pages 99-120
Frequency Response Measurement for Periodic Test Signals....Pages 121-145
Front Matter....Pages 147-147
Correlation Analysis with Continuous Time Models....Pages 149-178
Correlation Analysis with Discrete Time Models....Pages 179-200
Front Matter....Pages 201-201
Least Squares Parameter Estimation for Static Processes....Pages 203-221
Least Squares Parameter Estimation for Dynamic Processes....Pages 223-290
Modifications of the Least Squares Parameter Estimation....Pages 291-318
Bayes and Maximum Likelihood Methods....Pages 319-333
Parameter Estimation for Time-Variant Processes....Pages 335-351
Parameter Estimation in Closed-Loop....Pages 353-366
Front Matter....Pages 367-367
Parameter Estimation for Frequency Responses....Pages 369-377
Parameter Estimation for Differential Equations and Continuous Time Processes....Pages 379-408
Subspace Methods....Pages 409-425
Front Matter....Pages 427-427
Parameter Estimation for MIMO Systems....Pages 429-450
Front Matter....Pages 451-451
Parameter Estimation for Non-Linear Systems....Pages 453-468
Iterative Optimization....Pages 469-500
Neural Networks and Lookup Tables for Identification....Pages 501-537
Front Matter....Pages 451-451
State and Parameter Estimation by Kalman Filtering....Pages 539-551
Front Matter....Pages 553-553
Numerical Aspects....Pages 555-563
Practical Aspects of Parameter Estimation....Pages 565-602
Front Matter....Pages 603-603
Application Examples....Pages 605-682
Front Matter....Pages 683-683
Mathematical Aspects....Pages 685-690
Experimental Systems....Pages 691-696
Back Matter....Pages 697-705