0
Your cart

Your cart is empty

Browse All Departments
  • All Departments
Price
  • R1,000 - R2,500 (1)
  • R2,500 - R5,000 (5)
  • -
Status
Brand

Showing 1 - 6 of 6 matches in All Departments

Identification and Stochastic Adaptive Control (Hardcover, 2nd ed.): Han-Fu Chen, Lei Guo Identification and Stochastic Adaptive Control (Hardcover, 2nd ed.)
Han-Fu Chen, Lei Guo
R3,049 Discovery Miles 30 490 Ships in 10 - 15 working days

Identifying the input-output relationship of a system or discovering the evolutionary law of a signal on the basis of observation data, and applying the constructed mathematical model to predicting, controlling or extracting other useful information constitute a problem that has been drawing a lot of attention from engineering and gaining more and more importance in econo metrics, biology, environmental science and other related areas. Over the last 30-odd years, research on this problem has rapidly developed in various areas under different terms, such as time series analysis, signal processing and system identification. Since the randomness almost always exists in real systems and in observation data, and since the random process is sometimes used to model the uncertainty in systems, it is reasonable to consider the object as a stochastic system. In some applications identification can be carried out off line, but in other cases this is impossible, for example, when the structure or the parameter of the system depends on the sample, or when the system is time-varying. In these cases we have to identify the system on line and to adjust the control in accordance with the model which is supposed to be approaching the true system during the process of identification. This is why there has been an increasing interest in identification and adaptive control for stochastic systems from both theorists and practitioners."

Stochastic Approximation and Its Applications (Hardcover, 2002 ed.): Han-Fu Chen Stochastic Approximation and Its Applications (Hardcover, 2002 ed.)
Han-Fu Chen
R3,008 Discovery Miles 30 080 Ships in 10 - 15 working days

Estimating unknown parameters based on observation data conta- ing information about the parameters is ubiquitous in diverse areas of both theory and application. For example, in system identification the unknown system coefficients are estimated on the basis of input-output data of the control system; in adaptive control systems the adaptive control gain should be defined based on observation data in such a way that the gain asymptotically tends to the optimal one; in blind ch- nel identification the channel coefficients are estimated using the output data obtained at the receiver; in signal processing the optimal weighting matrix is estimated on the basis of observations; in pattern classifi- tion the parameters specifying the partition hyperplane are searched by learning, and more examples may be added to this list. All these parameter estimation problems can be transformed to a root-seeking problem for an unknown function. To see this, let - note the observation at time i. e. , the information available about the unknown parameters at time It can be assumed that the parameter under estimation denoted by is a root of some unknown function This is not a restriction, because, for example, may serve as such a function.

Recursive Identification and Parameter Estimation (Paperback): Han-Fu Chen, Wenxiao Zhao Recursive Identification and Parameter Estimation (Paperback)
Han-Fu Chen, Wenxiao Zhao
R1,644 Discovery Miles 16 440 Ships in 12 - 17 working days

Recursive Identification and Parameter Estimation describes a recursive approach to solving system identification and parameter estimation problems arising from diverse areas. Supplying rigorous theoretical analysis, it presents the material and proposed algorithms in a manner that makes it easy to understand-providing readers with the modeling and identification skills required for successful theoretical research and effective application. The book begins by introducing the basic concepts of probability theory, including martingales, martingale difference sequences, Markov chains, mixing processes, and stationary processes. Next, it discusses the root-seeking problem for functions, starting with the classic RM algorithm, but with attention mainly paid to the stochastic approximation algorithms with expanding truncations (SAAWET) which serves as the basic tool for recursively solving the problems addressed in the book. The book not only identifies the results of system identification and parameter estimation, but also demonstrates how to apply the proposed approaches for addressing problems in a range of areas, including: Identification of ARMAX systems without imposing restrictive conditions Identification of typical nonlinear systems Optimal adaptive tracking Consensus of multi-agents systems Principal component analysis Distributed randomized PageRank computation This book recursively identifies autoregressive and moving average with exogenous input (ARMAX) and discusses the identification of non-linear systems. It concludes by addressing the problems arising from different areas that are solved by SAAWET. Demonstrating how to apply the proposed approaches to solve problems across a range of areas, the book is suitable for students, researchers, and engineers working in systems and control, signal processing, communication, and mathematical statistics.

Recursive Identification and Parameter Estimation (Hardcover): Han-Fu Chen, Wenxiao Zhao Recursive Identification and Parameter Estimation (Hardcover)
Han-Fu Chen, Wenxiao Zhao
R4,426 Discovery Miles 44 260 Ships in 12 - 17 working days

Recursive Identification and Parameter Estimation describes a recursive approach to solving system identification and parameter estimation problems arising from diverse areas. Supplying rigorous theoretical analysis, it presents the material and proposed algorithms in a manner that makes it easy to understand-providing readers with the modeling and identification skills required for successful theoretical research and effective application. The book begins by introducing the basic concepts of probability theory, including martingales, martingale difference sequences, Markov chains, mixing processes, and stationary processes. Next, it discusses the root-seeking problem for functions, starting with the classic RM algorithm, but with attention mainly paid to the stochastic approximation algorithms with expanding truncations (SAAWET) which serves as the basic tool for recursively solving the problems addressed in the book. The book not only identifies the results of system identification and parameter estimation, but also demonstrates how to apply the proposed approaches for addressing problems in a range of areas, including: Identification of ARMAX systems without imposing restrictive conditions Identification of typical nonlinear systems Optimal adaptive tracking Consensus of multi-agents systems Principal component analysis Distributed randomized PageRank computation This book recursively identifies autoregressive and moving average with exogenous input (ARMAX) and discusses the identification of non-linear systems. It concludes by addressing the problems arising from different areas that are solved by SAAWET. Demonstrating how to apply the proposed approaches to solve problems across a range of areas, the book is suitable for students, researchers, and engineers working in systems and control, signal processing, communication, and mathematical statistics.

Identification and Stochastic Adaptive Control (Paperback, Softcover reprint of the original 1st ed. 1991): Han-Fu Chen, Lei Guo Identification and Stochastic Adaptive Control (Paperback, Softcover reprint of the original 1st ed. 1991)
Han-Fu Chen, Lei Guo
R2,811 Discovery Miles 28 110 Ships in 10 - 15 working days

Identifying the input-output relationship of a system or discovering the evolutionary law of a signal on the basis of observation data, and applying the constructed mathematical model to predicting, controlling or extracting other useful information constitute a problem that has been drawing a lot of attention from engineering and gaining more and more importance in econo metrics, biology, environmental science and other related areas. Over the last 30-odd years, research on this problem has rapidly developed in various areas under different terms, such as time series analysis, signal processing and system identification. Since the randomness almost always exists in real systems and in observation data, and since the random process is sometimes used to model the uncertainty in systems, it is reasonable to consider the object as a stochastic system. In some applications identification can be carried out off line, but in other cases this is impossible, for example, when the structure or the parameter of the system depends on the sample, or when the system is time-varying. In these cases we have to identify the system on line and to adjust the control in accordance with the model which is supposed to be approaching the true system during the process of identification. This is why there has been an increasing interest in identification and adaptive control for stochastic systems from both theorists and practitioners."

Stochastic Approximation and Its Applications (Paperback, Softcover reprint of the original 1st ed. 2002): Han-Fu Chen Stochastic Approximation and Its Applications (Paperback, Softcover reprint of the original 1st ed. 2002)
Han-Fu Chen
R2,813 Discovery Miles 28 130 Ships in 10 - 15 working days

Estimating unknown parameters based on observation data conta- ing information about the parameters is ubiquitous in diverse areas of both theory and application. For example, in system identification the unknown system coefficients are estimated on the basis of input-output data of the control system; in adaptive control systems the adaptive control gain should be defined based on observation data in such a way that the gain asymptotically tends to the optimal one; in blind ch- nel identification the channel coefficients are estimated using the output data obtained at the receiver; in signal processing the optimal weighting matrix is estimated on the basis of observations; in pattern classifi- tion the parameters specifying the partition hyperplane are searched by learning, and more examples may be added to this list. All these parameter estimation problems can be transformed to a root-seeking problem for an unknown function. To see this, let - note the observation at time i. e. , the information available about the unknown parameters at time It can be assumed that the parameter under estimation denoted by is a root of some unknown function This is not a restriction, because, for example, may serve as such a function.

Free Delivery
Pinterest Twitter Facebook Google+
You may like...
Conversations With A Gentle Soul
Ahmed Kathrada, Sahm Venter Paperback  (3)
R190 R149 Discovery Miles 1 490
100 Mandela Moments
Kate Sidley Paperback R250 R200 Discovery Miles 2 000
Little Bird Of Auschwitz - How My Mother…
Alina Peretti, Jacques Peretti Paperback R453 R370 Discovery Miles 3 700
Light Through The Bars - Understanding…
Babychan Arackathara Paperback R30 R24 Discovery Miles 240
WTF - Capturing Zuma: A Cartoonist's…
Zapiro Paperback R295 R231 Discovery Miles 2 310
Wits University At 100 - From Excavation…
Wits Communications Paperback R390 R305 Discovery Miles 3 050
Across Boundaries - A Life In The Media…
Ton Vosloo Paperback R660 Discovery Miles 6 600
Killing Karoline - A Memoir
Sara-Jayne King Paperback  (1)
R325 R279 Discovery Miles 2 790
1 Recce: Volume 3 - Onsigbaarheid Is Ons…
Alexander Strachan Paperback R360 R309 Discovery Miles 3 090
Precarious Power - Compliance And…
Susan Booysen Paperback  (4)
R380 R297 Discovery Miles 2 970

 

Partners