Austrian Post 5.99 DPD courier 6.49 GLS courier 4.49

Modelling and Identification with Rational Orthogonal Basis Functions

Language EnglishEnglish
Book Paperback
Book Modelling and Identification with Rational Orthogonal Basis Functions Peter S.C. Heuberger
Libristo code: 01434854
Publishers Springer London Ltd, July 2011
Models of dynamical systems are of great importance in almost all fields of science and engineering... Full description
? points 488 b
206.48 včetně DPH
Low in stock at our supplier Shipping in 13-16 days
Austria Delivery to Austria

30-day return policy


You might also be interested in


TOP
Idioms and Phrasal Verbs with Answer Key Ruth Gairns / Paperback
common.buy 29.53
TOP
Complete Book of Crochet Stitch Designs Linda Schapper / Paperback
common.buy 19.58
TOP
Psychology of Totalitarianism Mattias Desmet / Hardback
common.buy 26.86
TOP
Sheets Brenna Thummler / Paperback
common.buy 15.72
History of Information Graphics Sandra Rendgen / Hardback
common.buy 56.40
Thali / Hardback
common.buy 25.68
Teaching Languages to Young Learners Lynne Cameron / Paperback
common.buy 48.91
Peppa Pig: Peppa's New Friend Peppa Pig / Board book
common.buy 7.59
Weihnachtsbusen Kiara Singer / Paperback
common.buy 13.81
COMP MODERN FARRIER - A COMPEN Thomas Brown / Paperback
common.buy 47.62
Japanese Yoko Hasegawa / Paperback
common.buy 51.48

Models of dynamical systems are of great importance in almost all fields of science and engineering and specifically in control, signal processing and information science. A model is always only an approximation of a real phenomenon so that having an approximation theory which allows for the analysis of model quality is a substantial concern. The use of rational orthogonal basis functions to represent dynamical systems and stochastic signals can provide such a theory and underpin advanced analysis and efficient modelling. It also has the potential to extend beyond these areas to deal with many problems in circuit theory, telecommunications, systems, control theory and signal processing.§Nine international experts have contributed to this work to produce thirteen chapters that can be read independently or as a comprehensive whole with a logical line of reasoning:§Construction and analysis of generalized orthogonal basis function model structure; §System Identification in a time domain setting and related issues of variance, numerics, and uncertainty bounding; §System identification in the frequency domain; §Design issues and optimal basis selection; §Transformation and realization theory. §Modelling and Identification with Rational Orthogonal Basis Functions affords a self-contained description of the development of the field over the last 15 years, furnishing researchers and practising engineers working with dynamical systems and stochastic processes with a standard reference work.Models of dynamical systems are of great importance in almost all fields of science and engineering and specifically in control, signal processing and information science. A model is always only an approximation of a real phenomenon so that having an approximation theory which allows for the analysis of model quality is a substantial concern. The use of rational orthogonal basis functions to represent dynamical systems and stochastic signals can provide such a theory and underpin advanced analysis and efficient modelling. It also has the potential to extend beyond these areas to deal with many problems in circuit theory, telecommunications, systems, control theory and signal processing.§Modelling and Identification with Rational Orthogonal Basis Functions affords a self-contained description of the development of the field over the last 15 years, furnishing researchers and practising engineers working with dynamical systems and stochastic processes with a standard reference work.Models of dynamical systems are of great importance in almost all fields of science and engineering and specifically in control, signal processing and information science. A model is always only an approximation of a real phenomenon so that having an approximation theory which allows for the analysis of model quality is a substantial concern. The use of rational orthogonal basis functions to represent dynamical systems and stochastic signals can provide such a theory and underpin advanced analysis and efficient modelling. It also has the potential to extend beyond these areas to deal with many problems in circuit theory, telecommunications, systems, control theory and signal processing.§Nine international experts have contributed to this work to produce thirteen chapters that can be read independently or as a comprehensive whole with a logical line of reasoning: Construction and analysis of generalized orthogonal basis function model structure; System Identification in a time domain setting and related issues of variance, numerics, and uncertainty bounding; System identification in the frequency domain; Design issues and optimal basis selection; Transformation and realization theory. §Modelling and Identification with Rational Orthogonal Basis Functions affords a self-contained description of the development of the field over the last 15 years, furnishing researchers and practising engineers working with dynamical systems and stochastic processes with a standard reference work.

Give this book today
It's easy
1 Add to cart and choose Deliver as present at the checkout 2 We'll send you a voucher 3 The book will arrive at the recipient's address

Login

Log in to your account. Don't have a Libristo account? Create one now!

 
mandatory
mandatory

Don’t have an account? Discover the benefits of having a Libristo account!

With a Libristo account, you'll have everything under control.

Create a Libristo account