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Lecture Notes in Control and Information Sciences 376 Editors:M.Thoma,M.Morari Yasumichi Hasegawa Approximate and Noisy Realization of Discrete-Time Dynamical Systems ABC SeriesAdvisoryBoard F.Allgöwer,P.Fleming,P.Kokotovic, A.B.Kurzhanski,H.Kwakernaak, A.Rantzer,J.N.Tsitsiklis Author Prof.YasumichiHasegawa DepartmentofElectronics GifuUniversity Gifu,501-1193 Japan E-Mail:[email protected] ISBN978-3-540-79433-2 e-ISBN978-3-540-79434-9 DOI 10.1007/978-3-540-79434-9 LectureNotesinControlandInformationSciences ISSN0170-8643 LibraryofCongressControlNumber:2008925333 (cid:2)c 2008Springer-VerlagBerlinHeidelberg This work is subject to copyright. All rights are reserved, whether the whole or part of the material is concerned, specifically the rights of translation, reprinting, reuse of illustrations, recitation, broadcasting, reproductiononmicrofilmorinanyotherway,andstorageindatabanks.Duplicationofthispublicationor partsthereofispermittedonlyundertheprovisionsoftheGermanCopyrightLawofSeptember9,1965,in itscurrentversion,andpermissionforusemustalwaysbeobtainedfromSpringer.Violationsareliablefor prosecutionundertheGermanCopyrightLaw. Theuseofgeneraldescriptivenames,registerednames,trademarks,etc.inthispublicationdoesnotimply, evenintheabsenceofaspecificstatement,thatsuchnamesareexemptfromtherelevantprotectivelawsand regulationsandthereforefreeforgeneraluse. Typeset&CoverDesign:ScientificPublishingServicesPvt.Ltd.,Chennai,India. Printedinacid-freepaper 543210 springer.com Preface This monograph deals with approximation and noise cancellation of dynamical systems which include linear and nonlinear input/output relations. It will be of special interest to researchers, engineers and graduate students who have specialized in filtering theory and system theory. From noisy or noiseless data, reductionwillbemade.Anewmethodwhichreducesnoiseormodelsinformation will be proposed. Using this method will allow model description to be treated as noise reduction or model reduction. As proof of the efficacy, this monograph providesnewresultsandtheirextensionswhichcanalsobeappliedtononlinear dynamical systems. To present the effectiveness of our method, many actual examples of noise and model information reduction will also be provided. Usingthe analysisofstate spaceapproach,themodelreductionproblemmay have become a major theme of technology after 1966 for emphasizing efficiency in the fields of control, economy, numerical analysis, and others. Noise reduction problems in the analysis of noisy dynamical systems may havebecomeamajorthemeoftechnologyafter1974foremphasizingefficiencyin control.However,thesubjectsoftheseresearcheshavebeenmainlyconcentrated in linear systems. In common model reduction of linear systems in use today, a singular value decompositionofaHankelmatrixisusedtofindareducedordermodel.However, the existence of the conditions of the reduced order model are derived without evaluationoftheresultantmodel.Inthecommontypicalnoisereductionoflinear systems in use today, the order and parameters of the systems are determined by minimizing information criterion. Approximate and noisy realization problems for input/output relations can be roughly stated as follows: A. The approximate realization problem. For any input/output map, find one mathematical model such that it is similar totheinput/outputmapandhasalowerdimensionthanthegivenminimalstate spaceofadynamicalsystemwhichhasthesamebehaviortotheinput/outputmap. B. The noisy realization problem. For any input/output mapwhich includes noises in output, find one mathemat- ical model which has the same input/output map. VI Preface Based on these parameters, we have been able to demonstrate that our new method for nonlinear dynamicalsystems,fully discussedin this monograph,are effective. It is worth remembering that the development of approximate and noisy realization has been strongly stimulated by linear system theory and is well- connected to related mathematics, such as for example, matrix theory or math- ematical programming.However,such development of nonlinear dynamical sys- tems has not occurred yet because there have been no suitable mathematical method for nonlinear systems. In this monograph, in related to the approximate quantity of noiseless data as being the noisy part of noisy data, we have identified the approximate real- izationproblemasthenoisyrealizationprobleminthe senseofhowtounifythe treatment of these problems. Our method intensively takes a positive attitude towardusingcomputers.WewillintroduceanewmethodcalledtheConstrained LeastSquaremethod.Thismethodcanbe unifiedtosolvebothanapproximate and a noisy realization problem. The proposed method seeks to find the coefficients of a linear combination without the notion of orthogonal projection, and it can be applied to both ap- proximateandnoisyrealizationproblems,namely,inthesenseofaunifiedman- ner for both approximate and noisy realizationproblems, a new method will be proposed that provides effective results. As already mentioned, common approximate and noisy realization problems have been mainly discussed in linear systems. On the other hand, there have been few developments for nonlinear systems. Our recent monograph, Realiza- tion Theory of Discrete-Time Dynamical Systems(T.MatsuoandY.Hasegawa, Lecture Notes in Control and Information Science, Vol. 296, Springer, 2003), indicated that any input/output map of nonlinear dynamical systems can be characterized by the Hankel matrix or the Input/output matrix. The mono- graph also demonstrated that obtaining a dynamical system which describes a given input/output map is equal to determining the rank of the matrix of the input/output map and the coefficients of a linear combination of column vec- tors in the matrix. This new insight leads to the ability of discussing fruitful approximate and noisy realization problems. WewishtoacknowledgeProfessorTsuyoshiMatsuo,whoestablishedthefoun- dationforrealizationtheoryofcontinuousanddiscrete-timedynamicalsystems, and who taught me much on realizationtheory for discrete-time non-linear sys- tems. He would have been an author of this monograph, but in April fifteen years ago he sadly passed away. We gratefully consider him one of the authors of this manuscript in spirit. WealsowishtothankProfessorR.E.Kalmanforhissuggestions.Hestimulated ustoresearchtheserealizationproblemsdirectlyaswellasthroughhisworks. We also thank Professor Gary B. White for making the first manuscript into a more readable and elegant one. March 2008 Yasumichi Hasegawa Contents 1 Introduction................................................ 1 2 Input/Output Map and Additive Noises .................... 7 2.1 Input Response Maps (Input/Output Maps with Causality).... 7 2.2 Analysis for Approximate and Noisy Realization.............. 9 2.3 Measurement Data with Noise ............................. 10 2.4 Analyses for Noisy Data................................... 10 2.5 Constrained Least Square Method .......................... 10 2.6 Historical Notes and Concluding Remarks ................... 12 3 Approximate and Noisy Realization of Linear Systems...... 15 3.1 Basic Facts about Linear Systems .......................... 15 3.2 Finite Dimensional Linear Systems ......................... 17 3.3 Partial Realization Theory of Linear Systems ................ 19 3.4 Approximate Realization of Linear Systems.................. 20 3.5 Noisy Realization of Linear Systems ........................ 32 3.6 Historical Notes and Concluding Remarks ................... 51 4 Approximate and Noisy Realization of So-called Linear Systems .................................................... 55 4.1 Basic Facts About So-Called Linear Systems................. 56 4.2 Finite Dimensional So-Called Linear Systems ................ 57 4.3 Partial Realization of So-Called Linear Systems .............. 60 4.4 Real-Time Partial Realization of Almost Linear Systems....... 62 4.5 Approximate Realization of So-called Linear Systems ......... 63 4.6 Noisy Realization of So-called Linear Systems ................ 75 4.7 Historical Notes and Concluding Remarks ................... 93 5 Approximate and Noisy Realization of Almost Linear Systems .................................................... 95 5.1 Basic Facts of Almost Linear Systems....................... 96 5.2 Finite dimensional Almost Linear Systems................... 97 VIII Contents 5.3 Approximate Realization of Almost Linear Systems ........... 98 5.4 Noisy Realization of Almost Linear systems.................. 106 5.5 Historical Notes and Concluding Remarks ................... 120 6 Approximate and Noisy Realization of Pseudo Linear Systems .................................................... 123 6.1 Basic Facts about Pseudo Linear Systems ................... 123 6.2 Finite Dimensional Pseudo Linear Systems .................. 125 6.3 Partial Realization of Pseudo Linear Systems ................ 128 6.4 Real-Time Partial Realization of Pseudo Linear Systems....... 129 6.5 Approximate Realization of Pseudo Linear Systems ........... 131 6.6 Noisy Realization of Pseudo Linear Systems ................. 147 6.7 Historical Notes and Concluding Remarks ................... 162 7 Approximate and Noisy Realization of Affine Dynamical Systems .................................................... 165 7.1 Basic facts about Affine Dynamical Systems ................. 165 7.2 Finite dimensional Affine Dynamical Systems ................ 167 7.3 Partial realization theory of Affine Dynamical Systems ........ 170 7.4 Approximate Realization of Affine Dynamical Systems ........ 172 7.5 Noisy Realization of Affine Dynamical Systems............... 187 7.6 Historical Notes and Concluding Remarks ................... 197 7.7 Appendix ............................................... 198 8 Approximate and Noisy Realization of Linear Representation Systems .................................... 205 8.1 Basic Facts About Linear Representation Systems ............ 205 8.2 Finite dimensional Linear Representation Systems ............ 207 8.3 Partial Realization Theory of Linear Representation Systems... 210 8.4 Approximate Realization of Linear Representation Systems .... 212 8.5 Noisy Realization of Linear Representation Systems........... 225 8.6 Historical Notes and Concluding Remarks ................... 236 References.................................................. 239 Index....................................................... 243 1 Introduction The approximate and noisy realization problems for discrete-time dynamical systems that we will state here can be stated as the following two problems (cid:2)A and (cid:2)B. The following notations are used in the problem description.I/O is the setofinput/outputmapswhicharepartialdataofgivenobservedobjects.DS is the category of mathematical models with a behavior which is an input/output relation. (cid:2)A Approximate realization problem. For any input/output map a∈I/O without noise, find one mathematical model σ ∈DS such that its behavior is approximately equal to the input/output map a and has a lower dimension than the given minimal state space of a dynamical system which has the behavior a. (cid:2)B Noisy realization problem. For any input/output map a∈I/O which includes noises in output, find one mathematical model σ ∈DS which has the same behavior as the given a. In 1960,R. E. Kalmanstated the realizationproblemfor dynamicalsystems, that is, systems with input and output mechanisms, and he also establishedthe realizationtheoryforlinearsystemsinanalgebraicsense.Basedonhisideas,we havesolvedarealizationproblemforaverywideclassofdiscrete-timenonlinear systems[MatsuoandHasegawa,2003].Inthemonograph,wederivedfundamen- tal results of realization theory for nonlinear dynamical systems. In particular, proposing some nonlinear dynamical systems, we could obtain when dynamical systems are characterized by their finite dimensionality through introducing a Hankel matrix suited for these dynamical systems. On the basis of these ideas, we will propose an approximate and noisy realization problem for discrete-time dynamical systems which include any nonlinear systems. Discrete-time dynamical systems have become ever more important synchronously with the development of computers and the establishment of Y.Hasegawa:Approxi.&NoisyReali.ofDiscrete-TimeDyn.Sys.,LNCIS376,pp.1–6,2008. springerlink.com (cid:2)c Springer-VerlagBerlinHeidelberg2008 2 1 Introduction mathematicalprogramming.Discrete-timelinearsystemshaveprovidedmaterial for many fruitful contributions, as well as for discrete-time nonlinear dynami- cal systems. R. E. Kalman developed his linear system theory by using alge- braic theory. Since then, algebraic theory has provided significant resources for the development of nonlinear dynamical system theory [Matsuo and Hasegawa, 2003] as well. Our processing methods for approximate and noisy realization of discrete-time dynamical systems are the first ones to be proposed in the case of discrete-time nonlinear systems. In the case of control system design, model reduction method is needed for simplifying models or designing a controller for higher ordered dynamical sys- tems. The usual model reduction (or aproximation) for dynamical systems are restricted to linear systems. The model reduction method can also be used for filtering of signal processing. As one of the main model reduction methods, the Hankel norm method and balanced truncation method have been proposed. Al- ternately, there is a method of minimum principle and parameter optimization under a certain quadratic performance index. Our new approach of an approximate problem for nonlinear systems can be stated by using the fact that any input/output relation with causality condi- tions can be expressedin a sort of Hankel matrix. These relations are discussed in the reference [Matsuo and Hasegawa, 2003]. On this basis, a new method of approximate realization problem for discrete-time dynamical systems includ- ing nonlinear input/output maps is possible, and it can be solved by using the Hankel matrix or Input/output matrix. Using a matrix norm for determining the dimensionof a givensystem,we also introduce new methods of determining coefficients for a linear combination of the columns of the Hankel matrix or In- put/outputmatrix.ThemethodiscalledtheConstrainedLeastSquaremethod. Thisapproximaterealizationproblemisafirsttrialforbothlinearandnonlinear dynamical systems. As a method of modelling for dynamical systems with noise, one typical methodisbasedonAIC(Akaike’sInformationCriterion).Themethodhasbeen proposed based on the idea of statistical and probabilistic theory. However, its usage is also restricted to linear systems. Forbothlinearandnonlineardynamicalsystemswithnoise,wewillconsidera noisyrealizationproblemwhilepresentingthesamemethodtosolvetheproblem ofapproximaterealization,i.e.,wewillusethematrixnormandtheConstrained Least Square method for our purpose. This noisy realization method is a first trial for nonlinear input/output relations with a noisy case. In current approximate realization of discrete-time linear systems, once a Hankel matrix expressed in z-transformation is given with its singular value decomposition,areductionmodel is constructedby provingthe existence ofthe conditionsoftherecostructedHankelmatrixfromthedecomposition.Themodel reduction method can only be executed without any evaluations which means we don’t know how much information have been taken off from the original matrix.

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This monograph deals with approximation and noise cancellation of dynamical systems which include linear and nonlinear input/output relations. It will be of special interest to researchers, engineers and graduate students who have specialized in ?ltering theory and system theory. From noisy or noise
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