Modélisation de la détérioration basée sur les données de surveillance conditionnelle et estimation de la durée de vie résiduelle

Size: px
Start display at page:

Download "Modélisation de la détérioration basée sur les données de surveillance conditionnelle et estimation de la durée de vie résiduelle"

Transcription

1 Modélsaon de la dééroraon basée sur les données de survellance condonnelle e esmaon de la durée de ve résduelle T. T. Le, C. Bérenguer, F. Chaelan Unv. Grenoble Alpes, GIPSA-lab, F Grenoble, France CNRS, GIPSA-lab, F Grenoble, France Journées de l Auomaque GdR MACS

2 Conex FP7 European projec: SUsanable PREdcve Manenance for manufacurng Equpmen Purpose: Developmen of new ools for predcve manenance o mprove producvy, reduce machne downmes and ncrease energy effcency. Applcaon case: Paper machne Man objecves: Deeroraon modelng Remanng Useful Lfe (RUL) esmaon SUPREME parners Predcve manenance 2

3 Problem saemen Deeroraon models Represen emporal evoluon of defecs,.e. of healh ndcaors. Healh ndcaors: unobservable Observaons: nosy condon monorng daa => Sae-space represenaon x = f ( x, ω ) : Hdden saes y = g( x, ν ) : Observaons Two ype of saes Connuous Dscree Connuous-sae modelng Dscree-sae modelng 3

4 Problem saemen Remanng Useful Lfe (RUL) Z ( ) RUL Condonal random varable: ( ) T T >, Z f f 0 Sar of operaon T f Z(): nformaon up o me ; : me o falure Unceranes assessmen: characerze he RUL by a probablsc dsrbuon RUL predcon example T f 4

5 Problem saemen Problems Co-exsence of mulple deeroraon modes n compeon Proposed soluon: Mul-branch modelng Dscree healh sae: Markov based => Mul-branch Hdden Markov model (MB-HMM) Sem-Markov based => Mul branch Hdden sem-markov model (MB-HsMM) Connuous healh sae : Jump Markov lnear sysems 5

6 Oulne Mul-branch dscree-sae model Dagnoscs and Prognoscs framework Numercal sudes Jump Markov lnear sysems Parameers learnng Healh assessmen and RUL esmaon Numercal sudy Concluson & Perspecves 6

7 Mul-branchdscree-sae models 7

8 Mul-branch dscree-sae modelng Mul-branch M deeroraon modes M branches Mode probably : Observaons: connuous Fnal sae: sysem falure Sae ranson probables are dfferen beween he branches => Dfferen deeroraon raes Assumpons π k M k= π k = Monoonc deeroraon: Lef-rgh opology Faul deecon s perfec: Inal and falure saes are non-emng saes Deeroraon modes are exclusve once naed => No branches swchng 8

9 Mul-branch dscree-sae modelng Mul-branch Hdden Markov Model Each branch ~ lef-rgh Markov chan Markovan propery Sae sojourn me: Exponenal or geomercal dsrbued May no be rue n pracce Mul-branch Hdden sem-markov Model Each branch ~ lef-rgh sem-markov chan Sem-Markov propery: relax he Markovan assumpon => allow arbrary dsrbuons for sojourn me: Gaussan, Webull, 9

10 Dagnoscs and prognoscs framework Two-phase mplemenaon: offlne & onlne 0

11 Off-lne phase Model ranng Tranng daa: Hgh-level feaures exraced from condon monorng daa Topology selecon: BIC creron Daa classfcaon => M groups Each group s used o ran a consuen branch: MB-HMM: Adapon of he Baum-Welch algorhm MB-HsMM: Adapon of he Forward-Backward procedure [Yu 2006] A prormode probables π ( λ ) /, = P = K K k = K M k k k K k s he number of ranng sequences correspondng o he mode k *[Yu06]: Praccal mplemenaon of an effcen forward-backward algorhm for an explc-duraon hdden Markov model. IEEE Transacons on Sgnal Processng, 54(5),

12 On-lne phase Dagnoss Mode deecon: ( ) kˆ = arg max P λk O Healh-sae assessmen: Verb algorhm Deermne of he bes sae sequence: Consder he las sae as he acual sae k ˆ ( ˆ ˆ ) Q = arg max P O, Q λ Q k k k 2

13 RUL esmaon One branch (HMM case) Suppose ha he sysem s followng he mode k RUL : dscree me assumpon => number of ranson seps o reach for he s me he falure sae: ( l) ( = = ) = (,,, ) RUL = P RUL l q S P q = S q S q S q = S + l N + l N + N Lef-rgh HMM: Gven he curren sae, he sysem can eher say n he same sae or jump o he nex one Recursve compuaon 3

14 RUL esmaon (con.) One branch (HMM case) A sae : A sae : A sae : RUL SN 2 () N RUL = a =... S () 2 ( N 2) N 0 ( l) ( l ) ( l ) N 2 = a( N 2)( N 2) RULN 2 + ( N 2)( N ) ULN RUL a R... SN () N = ( N ) N RUL a... ( l) ( l ) N = ( N )( N ) R N RUL a UL = a N ( l) ( l ) ( l ) = a + a( + ) + RUL RUL RUL 4

15 RUL esmaon (con.) One branch (HsMM case) Srcly lef-rgh model: RUL N = D + D j j= + : Sojourn me n saes j D j N D = D D D > D j= + D j ~ Normal dsrbuon ~ runcaed Normal dsrbuon RUL = sum of Normal dsrbuon + runcaed Normal dsrbuon Bayesan Model Averagng Take no accoun model uncerany: P( RUL O) = P( RUL λk, O) P( λk O) M k= 5

16 Numercal examples Smulaed deeroraon daa Fague Crack Growh (FCG) model o represen he evoluon of a crack deph Observaon model: Mul-mode: Two propagaon raes Crack deph s proporonal wh ( γ β ) e w b x = x + e C e x y = x + ξ C = 0.005, n =.3, σ w =.7 2 γ e = [ ] T σ ξ = 0, L = 00, π = π = γ e n Two-mode ranng daa 6

17 Numercal examples Onlne RUL esmaon (MB-HsMM model) 7

18 Numercal examples Mul-branch model vs. Average model Ams: Invesgae he advanages of he mul-branch models Mehod: Evaluae RUL esmaon resuls a dfferen mode dsances Mode dsance : proporonal o Creron: Roo mean squared error (RMSE) Resul: γ e Average model 8

19 Case sudy (MB-HsMM model): PHM08 compeon C-MAPSS: Modelng a large realsc commercal urbofan engne 2 daa se for ranng and es 28 dencal and ndependen uns Objecve: Consruc a prognosc mehod basng on ranng daa se Use o esmae he RUL of each un n es daa se Evaluaon creron: S 28 = = Where s penaly score for un : S = S S d /3 e d d /0 e d >, 0, 0 where = es real d RUL RUL *C-MAPSS: Commercal Modular Aero-Propulson Sysem Smulaon Smplfed dagram of engne smulaed n C-MAPSS 9

20 PHM2008 daa Healh ndcaor consrucon From [Le Son e al.]* Raw daa Consruced healh ndcaors - Clear endency of ndcaor emporal evoluon - Beer score han he wnners of he compeon: S = 5520 wh he Wener process based mehod S = 470 wh non-homogeneous Gamma based mehod * [Le Son e al.] Remanng useful lfe esmaon based on sochasc deeroraon models: A comparave sudy. Relably Engneerng & Sysem Safey

21 Applcaon of he MB-HsMM model Number of deeroraon modes Dfferen faul propagaon rajecores dependng on he decrease raes of he flow rae (f) and effcency (e) parameers Consder 3 modes of deeroraon: 2 modes 3 modes 4 modes Mode f< e f< e f<< e Mode 2 f > e f e f< e Mode 3 f > e f> e Faul propagaon rajecores Mode 4 Nbof branches f>> e

22 Applcaon of he MB-HsMM model Observaons model Mxure of Gaussan: K ( x) = N ( x;, Σ ) b c µ j jk jk jk k= K: number of mxure componens Topology selecon BIC creron: N = 7; K = 2 RUL esmaon resul RSE MSE = 28 d 2 = 28 = = d 2 28 = es real d RUL RUL Mehod Score RSE MSE -branch HsMM branch HsMM branch HsMM branch HsMM Wener-based mehod Gamma-based mehod

23 Mul-branchconnuous-sae models 23

24 Movaons Healh saes are connuous Sae-space represenaon Deeroraon modes n compeon => mode swchng: x y = = f ( x, ω, s ) : Hdden saes g( x, ν, s ) : Observaons : realzaon a me of dscree varable S s S ~ dscree-me Markov chan Graphcal represenaon Connuous-sae modelng Swchng sae-space model 24

25 Jump Markov Lnear Sysem Assumpon Deeroraon dynamc can be approxmaed by lnear model M deeroraon modes:,2, K, M Model formulaon x y = A x s = C x s + ω + ν where Transon probably marx π π2 K πm π2 π22 K π2m Π = M M O M π M π M 2 K π MM Inal sae dsrbuon: s ω ν x where { } ~ N 0, ~ N 0, ( Qs ) ( Rs ) ( µ Σ ) ~ N, ( s s j) π j + ( ) P( s ) π = = = Ρ = =

26 Parameers learnng problem Model parameers Incomplee daa => Expecaon-Maxmzaon algorhm: E sep: M sep: Problem: Presence of swchng dynamc Compued over all possble sequences of dscree saes => Inracable => Approxmaed EM algorhm { A, C, Q, R, µ,,, π } Θ = Σ Π 0 0 =,, M ( k ) E P ( ) ( ) ( k) log T, T, T T, Q Θ Θ = X S Y Θ Y Θ ( k ) ( k+ ) ( ) Θ = arg maxq Θ Θ Θ ( k) ( k) ( k) ( Θ Θ ) = P (, Θ ) p (,, Θ ) log P (,, Θ) S T ( ) T T T T T T T T d T Q S Y X S Y X S Y X S T 26

27 Approxmaed EM algorhm Prunng echnque Approxmaon: Calculae he sum over he mos lkely sae sequence Adapon of he Verb algorhm Do no guaranee he convergence, bu sll suffcen n several praccal cases Mos mporan: he algorhm s lnear n number of me seps. From he radonal Verb algorhm Defne he bes paral cos a me : ( X Y S ) J ( ) = max log P,,, s = S, X Then, for each sae ranson j ->, assgn an nnovaon cos : j, J, + = y C x CΣ C + R y C x 2 log CΣ +, j, C + R + log Π ( j, ) 2 ( +, j, ) ( +, j, ) ( +, j, ) 27

28 Recurson A me +: Termnaon A me T: Backrackng +, + j j, ψ, + j * T T, For = T, T 2, K,: Approxmaed Q funcon J s = max J * Denoe he mos lkely sae sequence: S T ( j, ) J ( ) = max J + J ( j ) * T ( ) ( ) = arg max J + J ( j ) = arg max J T, ( s ) * * =ψ + + => Calculaed by Rauch-Tung-Sreber(RTS) smooher s ( k) * ( ) (,, ( k) * Θ Θ p Θ ) log P (,, Θ) Q X S Y X S Y dx T T T T T T T Illusraon of paral cos calculaon 28

29 M-sep: Parameer re-esmaon Connuous par ˆ = S0, S00, Α Cˆ Qˆ Rˆ = S20, S, ' = S, ΑS K 0, ( k) T k= ˆ ˆ ' = S22, CS K 20, ( k) T k= K ( k) 0 = ˆ 0 K k= K ˆ ( k) ( k) ( k) 0 P0 µ 0 µ 0 µ 0 µ 0 K k= ˆ µ µ Σ ˆ = + ˆ ˆ ˆ ˆ ( ' ) ( ) where ' S S S S K ( k) ( ( k) ) ˆ ( k), = xˆ ˆ T x T + Σ T k= F ( S ) * T K ( k) ( ( k) ) ˆ 0, = xˆ ˆ T x T + Σ T k= F ( S ) * T K ( k) ( ( k) ) ˆ 00, = xˆ ˆ T x T + Σ T k= F ( S ) * T K ( k) ( ) 22, = y k= F ( S ) * T ( k y ) K ( k) S ( ( k) ) 20, = y xˆ * T k= F ( S ) T 29

30 M-sep: Parameer re-esmaon Dscree par Smlar o he Hdden Markov model: ˆ π ( ) = number of mes n sae a me = π =, j number of ransons from sae o sae number of ransons from sae j We oban: where ˆ π K = e K *( k ) S ( ) T = k= ( k ) ( k ) K T ( ) ( ( ) ) ' T ˆ k k ( k) Π = ξ ξ dag ξ K k = = = ( k) S ( ) ξ = e *( k ) T [ ] e = K K h elemen 30

31 JMLS based dagnoscs Mode probables Gven es daa * S, Y Denoe he bes sae sequence a me ha ends n Healh sae assessmen { y, y,, y } = K 2 ( ) M xˆ = µ ( ) xˆ, = M M Σ ˆ = µ ( ) Σ, + µ ( ) xˆ, xˆ xˆ, xˆ = = * where and are he mean value and varance gven S, x ˆ, Σ, = ( * S ), P µ ( ) = P s = = = M P ( * S ), + exp J J j, j, ( )( ) T 3

32 RUL esmaon Dscree me: RUL = mn k : x + k L x < L If fuure mode changes are deermnsc => x + k can be esmaed by mulsep ahead Kalman predcon In JMLS case: M fold ncrease n number of Gaussan dsrbuons o consder Inracable compuaon Approxmaon: merge all one-sep predced Gaussan dsrbuons no one Gaussan dsrbuon M ( + ) µ + ( ) N ( +,, Σ +, ) p x x = Mode probably updae µ ( ) = π µ ( j) + M j= j, ( ) 32

33 Numercal resuls Mode ranng Two deeroraon modes: quck-rae (mode ) and normal-rae (mode 2) Real parameers A A µ =.0 C = Q = 0.05 R = 2.5 =.002 C = Q = R = = 2 Σ = Π = π = Esmaed parameers Aˆ =.0 Cˆ =.0 Qˆ = 0.02 Rˆ = 2.59 Aˆ =.002 Cˆ = Qˆ = 0.0 Rˆ = ˆ µ = 2.9 Σ ˆ = ˆ Π = ˆ π = Convergence of he EM algorhm 33

34 Dagnoss resul Mode deecon and healh assessmen 34

35 RUL esmaon resul Tme o falure: Tf = 420[ h] Mean esmaed RUL a dfferen mes Evoluon of esmaed RUL pdf 35

36 Concluson & Perspecves Concluson Developmen of mul-branch models o deal wh he co-exsence problem of mulple deeroraon modes Dscree healh saes: MB-HMM & MB-HsMM Connuous healh saes: JMLS Proposon of mul-branch models based framework for dagnoscs & prognoscs Deecon of acual deeroraon mode Assessmen of curren healh saus Esmaon of he RUL Perspecves Exenson of he JMLS model o he non-lnear case Applcaon wh real-lfe daa 36

37 Thank you for your aenon! LE Thanh Trung PhD suden GIPSA-lab, Grenoble Insu of Technology rue des Mahémaques San Marn d Hères cedex Phone: Fax: Emal: hanh-rung.le@gpsa-lab.grenoble-np.fr

Lecture Slides for INTRODUCTION TO. Machine Learning. ETHEM ALPAYDIN The MIT Press,

Lecture Slides for INTRODUCTION TO. Machine Learning. ETHEM ALPAYDIN The MIT Press, Lecure Sldes for INTRDUCTIN T Machne Learnng ETHEM ALAYDIN The MIT ress, 2004 alpaydn@boun.edu.r hp://www.cmpe.boun.edu.r/~ehem/2ml CHATER 3: Hdden Marov Models Inroducon Modelng dependences n npu; no

More information

Outline. Probabilistic Model Learning. Probabilistic Model Learning. Probabilistic Model for Time-series Data: Hidden Markov Model

Outline. Probabilistic Model Learning. Probabilistic Model Learning. Probabilistic Model for Time-series Data: Hidden Markov Model Probablsc Model for Tme-seres Daa: Hdden Markov Model Hrosh Mamsuka Bonformacs Cener Kyoo Unversy Oulne Three Problems for probablsc models n machne learnng. Compung lkelhood 2. Learnng 3. Parsng (predcon

More information

Fall 2010 Graduate Course on Dynamic Learning

Fall 2010 Graduate Course on Dynamic Learning Fall 200 Graduae Course on Dynamc Learnng Chaper 4: Parcle Flers Sepember 27, 200 Byoung-Tak Zhang School of Compuer Scence and Engneerng & Cognve Scence and Bran Scence Programs Seoul aonal Unversy hp://b.snu.ac.kr/~bzhang/

More information

Discrete Markov Process. Introduction. Example: Balls and Urns. Stochastic Automaton. INTRODUCTION TO Machine Learning 3rd Edition

Discrete Markov Process. Introduction. Example: Balls and Urns. Stochastic Automaton. INTRODUCTION TO Machine Learning 3rd Edition EHEM ALPAYDI he MI Press, 04 Lecure Sldes for IRODUCIO O Machne Learnng 3rd Edon alpaydn@boun.edu.r hp://www.cmpe.boun.edu.r/~ehem/ml3e Sldes from exboo resource page. Slghly eded and wh addonal examples

More information

Tools for Analysis of Accelerated Life and Degradation Test Data

Tools for Analysis of Accelerated Life and Degradation Test Data Acceleraed Sress Tesng and Relably Tools for Analyss of Acceleraed Lfe and Degradaon Tes Daa Presened by: Reuel Smh Unversy of Maryland College Park smhrc@umd.edu Sepember-5-6 Sepember 28-30 206, Pensacola

More information

Introduction ( Week 1-2) Course introduction A brief introduction to molecular biology A brief introduction to sequence comparison Part I: Algorithms

Introduction ( Week 1-2) Course introduction A brief introduction to molecular biology A brief introduction to sequence comparison Part I: Algorithms Course organzaon Inroducon Wee -2) Course nroducon A bref nroducon o molecular bology A bref nroducon o sequence comparson Par I: Algorhms for Sequence Analyss Wee 3-8) Chaper -3, Models and heores» Probably

More information

WiH Wei He

WiH Wei He Sysem Idenfcaon of onlnear Sae-Space Space Baery odels WH We He wehe@calce.umd.edu Advsor: Dr. Chaochao Chen Deparmen of echancal Engneerng Unversy of aryland, College Par 1 Unversy of aryland Bacground

More information

This document is downloaded from DR-NTU, Nanyang Technological University Library, Singapore.

This document is downloaded from DR-NTU, Nanyang Technological University Library, Singapore. Ths documen s downloaded from DR-NTU, Nanyang Technologcal Unversy Lbrary, Sngapore. Tle A smplfed verb machng algorhm for word paron n vsual speech processng( Acceped verson ) Auhor(s) Foo, Say We; Yong,

More information

Performance Analysis for a Network having Standby Redundant Unit with Waiting in Repair

Performance Analysis for a Network having Standby Redundant Unit with Waiting in Repair TECHNI Inernaonal Journal of Compung Scence Communcaon Technologes VOL.5 NO. July 22 (ISSN 974-3375 erformance nalyss for a Nework havng Sby edundan Un wh ang n epar Jendra Sngh 2 abns orwal 2 Deparmen

More information

Hidden Markov Models Following a lecture by Andrew W. Moore Carnegie Mellon University

Hidden Markov Models Following a lecture by Andrew W. Moore Carnegie Mellon University Hdden Markov Models Followng a lecure by Andrew W. Moore Carnege Mellon Unversy www.cs.cmu.edu/~awm/uorals A Markov Sysem Has N saes, called s, s 2.. s N s 2 There are dscree meseps, 0,, s s 3 N 3 0 Hdden

More information

Single-loop System Reliability-Based Design & Topology Optimization (SRBDO/SRBTO): A Matrix-based System Reliability (MSR) Method

Single-loop System Reliability-Based Design & Topology Optimization (SRBDO/SRBTO): A Matrix-based System Reliability (MSR) Method 10 h US Naonal Congress on Compuaonal Mechancs Columbus, Oho 16-19, 2009 Sngle-loop Sysem Relably-Based Desgn & Topology Opmzaon (SRBDO/SRBTO): A Marx-based Sysem Relably (MSR) Mehod Tam Nguyen, Junho

More information

V.Abramov - FURTHER ANALYSIS OF CONFIDENCE INTERVALS FOR LARGE CLIENT/SERVER COMPUTER NETWORKS

V.Abramov - FURTHER ANALYSIS OF CONFIDENCE INTERVALS FOR LARGE CLIENT/SERVER COMPUTER NETWORKS R&RATA # Vol.) 8, March FURTHER AALYSIS OF COFIDECE ITERVALS FOR LARGE CLIET/SERVER COMPUTER ETWORKS Vyacheslav Abramov School of Mahemacal Scences, Monash Unversy, Buldng 8, Level 4, Clayon Campus, Wellngon

More information

Hidden Markov Models

Hidden Markov Models 11-755 Machne Learnng for Sgnal Processng Hdden Markov Models Class 15. 12 Oc 2010 1 Admnsrva HW2 due Tuesday Is everyone on he projecs page? Where are your projec proposals? 2 Recap: Wha s an HMM Probablsc

More information

On One Analytic Method of. Constructing Program Controls

On One Analytic Method of. Constructing Program Controls Appled Mahemacal Scences, Vol. 9, 05, no. 8, 409-407 HIKARI Ld, www.m-hkar.com hp://dx.do.org/0.988/ams.05.54349 On One Analyc Mehod of Consrucng Program Conrols A. N. Kvko, S. V. Chsyakov and Yu. E. Balyna

More information

Variants of Pegasos. December 11, 2009

Variants of Pegasos. December 11, 2009 Inroducon Varans of Pegasos SooWoong Ryu bshboy@sanford.edu December, 009 Youngsoo Cho yc344@sanford.edu Developng a new SVM algorhm s ongong research opc. Among many exng SVM algorhms, we wll focus on

More information

Reactive Methods to Solve the Berth AllocationProblem with Stochastic Arrival and Handling Times

Reactive Methods to Solve the Berth AllocationProblem with Stochastic Arrival and Handling Times Reacve Mehods o Solve he Berh AllocaonProblem wh Sochasc Arrval and Handlng Tmes Nsh Umang* Mchel Berlare* * TRANSP-OR, Ecole Polyechnque Fédérale de Lausanne Frs Workshop on Large Scale Opmzaon November

More information

5th International Conference on Advanced Design and Manufacturing Engineering (ICADME 2015)

5th International Conference on Advanced Design and Manufacturing Engineering (ICADME 2015) 5h Inernaonal onference on Advanced Desgn and Manufacurng Engneerng (IADME 5 The Falure Rae Expermenal Sudy of Specal N Machne Tool hunshan He, a, *, La Pan,b and Bng Hu 3,c,,3 ollege of Mechancal and

More information

Digital Speech Processing Lecture 20. The Hidden Markov Model (HMM)

Digital Speech Processing Lecture 20. The Hidden Markov Model (HMM) Dgal Speech Processng Lecure 20 The Hdden Markov Model (HMM) Lecure Oulne Theory of Markov Models dscree Markov processes hdden Markov processes Soluons o he Three Basc Problems of HMM s compuaon of observaon

More information

Filtrage particulaire et suivi multi-pistes Carine Hue Jean-Pierre Le Cadre and Patrick Pérez

Filtrage particulaire et suivi multi-pistes Carine Hue Jean-Pierre Le Cadre and Patrick Pérez Chaînes de Markov cachées e flrage parculare 2-22 anver 2002 Flrage parculare e suv mul-pses Carne Hue Jean-Perre Le Cadre and Parck Pérez Conex Applcaons: Sgnal processng: arge rackng bearngs-onl rackng

More information

CHAPTER 10: LINEAR DISCRIMINATION

CHAPTER 10: LINEAR DISCRIMINATION CHAPER : LINEAR DISCRIMINAION Dscrmnan-based Classfcaon 3 In classfcaon h K classes (C,C,, C k ) We defned dscrmnan funcon g j (), j=,,,k hen gven an es eample, e chose (predced) s class label as C f g

More information

Clustering (Bishop ch 9)

Clustering (Bishop ch 9) Cluserng (Bshop ch 9) Reference: Daa Mnng by Margare Dunham (a slde source) 1 Cluserng Cluserng s unsupervsed learnng, here are no class labels Wan o fnd groups of smlar nsances Ofen use a dsance measure

More information

Genetic Algorithm in Parameter Estimation of Nonlinear Dynamic Systems

Genetic Algorithm in Parameter Estimation of Nonlinear Dynamic Systems Genec Algorhm n Parameer Esmaon of Nonlnear Dynamc Sysems E. Paeraks manos@egnaa.ee.auh.gr V. Perds perds@vergna.eng.auh.gr Ah. ehagas kehagas@egnaa.ee.auh.gr hp://skron.conrol.ee.auh.gr/kehagas/ndex.hm

More information

John Geweke a and Gianni Amisano b a Departments of Economics and Statistics, University of Iowa, USA b European Central Bank, Frankfurt, Germany

John Geweke a and Gianni Amisano b a Departments of Economics and Statistics, University of Iowa, USA b European Central Bank, Frankfurt, Germany Herarchcal Markov Normal Mxure models wh Applcaons o Fnancal Asse Reurns Appendx: Proofs of Theorems and Condonal Poseror Dsrbuons John Geweke a and Gann Amsano b a Deparmens of Economcs and Sascs, Unversy

More information

Machine Learning Linear Regression

Machine Learning Linear Regression Machne Learnng Lnear Regresson Lesson 3 Lnear Regresson Bascs of Regresson Leas Squares esmaon Polynomal Regresson Bass funcons Regresson model Regularzed Regresson Sascal Regresson Mamum Lkelhood (ML)

More information

An introduction to Support Vector Machine

An introduction to Support Vector Machine An nroducon o Suppor Vecor Machne 報告者 : 黃立德 References: Smon Haykn, "Neural Neworks: a comprehensve foundaon, second edon, 999, Chaper 2,6 Nello Chrsann, John Shawe-Tayer, An Inroducon o Suppor Vecor Machnes,

More information

CS434a/541a: Pattern Recognition Prof. Olga Veksler. Lecture 4

CS434a/541a: Pattern Recognition Prof. Olga Veksler. Lecture 4 CS434a/54a: Paern Recognon Prof. Olga Veksler Lecure 4 Oulne Normal Random Varable Properes Dscrmnan funcons Why Normal Random Varables? Analycally racable Works well when observaon comes form a corruped

More information

Sampling Procedure of the Sum of two Binary Markov Process Realizations

Sampling Procedure of the Sum of two Binary Markov Process Realizations Samplng Procedure of he Sum of wo Bnary Markov Process Realzaons YURY GORITSKIY Dep. of Mahemacal Modelng of Moscow Power Insue (Techncal Unversy), Moscow, RUSSIA, E-mal: gorsky@yandex.ru VLADIMIR KAZAKOV

More information

Kernel-Based Bayesian Filtering for Object Tracking

Kernel-Based Bayesian Filtering for Object Tracking Kernel-Based Bayesan Flerng for Objec Trackng Bohyung Han Yng Zhu Dorn Comancu Larry Davs Dep. of Compuer Scence Real-Tme Vson and Modelng Inegraed Daa and Sysems Unversy of Maryland Semens Corporae Research

More information

( t) Outline of program: BGC1: Survival and event history analysis Oslo, March-May Recapitulation. The additive regression model

( t) Outline of program: BGC1: Survival and event history analysis Oslo, March-May Recapitulation. The additive regression model BGC1: Survval and even hsory analyss Oslo, March-May 212 Monday May 7h and Tuesday May 8h The addve regresson model Ørnulf Borgan Deparmen of Mahemacs Unversy of Oslo Oulne of program: Recapulaon Counng

More information

Dynamic Team Decision Theory. EECS 558 Project Shrutivandana Sharma and David Shuman December 10, 2005

Dynamic Team Decision Theory. EECS 558 Project Shrutivandana Sharma and David Shuman December 10, 2005 Dynamc Team Decson Theory EECS 558 Proec Shruvandana Sharma and Davd Shuman December 0, 005 Oulne Inroducon o Team Decson Theory Decomposon of he Dynamc Team Decson Problem Equvalence of Sac and Dynamc

More information

Multi-Modal User Interaction Fall 2008

Multi-Modal User Interaction Fall 2008 Mul-Modal User Ineracon Fall 2008 Lecure 2: Speech recognon I Zheng-Hua an Deparmen of Elecronc Sysems Aalborg Unversy Denmark z@es.aau.dk Mul-Modal User Ineracon II Zheng-Hua an 2008 ar I: Inroducon Inroducon

More information

Application of thermal error in machine tools based on Dynamic. Bayesian Network

Application of thermal error in machine tools based on Dynamic. Bayesian Network Inernaonal Journal of Research n Engneerng and Scence (IJRES) ISS (Onlne): 2320-9364, ISS (Prn): 2320-9356 www.res.org Volume 3 Issue 6 ǁ June 2015 ǁ PP.22-27 pplcaon of hermal error n machne ools based

More information

ESTIMATIONS OF RESIDUAL LIFETIME OF ALTERNATING PROCESS. COMMON APPROACH TO ESTIMATIONS OF RESIDUAL LIFETIME

ESTIMATIONS OF RESIDUAL LIFETIME OF ALTERNATING PROCESS. COMMON APPROACH TO ESTIMATIONS OF RESIDUAL LIFETIME Srucural relably. The heory and pracce Chumakov I.A., Chepurko V.A., Anonov A.V. ESTIMATIONS OF RESIDUAL LIFETIME OF ALTERNATING PROCESS. COMMON APPROACH TO ESTIMATIONS OF RESIDUAL LIFETIME The paper descrbes

More information

Lecture 6: Learning for Control (Generalised Linear Regression)

Lecture 6: Learning for Control (Generalised Linear Regression) Lecure 6: Learnng for Conrol (Generalsed Lnear Regresson) Conens: Lnear Mehods for Regresson Leas Squares, Gauss Markov heorem Recursve Leas Squares Lecure 6: RLSC - Prof. Sehu Vjayakumar Lnear Regresson

More information

Robust and Accurate Cancer Classification with Gene Expression Profiling

Robust and Accurate Cancer Classification with Gene Expression Profiling Robus and Accurae Cancer Classfcaon wh Gene Expresson Proflng (Compuaonal ysems Bology, 2005) Auhor: Hafeng L, Keshu Zhang, ao Jang Oulne Background LDA (lnear dscrmnan analyss) and small sample sze problem

More information

An Effective TCM-KNN Scheme for High-Speed Network Anomaly Detection

An Effective TCM-KNN Scheme for High-Speed Network Anomaly Detection Vol. 24, November,, 200 An Effecve TCM-KNN Scheme for Hgh-Speed Nework Anomaly eecon Yang L Chnese Academy of Scences, Bejng Chna, 00080 lyang@sofware.c.ac.cn Absrac. Nework anomaly deecon has been a ho

More information

Time-interval analysis of β decay. V. Horvat and J. C. Hardy

Time-interval analysis of β decay. V. Horvat and J. C. Hardy Tme-nerval analyss of β decay V. Horva and J. C. Hardy Work on he even analyss of β decay [1] connued and resuled n he developmen of a novel mehod of bea-decay me-nerval analyss ha produces hghly accurae

More information

Stochastic Repair and Replacement with a single repair channel

Stochastic Repair and Replacement with a single repair channel Sochasc Repar and Replacemen wh a sngle repar channel MOHAMMED A. HAJEEH Techno-Economcs Dvson Kuwa Insue for Scenfc Research P.O. Box 4885; Safa-309, KUWAIT mhajeeh@s.edu.w hp://www.sr.edu.w Absrac: Sysems

More information

FTCS Solution to the Heat Equation

FTCS Solution to the Heat Equation FTCS Soluon o he Hea Equaon ME 448/548 Noes Gerald Reckenwald Porland Sae Unversy Deparmen of Mechancal Engneerng gerry@pdxedu ME 448/548: FTCS Soluon o he Hea Equaon Overvew Use he forward fne d erence

More information

Dual Approximate Dynamic Programming for Large Scale Hydro Valleys

Dual Approximate Dynamic Programming for Large Scale Hydro Valleys Dual Approxmae Dynamc Programmng for Large Scale Hydro Valleys Perre Carpener and Jean-Phlppe Chanceler 1 ENSTA ParsTech and ENPC ParsTech CMM Workshop, January 2016 1 Jon work wh J.-C. Alas, suppored

More information

Hidden Markov Model for Speech Recognition. Using Modified Forward-Backward Re-estimation Algorithm

Hidden Markov Model for Speech Recognition. Using Modified Forward-Backward Re-estimation Algorithm IJCSI Inernaonal Journal of Compuer Scence Issues Vol. 9 Issue 4 o 2 July 22 ISS (Onlne): 694-84.IJCSI.org 242 Hdden Markov Model for Speech Recognon Usng Modfed Forard-Backard Re-esmaon Algorhm Balan

More information

Consider processes where state transitions are time independent, i.e., System of distinct states,

Consider processes where state transitions are time independent, i.e., System of distinct states, Dgal Speech Processng Lecure 0 he Hdden Marov Model (HMM) Lecure Oulne heory of Marov Models dscree Marov processes hdden Marov processes Soluons o he hree Basc Problems of HMM s compuaon of observaon

More information

Parametric Estimation in MMPP(2) using Time Discretization. Cláudia Nunes, António Pacheco

Parametric Estimation in MMPP(2) using Time Discretization. Cláudia Nunes, António Pacheco Paramerc Esmaon n MMPP(2) usng Tme Dscrezaon Cláuda Nunes, Anóno Pacheco Deparameno de Maemáca and Cenro de Maemáca Aplcada 1 Insuo Superor Técnco, Av. Rovsco Pas, 1096 Lsboa Codex, PORTUGAL In: J. Janssen

More information

Neural Networks-Based Time Series Prediction Using Long and Short Term Dependence in the Learning Process

Neural Networks-Based Time Series Prediction Using Long and Short Term Dependence in the Learning Process Neural Neworks-Based Tme Seres Predcon Usng Long and Shor Term Dependence n he Learnng Process J. Puchea, D. Paño and B. Kuchen, Absrac In hs work a feedforward neural neworksbased nonlnear auoregresson

More information

HIDDEN MARKOV MODELS FOR AUTOMATIC SPEECH RECOGNITION: THEORY AND APPLICATION. S J Cox

HIDDEN MARKOV MODELS FOR AUTOMATIC SPEECH RECOGNITION: THEORY AND APPLICATION. S J Cox HIDDEN MARKOV MODELS FOR AUTOMATIC SPEECH RECOGNITION: THEORY AND APPLICATION S J Cox ABSTRACT Hdden Markov modellng s currenly he mos wdely used and successful mehod for auomac recognon of spoken uerances.

More information

Part II CONTINUOUS TIME STOCHASTIC PROCESSES

Part II CONTINUOUS TIME STOCHASTIC PROCESSES Par II CONTINUOUS TIME STOCHASTIC PROCESSES 4 Chaper 4 For an advanced analyss of he properes of he Wener process, see: Revus D and Yor M: Connuous marngales and Brownan Moon Karazas I and Shreve S E:

More information

Math 128b Project. Jude Yuen

Math 128b Project. Jude Yuen Mah 8b Proec Jude Yuen . Inroducon Le { Z } be a sequence of observed ndependen vecor varables. If he elemens of Z have a on normal dsrbuon hen { Z } has a mean vecor Z and a varancecovarance marx z. Geomercally

More information

e-journal Reliability: Theory& Applications No 2 (Vol.2) Vyacheslav Abramov

e-journal Reliability: Theory& Applications No 2 (Vol.2) Vyacheslav Abramov June 7 e-ournal Relably: Theory& Applcaons No (Vol. CONFIDENCE INTERVALS ASSOCIATED WITH PERFORMANCE ANALYSIS OF SYMMETRIC LARGE CLOSED CLIENT/SERVER COMPUTER NETWORKS Absrac Vyacheslav Abramov School

More information

Lecture VI Regression

Lecture VI Regression Lecure VI Regresson (Lnear Mehods for Regresson) Conens: Lnear Mehods for Regresson Leas Squares, Gauss Markov heorem Recursve Leas Squares Lecure VI: MLSC - Dr. Sehu Vjayakumar Lnear Regresson Model M

More information

Boosted LMS-based Piecewise Linear Adaptive Filters

Boosted LMS-based Piecewise Linear Adaptive Filters 016 4h European Sgnal Processng Conference EUSIPCO) Boosed LMS-based Pecewse Lnear Adapve Flers Darush Kar and Iman Marvan Deparmen of Elecrcal and Elecroncs Engneerng Blken Unversy, Ankara, Turkey {kar,

More information

Robustness Experiments with Two Variance Components

Robustness Experiments with Two Variance Components Naonal Insue of Sandards and Technology (NIST) Informaon Technology Laboraory (ITL) Sascal Engneerng Dvson (SED) Robusness Expermens wh Two Varance Componens by Ana Ivelsse Avlés avles@ns.gov Conference

More information

A GENERAL FRAMEWORK FOR CONTINUOUS TIME POWER CONTROL IN TIME VARYING LONG TERM FADING WIRELESS NETWORKS

A GENERAL FRAMEWORK FOR CONTINUOUS TIME POWER CONTROL IN TIME VARYING LONG TERM FADING WIRELESS NETWORKS A GENERAL FRAEWORK FOR CONTINUOUS TIE POWER CONTROL IN TIE VARYING LONG TER FADING WIRELESS NETWORKS ohammed. Olama, Seddk. Djouad Charalambos D. Charalambous Elecrcal and Compuer Engneerng Deparmen Elecrcal

More information

THE PREDICTION OF COMPETITIVE ENVIRONMENT IN BUSINESS

THE PREDICTION OF COMPETITIVE ENVIRONMENT IN BUSINESS THE PREICTION OF COMPETITIVE ENVIRONMENT IN BUSINESS INTROUCTION The wo dmensonal paral dfferenal equaons of second order can be used for he smulaon of compeve envronmen n busness The arcle presens he

More information

Chapter 6 DETECTION AND ESTIMATION: Model of digital communication system. Fundamental issues in digital communications are

Chapter 6 DETECTION AND ESTIMATION: Model of digital communication system. Fundamental issues in digital communications are Chaper 6 DEECIO AD EIMAIO: Fundamenal ssues n dgal communcaons are. Deecon and. Esmaon Deecon heory: I deals wh he desgn and evaluaon of decson makng processor ha observes he receved sgnal and guesses

More information

Posterior Cramer-Rao Bounds for Multi-Target Tracking

Posterior Cramer-Rao Bounds for Multi-Target Tracking Poseror Cramer-Rao Bounds for Mul-Targe Trackng C. HUE INRA France J-P. LE CADRE, Member, IEEE IRISA/CNRS France P. PÉREZ IRISA/INRIA France ACRONYMS B1 PCRB compued under he assumpon ha he assocaons are

More information

Stochastic Maxwell Equations in Photonic Crystal Modeling and Simulations

Stochastic Maxwell Equations in Photonic Crystal Modeling and Simulations Sochasc Maxwell Equaons n Phoonc Crsal Modelng and Smulaons Hao-Mn Zhou School of Mah Georga Insue of Technolog Jon work wh: Al Adb ECE Majd Bade ECE Shu-Nee Chow Mah IPAM UCLA Aprl 14-18 2008 Parall suppored

More information

Existence and Uniqueness Results for Random Impulsive Integro-Differential Equation

Existence and Uniqueness Results for Random Impulsive Integro-Differential Equation Global Journal of Pure and Appled Mahemacs. ISSN 973-768 Volume 4, Number 6 (8), pp. 89-87 Research Inda Publcaons hp://www.rpublcaon.com Exsence and Unqueness Resuls for Random Impulsve Inegro-Dfferenal

More information

( ) [ ] MAP Decision Rule

( ) [ ] MAP Decision Rule Announcemens Bayes Decson Theory wh Normal Dsrbuons HW0 due oday HW o be assgned soon Proec descrpon posed Bomercs CSE 90 Lecure 4 CSE90, Sprng 04 CSE90, Sprng 04 Key Probables 4 ω class label X feaure

More information

Forecasting customer behaviour in a multi-service financial organisation: a profitability perspective

Forecasting customer behaviour in a multi-service financial organisation: a profitability perspective Forecasng cusomer behavour n a mul-servce fnancal organsaon: a profably perspecve A. Audzeyeva, Unversy of Leeds & Naonal Ausrala Group Europe, UK B. Summers, Unversy of Leeds, UK K.R. Schenk-Hoppé, Unversy

More information

Econ107 Applied Econometrics Topic 5: Specification: Choosing Independent Variables (Studenmund, Chapter 6)

Econ107 Applied Econometrics Topic 5: Specification: Choosing Independent Variables (Studenmund, Chapter 6) Econ7 Appled Economercs Topc 5: Specfcaon: Choosng Independen Varables (Sudenmund, Chaper 6 Specfcaon errors ha we wll deal wh: wrong ndependen varable; wrong funconal form. Ths lecure deals wh wrong ndependen

More information

PARTICLE METHODS FOR MULTIMODAL FILTERING

PARTICLE METHODS FOR MULTIMODAL FILTERING PARTICLE METHODS FOR MULTIMODAL FILTERIG Chrsan Musso ada Oudjane OERA DTIM. BP 72 92322 France. {mussooudjane}@onera.fr Absrac : We presen a quck mehod of parcle fler (or boosrap fler) wh local rejecon

More information

Cubic Bezier Homotopy Function for Solving Exponential Equations

Cubic Bezier Homotopy Function for Solving Exponential Equations Penerb Journal of Advanced Research n Compung and Applcaons ISSN (onlne: 46-97 Vol. 4, No.. Pages -8, 6 omoopy Funcon for Solvng Eponenal Equaons S. S. Raml *,,. Mohamad Nor,a, N. S. Saharzan,b and M.

More information

EP2200 Queuing theory and teletraffic systems. 3rd lecture Markov chains Birth-death process - Poisson process. Viktoria Fodor KTH EES

EP2200 Queuing theory and teletraffic systems. 3rd lecture Markov chains Birth-death process - Poisson process. Viktoria Fodor KTH EES EP Queung heory and eleraffc sysems 3rd lecure Marov chans Brh-deah rocess - Posson rocess Vora Fodor KTH EES Oulne for oday Marov rocesses Connuous-me Marov-chans Grah and marx reresenaon Transen and

More information

Advanced Machine Learning & Perception

Advanced Machine Learning & Perception Advanced Machne Learnng & Percepon Insrucor: Tony Jebara SVM Feaure & Kernel Selecon SVM Eensons Feaure Selecon (Flerng and Wrappng) SVM Feaure Selecon SVM Kernel Selecon SVM Eensons Classfcaon Feaure/Kernel

More information

A HIERARCHICAL KALMAN FILTER

A HIERARCHICAL KALMAN FILTER A HIERARCHICAL KALMAN FILER Greg aylor aylor Fry Consulng Acuares Level 8, 3 Clarence Sree Sydney NSW Ausrala Professoral Assocae, Cenre for Acuaral Sudes Faculy of Economcs and Commerce Unversy of Melbourne

More information

Multi-Fuel and Mixed-Mode IC Engine Combustion Simulation with a Detailed Chemistry Based Progress Variable Library Approach

Multi-Fuel and Mixed-Mode IC Engine Combustion Simulation with a Detailed Chemistry Based Progress Variable Library Approach Mul-Fuel and Med-Mode IC Engne Combuson Smulaon wh a Dealed Chemsry Based Progress Varable Lbrary Approach Conens Inroducon Approach Resuls Conclusons 2 Inroducon New Combuson Model- PVM-MF New Legslaons

More information

Volatility Interpolation

Volatility Interpolation Volaly Inerpolaon Prelmnary Verson March 00 Jesper Andreasen and Bran Huge Danse Mares, Copenhagen wan.daddy@danseban.com brno@danseban.com Elecronc copy avalable a: hp://ssrn.com/absrac=69497 Inro Local

More information

Let s treat the problem of the response of a system to an applied external force. Again,

Let s treat the problem of the response of a system to an applied external force. Again, Page 33 QUANTUM LNEAR RESPONSE FUNCTON Le s rea he problem of he response of a sysem o an appled exernal force. Agan, H() H f () A H + V () Exernal agen acng on nernal varable Hamlonan for equlbrum sysem

More information

Comparison of Supervised & Unsupervised Learning in βs Estimation between Stocks and the S&P500

Comparison of Supervised & Unsupervised Learning in βs Estimation between Stocks and the S&P500 Comparson of Supervsed & Unsupervsed Learnng n βs Esmaon beween Socks and he S&P500 J. We, Y. Hassd, J. Edery, A. Becker, Sanford Unversy T I. INTRODUCTION HE goal of our proec s o analyze he relaonshps

More information

Parameter Estimation for Relational Kalman Filtering

Parameter Estimation for Relational Kalman Filtering Sascal Relaonal AI: Papers from he AAAI-4 Workshop Parameer Esmaon for Relaonal Kalman Flerng Jaesk Cho School of Elecrcal and Compuer Engneerng Ulsan Naonal Insue of Scence and Technology Ulsan, Korea

More information

Pattern Classification (III) & Pattern Verification

Pattern Classification (III) & Pattern Verification Preare by Prof. Hu Jang CSE638 --4 CSE638 3. Seech & Language Processng o.5 Paern Classfcaon III & Paern Verfcaon Prof. Hu Jang Dearmen of Comuer Scence an Engneerng York Unversy Moel Parameer Esmaon Maxmum

More information

Introduction to Boosting

Introduction to Boosting Inroducon o Boosng Cynha Rudn PACM, Prnceon Unversy Advsors Ingrd Daubeches and Rober Schapre Say you have a daabase of news arcles, +, +, -, -, +, +, -, -, +, +, -, -, +, +, -, + where arcles are labeled

More information

A Deterministic Algorithm for Summarizing Asynchronous Streams over a Sliding Window

A Deterministic Algorithm for Summarizing Asynchronous Streams over a Sliding Window A Deermnsc Algorhm for Summarzng Asynchronous Sreams over a Sldng ndow Cosas Busch Rensselaer Polyechnc Insue Srkana Trhapura Iowa Sae Unversy Oulne of Talk Inroducon Algorhm Analyss Tme C Daa sream: 3

More information

New M-Estimator Objective Function. in Simultaneous Equations Model. (A Comparative Study)

New M-Estimator Objective Function. in Simultaneous Equations Model. (A Comparative Study) Inernaonal Mahemacal Forum, Vol. 8, 3, no., 7 - HIKARI Ld, www.m-hkar.com hp://dx.do.org/.988/mf.3.3488 New M-Esmaor Objecve Funcon n Smulaneous Equaons Model (A Comparave Sudy) Ahmed H. Youssef Professor

More information

Use of Kalman Filtering and Particle Filtering in a Benzene Leachate Transport Model

Use of Kalman Filtering and Particle Filtering in a Benzene Leachate Transport Model Sudy of Cvl Engneerng and Archecure (SCEA Volume Issue 3, Sepember 03 www.sepub.org/scea Use of Kalman Flerng and Parcle Flerng n a Benzene Leachae Transpor Model Shoou-Yuh Chang, and Skdar Laf * Dep.

More information

Machine Learning 2nd Edition

Machine Learning 2nd Edition INTRODUCTION TO Lecure Sldes for Machne Learnng nd Edon ETHEM ALPAYDIN, modfed by Leonardo Bobadlla and some pars from hp://www.cs.au.ac.l/~aparzn/machnelearnng/ The MIT Press, 00 alpaydn@boun.edu.r hp://www.cmpe.boun.edu.r/~ehem/mle

More information

P R = P 0. The system is shown on the next figure:

P R = P 0. The system is shown on the next figure: TPG460 Reservor Smulaon 08 page of INTRODUCTION TO RESERVOIR SIMULATION Analycal and numercal soluons of smple one-dmensonal, one-phase flow equaons As an nroducon o reservor smulaon, we wll revew he smples

More information

J i-1 i. J i i+1. Numerical integration of the diffusion equation (I) Finite difference method. Spatial Discretization. Internal nodes.

J i-1 i. J i i+1. Numerical integration of the diffusion equation (I) Finite difference method. Spatial Discretization. Internal nodes. umercal negraon of he dffuson equaon (I) Fne dfference mehod. Spaal screaon. Inernal nodes. R L V For hermal conducon le s dscree he spaal doman no small fne spans, =,,: Balance of parcles for an nernal

More information

Methodological Aspects of Assessment and Optimization of the Reliability of Electrical Installations of the Railway Self-Propelled Rolling Stock

Methodological Aspects of Assessment and Optimization of the Reliability of Electrical Installations of the Railway Self-Propelled Rolling Stock Mehodologcal Aspecs of Assessmen and Opmzaon of he Relably of Elecrcal Insallaons of he Ralway Self-Propelled Rollng Sock Mukhamedova Zyoda Gafurdanovna, Yakubov Mrall Sagaovch Tashken nsue of ralway engneerng

More information

Lecture 2 M/G/1 queues. M/G/1-queue

Lecture 2 M/G/1 queues. M/G/1-queue Lecure M/G/ queues M/G/-queue Posson arrval process Arbrary servce me dsrbuon Sngle server To deermne he sae of he sysem a me, we mus now The number of cusomers n he sysems N() Tme ha he cusomer currenly

More information

doi: info:doi/ /

doi: info:doi/ / do: nfo:do/0.063/.322393 nernaonal Conference on Power Conrol and Opmzaon, Bal, ndonesa, -3, June 2009 A COLOR FEATURES-BASED METHOD FOR OBJECT TRACKNG EMPLOYNG A PARTCLE FLTER ALGORTHM Bud Sugand, Hyoungseop

More information

Advanced Macroeconomics II: Exchange economy

Advanced Macroeconomics II: Exchange economy Advanced Macroeconomcs II: Exchange economy Krzyszof Makarsk 1 Smple deermnsc dynamc model. 1.1 Inroducon Inroducon Smple deermnsc dynamc model. Defnons of equlbrum: Arrow-Debreu Sequenal Recursve Equvalence

More information

The Analysis of the Thickness-predictive Model Based on the SVM Xiu-ming Zhao1,a,Yan Wang2,band Zhimin Bi3,c

The Analysis of the Thickness-predictive Model Based on the SVM Xiu-ming Zhao1,a,Yan Wang2,band Zhimin Bi3,c h Naonal Conference on Elecrcal, Elecroncs and Compuer Engneerng (NCEECE The Analyss of he Thcknesspredcve Model Based on he SVM Xumng Zhao,a,Yan Wang,band Zhmn B,c School of Conrol Scence and Engneerng,

More information

Approximate, Computationally Efficient Online Learning in Bayesian Spiking Neurons

Approximate, Computationally Efficient Online Learning in Bayesian Spiking Neurons Approxmae, Compuaonally Effcen Onlne Learnng n Bayesan Spkng Neurons Levn Kuhlmann levnk@unmelb.edu.au NeuroEngneerng Laboraory, Deparmen of Elecrcal & Elecronc Engneerng, The Unversy of Melbourne, and

More information

Multi-Sensor Degradation Data Analysis

Multi-Sensor Degradation Data Analysis A publcaon of CHEMICAL ENGINEERING TRANSACTIONS VOL. 33 23 Gues Edors: Enrco Zo Pero Barald Copyrgh 23 AIDIC Servz S.r.l. ISBN 978-88-9568-24-2; ISSN 974-979 The Ialan Assocaon of Chemcal Engneerng Onlne

More information

Bayesian Inference of the GARCH model with Rational Errors

Bayesian Inference of the GARCH model with Rational Errors 0 Inernaonal Conference on Economcs, Busness and Markeng Managemen IPEDR vol.9 (0) (0) IACSIT Press, Sngapore Bayesan Inference of he GARCH model wh Raonal Errors Tesuya Takash + and Tng Tng Chen Hroshma

More information

Hybrid of Chaos Optimization and Baum-Welch Algorithms for HMM Training in Continuous Speech Recognition

Hybrid of Chaos Optimization and Baum-Welch Algorithms for HMM Training in Continuous Speech Recognition Inernaonal Conference on Inellgen Conrol and Informaon Processng Augus 3-5, - Dalan, Chna Hybrd of Chaos Opmzaon and Baum-Welch Algorhms for HMM ranng n Connuous Speech Recognon Somayeh Cheshom, Saeed

More information

A Simple Discrete Approximation for the Renewal Function

A Simple Discrete Approximation for the Renewal Function Busness Sysems Research Vol. 4 No. 1 / March 2013 A Smple Dscree Approxmaon for he Renewal Funcon Alenka Brezavšček Unversy of Marbor, Faculy of Organzaonal Scences, Kranj, Slovena Absrac Background: The

More information

In the complete model, these slopes are ANALYSIS OF VARIANCE FOR THE COMPLETE TWO-WAY MODEL. (! i+1 -! i ) + [(!") i+1,q - [(!

In the complete model, these slopes are ANALYSIS OF VARIANCE FOR THE COMPLETE TWO-WAY MODEL. (! i+1 -! i ) + [(!) i+1,q - [(! ANALYSIS OF VARIANCE FOR THE COMPLETE TWO-WAY MODEL The frs hng o es n wo-way ANOVA: Is here neracon? "No neracon" means: The man effecs model would f. Ths n urn means: In he neracon plo (wh A on he horzonal

More information

EEL 6266 Power System Operation and Control. Chapter 5 Unit Commitment

EEL 6266 Power System Operation and Control. Chapter 5 Unit Commitment EEL 6266 Power Sysem Operaon and Conrol Chaper 5 Un Commmen Dynamc programmng chef advanage over enumeraon schemes s he reducon n he dmensonaly of he problem n a src prory order scheme, here are only N

More information

Computing Relevance, Similarity: The Vector Space Model

Computing Relevance, Similarity: The Vector Space Model Compung Relevance, Smlary: The Vecor Space Model Based on Larson and Hears s sldes a UC-Bereley hp://.sms.bereley.edu/courses/s0/f00/ aabase Managemen Sysems, R. Ramarshnan ocumen Vecors v ocumens are

More information

Handout # 6 (MEEN 617) Numerical Integration to Find Time Response of SDOF mechanical system Y X (2) and write EOM (1) as two first-order Eqs.

Handout # 6 (MEEN 617) Numerical Integration to Find Time Response of SDOF mechanical system Y X (2) and write EOM (1) as two first-order Eqs. Handou # 6 (MEEN 67) Numercal Inegraon o Fnd Tme Response of SDOF mechancal sysem Sae Space Mehod The EOM for a lnear sysem s M X DX K X F() () X X X X V wh nal condons, a 0 0 ; 0 Defne he followng varables,

More information

Motion of Wavepackets in Non-Hermitian. Quantum Mechanics

Motion of Wavepackets in Non-Hermitian. Quantum Mechanics Moon of Wavepaces n Non-Herman Quanum Mechancs Nmrod Moseyev Deparmen of Chemsry and Mnerva Cener for Non-lnear Physcs of Complex Sysems, Technon-Israel Insue of Technology www.echnon echnon.ac..ac.l\~nmrod

More information

Fault Diagnosis in Industrial Processes Using Principal Component Analysis and Hidden Markov Model

Fault Diagnosis in Industrial Processes Using Principal Component Analysis and Hidden Markov Model Faul Dagnoss n Indusral Processes Usng Prncpal Componen Analyss and Hdden Markov Model Shaoyuan Zhou, Janmng Zhang, and Shuqng Wang Absrac An approach combnng hdden Markov model (HMM) wh prncpal componen

More information

Online Supplement for Dynamic Multi-Technology. Production-Inventory Problem with Emissions Trading

Online Supplement for Dynamic Multi-Technology. Production-Inventory Problem with Emissions Trading Onlne Supplemen for Dynamc Mul-Technology Producon-Invenory Problem wh Emssons Tradng by We Zhang Zhongsheng Hua Yu Xa and Baofeng Huo Proof of Lemma For any ( qr ) Θ s easy o verfy ha he lnear programmng

More information

DYNAMIC ECONOMETRIC MODELS Vol. 8 Nicolaus Copernicus University Toruń 2008

DYNAMIC ECONOMETRIC MODELS Vol. 8 Nicolaus Copernicus University Toruń 2008 DYNAMIC ECONOMETRIC MODELS Vol. 8 Ncolaus Coperncus Unversy Toruń 008 Monka Kośko The Unversy of Compuer Scence and Economcs n Olszyn Mchał Perzak Ncolaus Coperncus Unversy Modelng Fnancal Tme Seres Volaly

More information

Computer Robot Vision Conference 2010

Computer Robot Vision Conference 2010 School of Compuer Scence McGll Unversy Compuer Robo Vson Conference 2010 Ioanns Rekles Fundamenal Problems In Robocs How o Go From A o B? (Pah Plannng) Wha does he world looks lke? (mappng) sense from

More information

Fitting a Conditional Linear Gaussian Distribution

Fitting a Conditional Linear Gaussian Distribution Fng a Condonal Lnear Gaussan Dsrbuon Kevn P. Murphy 28 Ocober 1998 Revsed 29 January 2003 1 Inroducon We consder he problem of fndng he maxmum lkelhood ML esmaes of he parameers of a condonal Gaussan varable

More information

Comprehensive Integrated Simulation and Optimization of LPP for EUV Lithography Devices

Comprehensive Integrated Simulation and Optimization of LPP for EUV Lithography Devices Comprehense Inegraed Smulaon and Opmaon of LPP for EUV Lhograph Deces A. Hassanen V. Su V. Moroo T. Su B. Rce (Inel) Fourh Inernaonal EUVL Smposum San Dego CA Noember 7-9 2005 Argonne Naonal Laboraor Offce

More information

Density Matrix Description of NMR BCMB/CHEM 8190

Density Matrix Description of NMR BCMB/CHEM 8190 Densy Marx Descrpon of NMR BCMBCHEM 89 Operaors n Marx Noaon If we say wh one bass se, properes vary only because of changes n he coeffcens weghng each bass se funcon x = h< Ix > - hs s how we calculae

More information