Adaptive Dynamical Polling in Wireless Networks

Size: px
Start display at page:

Download "Adaptive Dynamical Polling in Wireless Networks"

Transcription

1 BULGARIA ACADEMY OF SCIECES CYBERETICS AD IFORMATIO TECHOLOGIES Volume 8, o Sofa 28 Adaptve Dynamcal Pollng n Wreless etworks Vladmr Vshnevsky, Olga Semenova Insttute for Informaton Transmsson Problems RAS, E-mals: vshn@tp.ru olgasmnv@tp.ru Abstract: We consder a pollng system wth adaptve pollng mechansm descrbng the performance of broadband wreless W-F and WMax networks. A server vsts ueues n cyclc order dependng on the state of ueues n the prevous cycle n the followng way. A ueue s skpped (not vsted) by a server f t was empty n the prevous cycle. The skpped ueues are polled n the next cycle only. Such a pollng mechansm s referred to as adaptve one. We propose to reduce an adaptve pollng mechansm to a Bernoull pollng scheme allowng nvestgaton of the model wth the mean value analyss. Keywords: pollng system, adaptve mechansm, mean value analyss.. Introducton The models of pollng systems whose study dates from the late 95 s found wde use n the publc health systems, ar and ralway transportaton, and communcaton systems. The number of works on the pollng systems s ute large. Classfcaton of pollng systems, methods and results of ther nvestgaton are revewed n [4, 5, 6,, 3, 4]. The rapd development of the telecommuncaton networks and cellular communcatons n partcular whch s often called the wreless revoluton has made t necessary to create and nvestgate the models descrbng the features of such systems and networks []. The pollng models for nvestgatng the characterstcs of personal and local wreless networks are analyzed n [3, 7]; those ntended for the regonal wreless broadband regonal networks wth centralzed control, n [8, 9]. 3

2 The adaptve pollng mechansm wth ueue skps n a cycle adeuately descrbes the performance of broadband wreless W-F and WMax networks where the number of abonent statons s large. When base staton polls the abonent ones cyclcally t can be mpossble to poll all statons n a cycle thus some of them have to be skpped. One of the crtera to skp (not to poll) a ueue (abonent staton) n a cycle s ts emptness at the prevous pollng moment. The pollng moment of a ueue s referred to as a moment when the server (base staton) checks f there are packets n a ueue to be transmtted. Unfortunately the adaptve mechansm s hard enough to be analyzed so we use approxmaton methods and pollng schemes, e.g. a threshold pollng scheme [2]. In the present paper we show how the adaptve pollng mechansm can be reduced to a Bernoull scheme and develop an approxmate algorthm for calculaton of the mean watng tme n a ueue on the base of mean tme analyss [5]. 2. Model We consder a pollng system wth a sngle server and ueues, 2. Each ueue has nfnte buffer capacty. The server vsts and serves the ueues n a cyclc adaptve order. Such an order s not fxed but changes at the begnnng of a cycle dependng on the states of ueues n the prevous cycle. The -th ueue has ts own Posson nput of customers wth rate λ. The servce tmes n the ueue are ndependent, dentcally dstrbuted random varables wth a mean b and second moment b. Servce at each ueue s a gated one: when the server vsts a ueue t serves all, and only, customers present n the ueue at the pollng nstant. When the server vsts the ueue the setup tme s ncurred of whch the frst and second moment are denoted by g and g, =,. We refer to a ueue pollng nstant as a moment when the server has completed the setup tme and ready to serve the ueue. It s supposed that the server does not know the ueue length untl the setup tme s expred. If a ueue s empty at ts pollng moment the server wll skp (not vst) ths ueue n the next cycle. If all ueues are to be skpped the server ntates an empty cycle,.e. takes a vacaton havng an exponental dstrbuton wth mean τ and then polls all ueues startng from ueue. The occupaton rate ρ at ueue s defned as ρ =λ b, =,. The total occupaton rate s ρ = = ρ. The necessary and suffcent condton for the stablty of the pollng system under consderaton s ρ < [2]. In the next secton we develop the approxmate approach and reduce the adaptve mechansm to Bernoull pollng, []. The system under consderaton dffers from the one n [] by the fact that the setup tme s ncurred only f a ueue s vsted for servce. 4

3 3. Mean cycle length and probablty of a ueue vst Suppose that the ueue s vsted n the current cycle wth a probablty u. Suppose that the probablty does not depend on the number of the cycle. In that case the adaptve pollng mechansm can be approxmated by a Bernoull scheme whch s descrbed as follows. The set of probabltes (u,, u ), s fxed, < u, =,. The ueue s served n the cycle wth a probablty u and wth addtonal probablty the server moves to the next ueue. For the adaptve mechansm the probabltes u,, u depend on the mean cycle length C and can be calculated as u ( C = u + u e λ ), where C s the mean cycle length. The cycle length means the tme for the server to vst ueues from to excludng ueues to be skpped. Let us gve a short explanaton for the formula above. A ueue s vsted n a cycle when t was skpped n the prevous cycle (wth a probablty u ) or t was vsted n the prevous cycle (wth a probablty u ) and customers arrved to the ueue durng the ntervst tme (the tme between two successve vsts to the ueue). It follows from the euaton above that () u =, =,. C + e λ The mean ueue length s determned by the formula g ( ) u + τ u = = C =. ρ The relatons () and gve the system of euatons for calculaton of the unknown values C and u,, u. The second way to determne the probabltes u, =,, can be appled when the probablty that a ueue s empty at a pollng nstant can be calculated or estmated. Ths way s descrbed as follows. Consder the stochastc process c,, where c s the status of the ueue n -th cycle, that s c = f the ueue s skpped and c = otherwse. () The state of the process c,, depends on ts prevous state and the ueue () state n the -th cycle. If c = and the ueue s empty at the pollng nstant n () () the ( )-th cycle, we have c =. Otherwse, c =. The probablty u that the ueue s vsted by the server n an arbtrary cycle s the statonary state probablty () that c =, u = P c =, =,. () lm { } () Let π be the statonary state probablty that the ueue s empty at a pollng nstant and x () lk, lk, =,, be one step transton probabltes of the process () { c, }, 5

4 () () (3) x =, x =, () () () () (4) x = π, x = π. The probablty u can be calculated from the balance euaton () () () () u = P{ c = } x + P{ c = } x. Hence, () u = ( u) + u( π ) and from (3) we have (5) u = () π. + ote that probabltes () π, =,, are unknown and the formula (5) can only be exploted when these probabltes are calculated or estmated. 4. Mean ueue length In ths secton we derve the approxmaton for the mean ueue length at an arbtrary tme on the base of mean value analyss [5]. Let be the average tme the server spends n the ueue plus the average setup tme to ueue + under condton that the ueue + s vsted by the server, =,. We suppose that n the empty cycle the server s cyclcally vstng all the ueues and t spends the mean tme τ / n each ueue wthout customer servce. The value s defned as = ρc+ g+ u+ + vτ /, =,, where v= ( u ) = s the probablty that a cycle s empty, I { = } euals f = and euals otherwse. As n [5] we defne the ( )-perod as the sum of consecutve vst tmes startng from ueue, the mean of the perod s defned as + =, =,. The fracton of tme the system spends n the ( )-perod s gven by, n =, =,. C The mean of a resdual ( )-perod s gven by R =, =,, 2 where, s the second moment of ( )-perod length. Denote by L the mean ueue length at an arbtrary epoch of vstng the ueue, =,. The correspondng uncondtonal ueue length s defned as 6

5 L = L, =,. n, n The value L n the case = s the sum of two varables L and L. The value L s the number of customers to be served at an arbtrary epoch of vst to ueue. The value L, s the number of customers that arrved durng the servce tme of the ueue and wll be served n the next cycle. In case L = L. That s ρ L = L I{ = } + L, =,. u The correspondng uncondtonal mean ueue length L s calculated as ρ ρ (6) L = L + L = nl, n+ L, =,. u u One more euaton for the value L can be derved by Lttle s law L = λw, (7) where W s the mean watng tme n the ueue (the tme from a customer s arrval at ueue untl ts servce starts). The customer arrvng to ueue has to wat for the servce of all customers L watng before the gate on ts arrval. Further, t has to wat untl the frst pollng nstant of ueue euallng a resdual ( )-perod,.e., a resdual cycle. And wth probablty u the ueue was not vsted n the prevous cycle, so the customer has to wat one more cycle. Thus, the mean watng tme W s gven by (8) W = L b + R ( u ),, + C, =, whch, n combnaton wth Lttle s Law (7), gves us the followng relaton (9) L = L + λr + λ ( ) u C, =,., The number of customers at an arbtrary moment of the perod ( ) s the number of Posson arrvals durng the age of the perod plus the arrvals durng the cycle f the ueue was not vsted n the prevous cycle, + n, () L n, = λr + λ ( ) u C, =,., Substtutng (6) n (9) we get ρ () ( ρ) n L, n, + L = λr + λ ( ) u C, =,., u ote that euatons () and () form the system of (+) lnear euatons for L, L and R,. To calculate the unknown mean resdual ( )-perods from ths system, below we obtan dependence of R, on L and L. 7

6 The mean resdual ( )-perod lasts at least the sum of the servce tmes of the ρc customers behnd the gate f the ueue s vsted for servce. Wth probablty the mean resdual servce tme b Rb = 2b and the mean setup tme for ueue + s added gven that the ueue + s not u s skpped. Further, wth a probablty the mean resdual setup tme for the ueue + 8 R g+ + + g = 2g s generated. Fnally, the mean resdual ( )-perod euals to the mean resdual tme server spends at ueue that s, τ / f the cycle s empty (wth probablty v). Thus, we have ρc u+ g+ vτ R = ub L + Rb+ u g R, g +. +, Consder the case of the mean resdual ( 2)-perod. Wth probablty,, the, 2 value of R, euals R 2, + g + 2u+ 2 plus the servce tmes of customers present n the ueue + at an arbtrary moment when the server vsts the ueue and of customers arrvng to the ueue + durng the mean tme R, gven that the, t euals. Thus, ueue + s vsted. Wth addtonal probablty (,, 2 ) (3) + + R = R + u s + R + b u ( ) λ L,, , R = ( R ( ) + ρ u +,, u+ 2s+ 2 + L +, b+ u+ ) + R +,, =,. 2 The values R, for = 2, can be obtaned n a smlar way,, (4) R = R ( ) ρ nu,, n u+ n+ s+ n+ + L + n, b+ nu+ n ( ρ+ mu+ m) + + m= n+ + R 2 +,, =,, =,. R +,

7 Fnally, the euatons -(4) form a set of 2 lnear euatons. Solvng the euatons ()-() and -(4), we get the unknowns L, and. Then, the uncondtonal mean ueue lengths and mean delays are easly calculated from (6) and (8). 5. umercal example To llustrate the obtaned results we present numercal examples. We compare the approxmate results presented above wth smulaton results. Let us consder a symmetrc pollng system wth two ueues and exponentally dstrbuted servce tmes. In ths case we omt the subscrpt for the ueue characterstcs. The mean servce tme b =.3, mean setup tme g =.9. The approxmate results (column T ), smulaton results (column E ) and relatve error of comparson (column ) are shown n Table. We compare the mean cycle length C, probablty u that ueue s polled n the cycle and mean ueue length L. Table. A symmetrc system wth two ueues λ, ρ C, u, L T E, % T E, % τ =.5 τ =. C λ =.5, ρ =.3 u L τ =.5 τ =. C λ =, ρ =.622 u L ow let the number of ueues n the system be 5. The nput ntenstes are λ =, λ 2 = 2, λ 3 =.5, λ 4 = 6, λ 5 =.5. The mean setup tme s the same for all ueues and euals.5, the mean tme of an empty cycle τ =.5. Table 2 shows results for two values of the mean servce tme.5 and.7. Table 2. A system wth fve ueues L T E, % T E, % C, u, L b =.5, ρ =.5 b =.7, ρ =.7 C u u u u u L L L L L R, 9

8 The results obtaned for the mean servce tmes b =.7, b 2 =.5, b 3 =., b 4 =.25, b 5 =.4 are shown n Table 3. Table 3. onsymmetrc servce n ueues C, u, L T E, % C u u u u u L L L L L Concluson A pollng system wth adaptve pollng mechansm s consdered. The adaptve mechansm means that the order n whch the server vsts ueues depends on the states of ueues n the prevous cycle,.e. the server does not vst ueues that were empty at ther pollng moments n the prevous cycle. The adaptve mechansm s reduced to a Bernoull one, that s a ueue s polled n a cycle wth some probablty. The mean watng tme n each ueue s obtaned on the base of mean value analyss. R e f e r e n c e s. A l t m a n, E., U. Y e c h a l. Cyclc Bernoull Pollng. ZOR Methods and Models n Operatons Research, Vol. 38, 993, o, F r c k e r, C., M. R. J a b. Monotoncty and Stablty of Perodc Pollng Models. Queueng Systems, Vol. 5, 994, o 3, M o r a n d D., A. Z a n e l l a, G. P e r o b o n. Performance Evaluaton of Bluetooth Pollng Schemes: An Analytcal Approach. ACM Moble etworks Applcatons, Vol. 9, 24, o 2, L e v y, H., M. S d. Pollng Systems: Applcatons, Modelng and Optmzaton. IEEE Transactons and Communcatons, Vol. 38, 99, o, T a k a g H. Queueng Analyss of Pollng Models: An Update. In: Stochastc Analyss of Computer and Communcaton Systems. H. Takag Ed. Amsterdam, orth-holland, 99, T a k a g H. Queueng Analyss of Pollng Models: Progress n In: Fronters n Queueng. J. H. Dshalalow, Ed. CRC, Boca Raton, FL, 997, Vshnevsky, V. M., A. I. Lyakhov. Adaptve Features of IEEE 82. Protocol: Utlzaton, Tunng and Modfcatons. In: Proc. of 8th HP-OVUA Conf., Berln, June Vshnevsky, V. M., A. I. Lyakhov,.. Guzakov. An Adaptve Pollng Strategy for IEEE 82. PCF. In: Proc. of 7th Int. Symp. on Wreless Personal Multmeda Communcatons (WPMC 4). Vol.. Abano Terme, Italy, September 2-5, 24, 87-9.

9 9. Vshnevsky, V. M., A. I. Lyakhov,.. Guzakov. Estmaton of the Maxmum Throughput of the Wreless Access to Internet. Automaton and Remote Control, Vol. 65, 24, o 9, Vshnevsk V. M., A. I. Lyakhov, S. L. Portno I. V. Shakhnovch. Broadband Wreless Informaton Transmsson etworks. Moscow, Tekhnosfera, 25 (n Russan).. V s h n e v s k V. M., O. V. S e m e n o v a. Mathematcal Methods to Study the Pollng Systems. Automaton and Remote Control, Vol. 67, 26, o 2, Vshnevsky, V. M., D. V. Lakontsev, O. V. Semenova, S. A. Shplev. Pollng Model for Investgaton of the Broadband Wreless etworks. Automaton and Remote Control, Vol. 67, 26, o 2, V a n d e r M e R. D. On a Unfyng Theory on Pollng Models n Heavy Traffc. Managng Traffc Performance n Converged etworks. In: Proc. of 2th Internatonal Teletraffc Congress, ITC2, 27, V a n d e r M e R. D. Towards a Unfyng Theory on Branchng-Type Pollng Systems n Heavy Traffc. Queuemg Systems, Vol. 57, 27, o, Wnands, E., I. Adan, G. van Houtum. Mean Value Analyss for Pollng Systems. Queueng Systems, Vol. 54, 26, o,

Analysis of Discrete Time Queues (Section 4.6)

Analysis of Discrete Time Queues (Section 4.6) Analyss of Dscrete Tme Queues (Secton 4.6) Copyrght 2002, Sanjay K. Bose Tme axs dvded nto slots slot slot boundares Arrvals can only occur at slot boundares Servce to a job can only start at a slot boundary

More information

Equilibrium Analysis of the M/G/1 Queue

Equilibrium Analysis of the M/G/1 Queue Eulbrum nalyss of the M/G/ Queue Copyrght, Sanay K. ose. Mean nalyss usng Resdual Lfe rguments Secton 3.. nalyss usng an Imbedded Marov Chan pproach Secton 3. 3. Method of Supplementary Varables done later!

More information

Queueing Networks II Network Performance

Queueing Networks II Network Performance Queueng Networks II Network Performance Davd Tpper Assocate Professor Graduate Telecommuncatons and Networkng Program Unversty of Pttsburgh Sldes 6 Networks of Queues Many communcaton systems must be modeled

More information

TCOM 501: Networking Theory & Fundamentals. Lecture 7 February 25, 2003 Prof. Yannis A. Korilis

TCOM 501: Networking Theory & Fundamentals. Lecture 7 February 25, 2003 Prof. Yannis A. Korilis TCOM 501: Networkng Theory & Fundamentals Lecture 7 February 25, 2003 Prof. Yanns A. Korls 1 7-2 Topcs Open Jackson Networks Network Flows State-Dependent Servce Rates Networks of Transmsson Lnes Klenrock

More information

Analysis of Queuing Delay in Multimedia Gateway Call Routing

Analysis of Queuing Delay in Multimedia Gateway Call Routing Analyss of Queung Delay n Multmeda ateway Call Routng Qwe Huang UTtarcom Inc, 33 Wood Ave. outh Iseln, NJ 08830, U..A Errol Lloyd Computer Informaton cences Department, Unv. of Delaware, Newark, DE 976,

More information

Introduction to Continuous-Time Markov Chains and Queueing Theory

Introduction to Continuous-Time Markov Chains and Queueing Theory Introducton to Contnuous-Tme Markov Chans and Queueng Theory From DTMC to CTMC p p 1 p 12 1 2 k-1 k p k-1,k p k-1,k k+1 p 1 p 21 p k,k-1 p k,k-1 DTMC 1. Transtons at dscrete tme steps n=,1,2, 2. Past doesn

More information

COMPARISON OF SOME RELIABILITY CHARACTERISTICS BETWEEN REDUNDANT SYSTEMS REQUIRING SUPPORTING UNITS FOR THEIR OPERATIONS

COMPARISON OF SOME RELIABILITY CHARACTERISTICS BETWEEN REDUNDANT SYSTEMS REQUIRING SUPPORTING UNITS FOR THEIR OPERATIONS Avalable onlne at http://sck.org J. Math. Comput. Sc. 3 (3), No., 6-3 ISSN: 97-537 COMPARISON OF SOME RELIABILITY CHARACTERISTICS BETWEEN REDUNDANT SYSTEMS REQUIRING SUPPORTING UNITS FOR THEIR OPERATIONS

More information

Applied Stochastic Processes

Applied Stochastic Processes STAT455/855 Fall 23 Appled Stochastc Processes Fnal Exam, Bref Solutons 1. (15 marks) (a) (7 marks) The dstrbuton of Y s gven by ( ) ( ) y 2 1 5 P (Y y) for y 2, 3,... The above follows because each of

More information

arxiv: v1 [math.pr] 1 Aug 2014

arxiv: v1 [math.pr] 1 Aug 2014 A Pollng Model wth Smart Customers M.A.A. Boon marko@wn.tue.nl A.C.C. van Wk a.c.c.v.wk@tue.nl O.J. Boxma boxma@wn.tue.nl I.J.B.F. Adan adan@wn.tue.nl arxv:408.029v [math.pr] Aug 204 September, 200 Abstract

More information

Suggested solutions for the exam in SF2863 Systems Engineering. June 12,

Suggested solutions for the exam in SF2863 Systems Engineering. June 12, Suggested solutons for the exam n SF2863 Systems Engneerng. June 12, 2012 14.00 19.00 Examner: Per Enqvst, phone: 790 62 98 1. We can thnk of the farm as a Jackson network. The strawberry feld s modelled

More information

6. Stochastic processes (2)

6. Stochastic processes (2) 6. Stochastc processes () Lect6.ppt S-38.45 - Introducton to Teletraffc Theory Sprng 5 6. Stochastc processes () Contents Markov processes Brth-death processes 6. Stochastc processes () Markov process

More information

6. Stochastic processes (2)

6. Stochastic processes (2) Contents Markov processes Brth-death processes Lect6.ppt S-38.45 - Introducton to Teletraffc Theory Sprng 5 Markov process Consder a contnuous-tme and dscrete-state stochastc process X(t) wth state space

More information

Polling Models with Two-Stage Gated Service: Fairness versus Efficiency

Polling Models with Two-Stage Gated Service: Fairness versus Efficiency Pollng Models wth Two-Stage Gated Servce: Farness versus Effcency R.D. van der Me a,b and J.A.C. Resng c a CWI, Advanced Communcaton Networks P.O. Box 94079, 1090 GB Amsterdam, The Netherlands b Vrje Unverstet,

More information

CHAPTER 5 NUMERICAL EVALUATION OF DYNAMIC RESPONSE

CHAPTER 5 NUMERICAL EVALUATION OF DYNAMIC RESPONSE CHAPTER 5 NUMERICAL EVALUATION OF DYNAMIC RESPONSE Analytcal soluton s usually not possble when exctaton vares arbtrarly wth tme or f the system s nonlnear. Such problems can be solved by numercal tmesteppng

More information

Iterative approximation of k-limited polling systems

Iterative approximation of k-limited polling systems Queueng Syst (2007) 55: 6 78 DOI 0.007/s34-007-900-4 Iteratve approxmaton of k-lmted pollng systems M. van Vuuren E.M.M. Wnands Receved: May 2006 / Revsed: 5 December 2006 / Publshed onlne: 2 March 2007

More information

Elevator-Type Polling Systems

Elevator-Type Polling Systems Elevator-Type Pollng Systems Ruth Shoham Ur Yechal Department of Statstcs, School of Mathematcal Scence Raymond and Beverly Sackler Faculty of Exact Scences Tel Avv Unversty, Tel Avv 69978, Israel November

More information

Distributions /06. G.Serazzi 05/06 Dimensionamento degli Impianti Informatici distrib - 1

Distributions /06. G.Serazzi 05/06 Dimensionamento degli Impianti Informatici distrib - 1 Dstrbutons 8/03/06 /06 G.Serazz 05/06 Dmensonamento degl Impant Informatc dstrb - outlne densty, dstrbuton, moments unform dstrbuton Posson process, eponental dstrbuton Pareto functon densty and dstrbuton

More information

FEATURE ANALYSIS ON QUEUE LENGTH OF ASYMMETRIC TWO-QUEUE POLLING SYSTEM WITH GATED SERVICES *

FEATURE ANALYSIS ON QUEUE LENGTH OF ASYMMETRIC TWO-QUEUE POLLING SYSTEM WITH GATED SERVICES * Journal of Theoretcal and Appled Informaton Technoloy 0 th January 03. Vol. 4 No. 005-03 JATIT & LLS. All rhts reserved. ISSN: 99-845 www.att.or E-ISSN: 8-395 FEATURE ANALYSIS ON QUEUE LENGTH OF ASYMMETRIC

More information

Queuing system theory

Queuing system theory Elements of queung system: Queung system theory Every queung system conssts of three elements: An arrval process: s characterzed by the dstrbuton of tme between the arrval of successve customers, the mean

More information

Chapter 5. Solution of System of Linear Equations. Module No. 6. Solution of Inconsistent and Ill Conditioned Systems

Chapter 5. Solution of System of Linear Equations. Module No. 6. Solution of Inconsistent and Ill Conditioned Systems Numercal Analyss by Dr. Anta Pal Assstant Professor Department of Mathematcs Natonal Insttute of Technology Durgapur Durgapur-713209 emal: anta.bue@gmal.com 1 . Chapter 5 Soluton of System of Lnear Equatons

More information

Simulated Power of the Discrete Cramér-von Mises Goodness-of-Fit Tests

Simulated Power of the Discrete Cramér-von Mises Goodness-of-Fit Tests Smulated of the Cramér-von Mses Goodness-of-Ft Tests Steele, M., Chaselng, J. and 3 Hurst, C. School of Mathematcal and Physcal Scences, James Cook Unversty, Australan School of Envronmental Studes, Grffth

More information

Meenu Gupta, Man Singh & Deepak Gupta

Meenu Gupta, Man Singh & Deepak Gupta IJS, Vol., o. 3-4, (July-December 0, pp. 489-497 Serals Publcatons ISS: 097-754X THE STEADY-STATE SOLUTIOS OF ULTIPLE PARALLEL CHAELS I SERIES AD O-SERIAL ULTIPLE PARALLEL CHAELS BOTH WITH BALKIG & REEGIG

More information

EURANDOM PREPRINT SERIES October, Performance analysis of polling systems with retrials and glue periods

EURANDOM PREPRINT SERIES October, Performance analysis of polling systems with retrials and glue periods EURADOM PREPRIT SERIES 2016-012 October, 2016 Performance analyss of pollng systems wth retrals and glue perods M. Abdn, O. Boxma, B. Km, J. Km, J. Resng ISS 1389-2355 Performance analyss of pollng systems

More information

L. Donatiello & R. Nelson, Eds., Performance Evaluation of Computer. and Communication Systems, Springer-Verlag, 1993, pp

L. Donatiello & R. Nelson, Eds., Performance Evaluation of Computer. and Communication Systems, Springer-Verlag, 1993, pp L. Donatello & R. Nelson, Eds., Performance Evaluaton of Computer and Communcaton Systems, Sprnger-Verlag, 1993, pp. 630-650. ANALYSIS AND CONTROL OF POLLING SYSTEMS Ur Yechal Department of Statstcs &

More information

The optimal delay of the second test is therefore approximately 210 hours earlier than =2.

The optimal delay of the second test is therefore approximately 210 hours earlier than =2. THE IEC 61508 FORMULAS 223 The optmal delay of the second test s therefore approxmately 210 hours earler than =2. 8.4 The IEC 61508 Formulas IEC 61508-6 provdes approxmaton formulas for the PF for smple

More information

Chapter - 2. Distribution System Power Flow Analysis

Chapter - 2. Distribution System Power Flow Analysis Chapter - 2 Dstrbuton System Power Flow Analyss CHAPTER - 2 Radal Dstrbuton System Load Flow 2.1 Introducton Load flow s an mportant tool [66] for analyzng electrcal power system network performance. Load

More information

Average Decision Threshold of CA CFAR and excision CFAR Detectors in the Presence of Strong Pulse Jamming 1

Average Decision Threshold of CA CFAR and excision CFAR Detectors in the Presence of Strong Pulse Jamming 1 Average Decson hreshold of CA CFAR and excson CFAR Detectors n the Presence of Strong Pulse Jammng Ivan G. Garvanov and Chrsto A. Kabachev Insttute of Informaton echnologes Bulgaran Academy of Scences

More information

CS 798: Homework Assignment 2 (Probability)

CS 798: Homework Assignment 2 (Probability) 0 Sample space Assgned: September 30, 2009 In the IEEE 802 protocol, the congeston wndow (CW) parameter s used as follows: ntally, a termnal wats for a random tme perod (called backoff) chosen n the range

More information

Structure and Drive Paul A. Jensen Copyright July 20, 2003

Structure and Drive Paul A. Jensen Copyright July 20, 2003 Structure and Drve Paul A. Jensen Copyrght July 20, 2003 A system s made up of several operatons wth flow passng between them. The structure of the system descrbes the flow paths from nputs to outputs.

More information

A Hybrid Variational Iteration Method for Blasius Equation

A Hybrid Variational Iteration Method for Blasius Equation Avalable at http://pvamu.edu/aam Appl. Appl. Math. ISSN: 1932-9466 Vol. 10, Issue 1 (June 2015), pp. 223-229 Applcatons and Appled Mathematcs: An Internatonal Journal (AAM) A Hybrd Varatonal Iteraton Method

More information

Application of Queuing Theory to Waiting Time of Out-Patients in Hospitals.

Application of Queuing Theory to Waiting Time of Out-Patients in Hospitals. Applcaton of Queung Theory to Watng Tme of Out-Patents n Hosptals. R.A. Adeleke *, O.D. Ogunwale, and O.Y. Hald. Department of Mathematcal Scences, Unversty of Ado-Ekt, Ado-Ekt, Ekt State, Ngera. E-mal:

More information

SOJOURN TIME IN A QUEUE WITH CLUSTERED PERIODIC ARRIVALS

SOJOURN TIME IN A QUEUE WITH CLUSTERED PERIODIC ARRIVALS Journal of the Operatons Research Socety of Japan 2003, Vol. 46, No. 2, 220-241 2003 he Operatons Research Socety of Japan SOJOURN IME IN A QUEUE WIH CLUSERED PERIODIC ARRIVALS Da Inoue he oko Marne and

More information

On the Multicriteria Integer Network Flow Problem

On the Multicriteria Integer Network Flow Problem BULGARIAN ACADEMY OF SCIENCES CYBERNETICS AND INFORMATION TECHNOLOGIES Volume 5, No 2 Sofa 2005 On the Multcrtera Integer Network Flow Problem Vassl Vasslev, Marana Nkolova, Maryana Vassleva Insttute of

More information

Module 3 LOSSY IMAGE COMPRESSION SYSTEMS. Version 2 ECE IIT, Kharagpur

Module 3 LOSSY IMAGE COMPRESSION SYSTEMS. Version 2 ECE IIT, Kharagpur Module 3 LOSSY IMAGE COMPRESSION SYSTEMS Verson ECE IIT, Kharagpur Lesson 6 Theory of Quantzaton Verson ECE IIT, Kharagpur Instructonal Objectves At the end of ths lesson, the students should be able to:

More information

Numerical Heat and Mass Transfer

Numerical Heat and Mass Transfer Master degree n Mechancal Engneerng Numercal Heat and Mass Transfer 06-Fnte-Dfference Method (One-dmensonal, steady state heat conducton) Fausto Arpno f.arpno@uncas.t Introducton Why we use models and

More information

A Bayes Algorithm for the Multitask Pattern Recognition Problem Direct Approach

A Bayes Algorithm for the Multitask Pattern Recognition Problem Direct Approach A Bayes Algorthm for the Multtask Pattern Recognton Problem Drect Approach Edward Puchala Wroclaw Unversty of Technology, Char of Systems and Computer etworks, Wybrzeze Wyspanskego 7, 50-370 Wroclaw, Poland

More information

ECE559VV Project Report

ECE559VV Project Report ECE559VV Project Report (Supplementary Notes Loc Xuan Bu I. MAX SUM-RATE SCHEDULING: THE UPLINK CASE We have seen (n the presentaton that, for downlnk (broadcast channels, the strategy maxmzng the sum-rate

More information

Response time in a tandem queue with blocking, Markovian arrivals and phase-type services

Response time in a tandem queue with blocking, Markovian arrivals and phase-type services Operatons Research Letters 33 (25) 373 381 Operatons Research Letters wwwelsevercom/locate/dsw Response tme n a tandem queue wth blockng, Markovan arrvals and phase-type servces B Van Houdt a,,1, Attahru

More information

COMPLETE BUFFER SHARING IN ATM NETWORKS UNDER BURSTY ARRIVALS

COMPLETE BUFFER SHARING IN ATM NETWORKS UNDER BURSTY ARRIVALS COMPLETE BUFFER SHARING WITH PUSHOUT THRESHOLDS IN ATM NETWORKS UNDER BURSTY ARRIVALS Ozgur Aras and Tugrul Dayar Abstract. Broadband Integrated Servces Dgtal Networks (B{ISDNs) are to support multple

More information

Lecture 4: November 17, Part 1 Single Buffer Management

Lecture 4: November 17, Part 1 Single Buffer Management Lecturer: Ad Rosén Algorthms for the anagement of Networs Fall 2003-2004 Lecture 4: November 7, 2003 Scrbe: Guy Grebla Part Sngle Buffer anagement In the prevous lecture we taled about the Combned Input

More information

CS-433: Simulation and Modeling Modeling and Probability Review

CS-433: Simulation and Modeling Modeling and Probability Review CS-433: Smulaton and Modelng Modelng and Probablty Revew Exercse 1. (Probablty of Smple Events) Exercse 1.1 The owner of a camera shop receves a shpment of fve cameras from a camera manufacturer. Unknown

More information

Scheduling in polling systems

Scheduling in polling systems Schedulng n pollng systems Adam Werman, Erk M.M. Wnands, and Onno J. Boxma Abstract: We present a smple mean value analyss MVA framework for analyzng the effect of schedulng wthn queues n classcal asymmetrc

More information

M/G/1 POLLING SYSTEMS WITH RANDOM VISIT TIMES

M/G/1 POLLING SYSTEMS WITH RANDOM VISIT TIMES Probablty n the Engneerng and Informatonal Scences, 22, 2008, 81 105. Prnted n the U.S.A. DOI: 10.1017/S0269964808000065 M/G/1 POLLING SYSTEMS WITH RANDOM VISIT TIMES M. VLASIOU Georga Insttute of Technology

More information

Embedded Systems. 4. Aperiodic and Periodic Tasks

Embedded Systems. 4. Aperiodic and Periodic Tasks Embedded Systems 4. Aperodc and Perodc Tasks Lothar Thele 4-1 Contents of Course 1. Embedded Systems Introducton 2. Software Introducton 7. System Components 10. Models 3. Real-Tme Models 4. Perodc/Aperodc

More information

arxiv: v1 [math.pr] 19 Oct 2016

arxiv: v1 [math.pr] 19 Oct 2016 Performance analyss of pollng systems wth retrals and glue perods Murtuza Al Abdn, Onno Boxma, Bara Km, Jeongsm Km, Jacques Resng EURADOM and Department of Mathematcs and Computer Scence arxv:1610.05960v1

More information

Network of Markovian Queues. Lecture

Network of Markovian Queues. Lecture etwork of Markovan Queues etwork of Markovan Queues ETW09 20 etwork queue ed, G E ETW09 20 λ If the frst queue was not empty Then the tme tll the next arrval to the second queue wll be equal to the servce

More information

x = , so that calculated

x = , so that calculated Stat 4, secton Sngle Factor ANOVA notes by Tm Plachowsk n chapter 8 we conducted hypothess tests n whch we compared a sngle sample s mean or proporton to some hypotheszed value Chapter 9 expanded ths to

More information

Asymptotics of the Solution of a Boundary Value. Problem for One-Characteristic Differential. Equation Degenerating into a Parabolic Equation

Asymptotics of the Solution of a Boundary Value. Problem for One-Characteristic Differential. Equation Degenerating into a Parabolic Equation Nonl. Analyss and Dfferental Equatons, ol., 4, no., 5 - HIKARI Ltd, www.m-har.com http://dx.do.org/.988/nade.4.456 Asymptotcs of the Soluton of a Boundary alue Problem for One-Characterstc Dfferental Equaton

More information

MATH 829: Introduction to Data Mining and Analysis The EM algorithm (part 2)

MATH 829: Introduction to Data Mining and Analysis The EM algorithm (part 2) 1/16 MATH 829: Introducton to Data Mnng and Analyss The EM algorthm (part 2) Domnque Gullot Departments of Mathematcal Scences Unversty of Delaware Aprl 20, 2016 Recall 2/16 We are gven ndependent observatons

More information

Priority Queuing with Finite Buffer Size and Randomized Push-out Mechanism

Priority Queuing with Finite Buffer Size and Randomized Push-out Mechanism ICN 00 Prorty Queung wth Fnte Buffer Sze and Randomzed Push-out Mechansm Vladmr Zaborovsy, Oleg Zayats, Vladmr Muluha Polytechncal Unversty, Sant-Petersburg, Russa Arl 4, 00 Content I. Introducton II.

More information

Chapter 7 Channel Capacity and Coding

Chapter 7 Channel Capacity and Coding Wreless Informaton Transmsson System Lab. Chapter 7 Channel Capacty and Codng Insttute of Communcatons Engneerng atonal Sun Yat-sen Unversty Contents 7. Channel models and channel capacty 7.. Channel models

More information

Buffer Dumping Management for High Speed Routers

Buffer Dumping Management for High Speed Routers Buffer Dumpng Management for Hgh Speed Routers Carolne Fayet, André-Luc Beylot IT, 9 rue Charles Fourer, 90 Evry Cedex, France carolne.fayet@nt-evry.fr, Groupe des Ecoles des Télécommuncatons ESEEIHT,,

More information

On an Extension of Stochastic Approximation EM Algorithm for Incomplete Data Problems. Vahid Tadayon 1

On an Extension of Stochastic Approximation EM Algorithm for Incomplete Data Problems. Vahid Tadayon 1 On an Extenson of Stochastc Approxmaton EM Algorthm for Incomplete Data Problems Vahd Tadayon Abstract: The Stochastc Approxmaton EM (SAEM algorthm, a varant stochastc approxmaton of EM, s a versatle tool

More information

Linear Approximation with Regularization and Moving Least Squares

Linear Approximation with Regularization and Moving Least Squares Lnear Approxmaton wth Regularzaton and Movng Least Squares Igor Grešovn May 007 Revson 4.6 (Revson : March 004). 5 4 3 0.5 3 3.5 4 Contents: Lnear Fttng...4. Weghted Least Squares n Functon Approxmaton...

More information

Minimisation of the Average Response Time in a Cluster of Servers

Minimisation of the Average Response Time in a Cluster of Servers Mnmsaton of the Average Response Tme n a Cluster of Servers Valery Naumov Abstract: In ths paper, we consder task assgnment problem n a cluster of servers. We show that optmal statc task assgnment s tantamount

More information

Note 10. Modeling and Simulation of Dynamic Systems

Note 10. Modeling and Simulation of Dynamic Systems Lecture Notes of ME 475: Introducton to Mechatroncs Note 0 Modelng and Smulaton of Dynamc Systems Department of Mechancal Engneerng, Unversty Of Saskatchewan, 57 Campus Drve, Saskatoon, SK S7N 5A9, Canada

More information

EEE 241: Linear Systems

EEE 241: Linear Systems EEE : Lnear Systems Summary #: Backpropagaton BACKPROPAGATION The perceptron rule as well as the Wdrow Hoff learnng were desgned to tran sngle layer networks. They suffer from the same dsadvantage: they

More information

Application of B-Spline to Numerical Solution of a System of Singularly Perturbed Problems

Application of B-Spline to Numerical Solution of a System of Singularly Perturbed Problems Mathematca Aeterna, Vol. 1, 011, no. 06, 405 415 Applcaton of B-Splne to Numercal Soluton of a System of Sngularly Perturbed Problems Yogesh Gupta Department of Mathematcs Unted College of Engneerng &

More information

Optimal Threshold Control by the Robots of Web Search Engines with Obsolescence of Documents

Optimal Threshold Control by the Robots of Web Search Engines with Obsolescence of Documents Optmal Threshold Control by the Robots of Web Search Engnes wth Obsolescence of Documents Konstantn Avrachenkov, Alexander Dudn, Valentna Klmenok, Phlppe Nan, Olga Semenova Abstract A typcal web search

More information

Continuous Time Markov Chain

Continuous Time Markov Chain Contnuous Tme Markov Chan Hu Jn Department of Electroncs and Communcaton Engneerng Hanyang Unversty ERICA Campus Contents Contnuous tme Markov Chan (CTMC) Propertes of sojourn tme Relatons Transton probablty

More information

Linear Regression Analysis: Terminology and Notation

Linear Regression Analysis: Terminology and Notation ECON 35* -- Secton : Basc Concepts of Regresson Analyss (Page ) Lnear Regresson Analyss: Termnology and Notaton Consder the generc verson of the smple (two-varable) lnear regresson model. It s represented

More information

Markov chains. Definition of a CTMC: [2, page 381] is a continuous time, discrete value random process such that for an infinitesimal

Markov chains. Definition of a CTMC: [2, page 381] is a continuous time, discrete value random process such that for an infinitesimal Markov chans M. Veeraraghavan; March 17, 2004 [Tp: Study the MC, QT, and Lttle s law lectures together: CTMC (MC lecture), M/M/1 queue (QT lecture), Lttle s law lecture (when dervng the mean response tme

More information

EURANDOM PREPRINT SERIES January 29, Analysis and optimization of vacation and polling models with retrials

EURANDOM PREPRINT SERIES January 29, Analysis and optimization of vacation and polling models with retrials EURADOM PREPRIT SERIES 2015-004 January 29, 2015 Analyss and optmzaton of vacaton and pollng models wth retrals M. Abdn, O. Boxma, J. Resng ISS 1389-2355 Analyss and optmzaton of vacaton and pollng models

More information

Chapter 13: Multiple Regression

Chapter 13: Multiple Regression Chapter 13: Multple Regresson 13.1 Developng the multple-regresson Model The general model can be descrbed as: It smplfes for two ndependent varables: The sample ft parameter b 0, b 1, and b are used to

More information

An Upper Bound on SINR Threshold for Call Admission Control in Multiple-Class CDMA Systems with Imperfect Power-Control

An Upper Bound on SINR Threshold for Call Admission Control in Multiple-Class CDMA Systems with Imperfect Power-Control An Upper Bound on SINR Threshold for Call Admsson Control n Multple-Class CDMA Systems wth Imperfect ower-control Mahmoud El-Sayes MacDonald, Dettwler and Assocates td. (MDA) Toronto, Canada melsayes@hotmal.com

More information

VARIATION OF CONSTANT SUM CONSTRAINT FOR INTEGER MODEL WITH NON UNIFORM VARIABLES

VARIATION OF CONSTANT SUM CONSTRAINT FOR INTEGER MODEL WITH NON UNIFORM VARIABLES VARIATION OF CONSTANT SUM CONSTRAINT FOR INTEGER MODEL WITH NON UNIFORM VARIABLES BÂRZĂ, Slvu Faculty of Mathematcs-Informatcs Spru Haret Unversty barza_slvu@yahoo.com Abstract Ths paper wants to contnue

More information

Global Sensitivity. Tuesday 20 th February, 2018

Global Sensitivity. Tuesday 20 th February, 2018 Global Senstvty Tuesday 2 th February, 28 ) Local Senstvty Most senstvty analyses [] are based on local estmates of senstvty, typcally by expandng the response n a Taylor seres about some specfc values

More information

3.1 Expectation of Functions of Several Random Variables. )' be a k-dimensional discrete or continuous random vector, with joint PMF p (, E X E X1 E X

3.1 Expectation of Functions of Several Random Variables. )' be a k-dimensional discrete or continuous random vector, with joint PMF p (, E X E X1 E X Statstcs 1: Probablty Theory II 37 3 EPECTATION OF SEVERAL RANDOM VARIABLES As n Probablty Theory I, the nterest n most stuatons les not on the actual dstrbuton of a random vector, but rather on a number

More information

CS : Algorithms and Uncertainty Lecture 17 Date: October 26, 2016

CS : Algorithms and Uncertainty Lecture 17 Date: October 26, 2016 CS 29-128: Algorthms and Uncertanty Lecture 17 Date: October 26, 2016 Instructor: Nkhl Bansal Scrbe: Mchael Denns 1 Introducton In ths lecture we wll be lookng nto the secretary problem, and an nterestng

More information

Error Probability for M Signals

Error Probability for M Signals Chapter 3 rror Probablty for M Sgnals In ths chapter we dscuss the error probablty n decdng whch of M sgnals was transmtted over an arbtrary channel. We assume the sgnals are represented by a set of orthonormal

More information

Convexity preserving interpolation by splines of arbitrary degree

Convexity preserving interpolation by splines of arbitrary degree Computer Scence Journal of Moldova, vol.18, no.1(52), 2010 Convexty preservng nterpolaton by splnes of arbtrary degree Igor Verlan Abstract In the present paper an algorthm of C 2 nterpolaton of dscrete

More information

Topics in Probability Theory and Stochastic Processes Steven R. Dunbar. Classes of States and Stationary Distributions

Topics in Probability Theory and Stochastic Processes Steven R. Dunbar. Classes of States and Stationary Distributions Steven R. Dunbar Department of Mathematcs 203 Avery Hall Unversty of Nebraska-Lncoln Lncoln, NE 68588-0130 http://www.math.unl.edu Voce: 402-472-3731 Fax: 402-472-8466 Topcs n Probablty Theory and Stochastc

More information

NUMERICAL DIFFERENTIATION

NUMERICAL DIFFERENTIATION NUMERICAL DIFFERENTIATION 1 Introducton Dfferentaton s a method to compute the rate at whch a dependent output y changes wth respect to the change n the ndependent nput x. Ths rate of change s called the

More information

Power law and dimension of the maximum value for belief distribution with the max Deng entropy

Power law and dimension of the maximum value for belief distribution with the max Deng entropy Power law and dmenson of the maxmum value for belef dstrbuton wth the max Deng entropy Bngy Kang a, a College of Informaton Engneerng, Northwest A&F Unversty, Yanglng, Shaanx, 712100, Chna. Abstract Deng

More information

Resource Allocation with a Budget Constraint for Computing Independent Tasks in the Cloud

Resource Allocation with a Budget Constraint for Computing Independent Tasks in the Cloud Resource Allocaton wth a Budget Constrant for Computng Independent Tasks n the Cloud Wemng Sh and Bo Hong School of Electrcal and Computer Engneerng Georga Insttute of Technology, USA 2nd IEEE Internatonal

More information

A Simple Inventory System

A Simple Inventory System A Smple Inventory System Lawrence M. Leems and Stephen K. Park, Dscrete-Event Smulaton: A Frst Course, Prentce Hall, 2006 Hu Chen Computer Scence Vrgna State Unversty Petersburg, Vrgna February 8, 2017

More information

Durban Watson for Testing the Lack-of-Fit of Polynomial Regression Models without Replications

Durban Watson for Testing the Lack-of-Fit of Polynomial Regression Models without Replications Durban Watson for Testng the Lack-of-Ft of Polynomal Regresson Models wthout Replcatons Ruba A. Alyaf, Maha A. Omar, Abdullah A. Al-Shha ralyaf@ksu.edu.sa, maomar@ksu.edu.sa, aalshha@ksu.edu.sa Department

More information

Probability and Random Variable Primer

Probability and Random Variable Primer B. Maddah ENMG 622 Smulaton 2/22/ Probablty and Random Varable Prmer Sample space and Events Suppose that an eperment wth an uncertan outcome s performed (e.g., rollng a de). Whle the outcome of the eperment

More information

Analysis of Alternating-priority Queueing Models with (Cross) Correlated Switchover Times

Analysis of Alternating-priority Queueing Models with (Cross) Correlated Switchover Times IEEE INFOCOM 005 Analyss of Alternatng-prorty Queueng Models wth Cross Correlated Swtchover Tmes Robn Groenevelt, Etan Altman INRIA Sopha Antpols, 0690 Sopha Antpols, France Emal: {robngroenevelt, etanaltman}@sophanrafr

More information

MODELING TRAFFIC LIGHTS IN INTERSECTION USING PETRI NETS

MODELING TRAFFIC LIGHTS IN INTERSECTION USING PETRI NETS The 3 rd Internatonal Conference on Mathematcs and Statstcs (ICoMS-3) Insttut Pertanan Bogor, Indonesa, 5-6 August 28 MODELING TRAFFIC LIGHTS IN INTERSECTION USING PETRI NETS 1 Deky Adzkya and 2 Subono

More information

A Lower Bound on SINR Threshold for Call Admission Control in Multiple-Class CDMA Systems with Imperfect Power-Control

A Lower Bound on SINR Threshold for Call Admission Control in Multiple-Class CDMA Systems with Imperfect Power-Control A ower Bound on SIR Threshold for Call Admsson Control n Multple-Class CDMA Systems w Imperfect ower-control Mohamed H. Ahmed Faculty of Engneerng and Appled Scence Memoral Unversty of ewfoundland St.

More information

On the Interval Zoro Symmetric Single-step Procedure for Simultaneous Finding of Polynomial Zeros

On the Interval Zoro Symmetric Single-step Procedure for Simultaneous Finding of Polynomial Zeros Appled Mathematcal Scences, Vol. 5, 2011, no. 75, 3693-3706 On the Interval Zoro Symmetrc Sngle-step Procedure for Smultaneous Fndng of Polynomal Zeros S. F. M. Rusl, M. Mons, M. A. Hassan and W. J. Leong

More information

Uncertainty in measurements of power and energy on power networks

Uncertainty in measurements of power and energy on power networks Uncertanty n measurements of power and energy on power networks E. Manov, N. Kolev Department of Measurement and Instrumentaton, Techncal Unversty Sofa, bul. Klment Ohrdsk No8, bl., 000 Sofa, Bulgara Tel./fax:

More information

Simultaneous Optimization of Berth Allocation, Quay Crane Assignment and Quay Crane Scheduling Problems in Container Terminals

Simultaneous Optimization of Berth Allocation, Quay Crane Assignment and Quay Crane Scheduling Problems in Container Terminals Smultaneous Optmzaton of Berth Allocaton, Quay Crane Assgnment and Quay Crane Schedulng Problems n Contaner Termnals Necat Aras, Yavuz Türkoğulları, Z. Caner Taşkın, Kuban Altınel Abstract In ths work,

More information

Convergence of random processes

Convergence of random processes DS-GA 12 Lecture notes 6 Fall 216 Convergence of random processes 1 Introducton In these notes we study convergence of dscrete random processes. Ths allows to characterze phenomena such as the law of large

More information

Distributed Optimal TXOP Control for Throughput Requirements in IEEE e Wireless LAN

Distributed Optimal TXOP Control for Throughput Requirements in IEEE e Wireless LAN Dstrbuted Optmal TXOP Control for Throughput Requrements n IEEE 80.e Wreless LAN Ju Yong Lee, Ho Young Hwang, Jtae Shn, and Shahrokh Valaee KAIST Insttute for Informaton Technology Convergence, KAIST,

More information

On the relationships among queue lengths at arrival, departure, and random epochs in the discrete-time queue with D-BMAP arrivals

On the relationships among queue lengths at arrival, departure, and random epochs in the discrete-time queue with D-BMAP arrivals On the relatonshps among queue lengths at arrval departure and random epochs n the dscrete-tme queue wth D-BMAP arrvals Nam K. Km Seo H. Chang Kung C. Chae * Department of Industral Engneerng Korea Advanced

More information

Real-Time Systems. Multiprocessor scheduling. Multiprocessor scheduling. Multiprocessor scheduling

Real-Time Systems. Multiprocessor scheduling. Multiprocessor scheduling. Multiprocessor scheduling Real-Tme Systems Multprocessor schedulng Specfcaton Implementaton Verfcaton Multprocessor schedulng -- -- Global schedulng How are tasks assgned to processors? Statc assgnment The processor(s) used for

More information

(1, T) policy for a Two-echelon Inventory System with Perishableon-the-Shelf

(1, T) policy for a Two-echelon Inventory System with Perishableon-the-Shelf Journal of Optmzaton n Industral Engneerng 6 (24) 3-4 (, ) polcy for a wo-echelon Inventory ystem wth Pershableon-the-helf Items Anwar Mahmood a,, Alreza Ha b a PhD Canddate, Industral Engneerng, Department

More information

1 The Mistake Bound Model

1 The Mistake Bound Model 5-850: Advanced Algorthms CMU, Sprng 07 Lecture #: Onlne Learnng and Multplcatve Weghts February 7, 07 Lecturer: Anupam Gupta Scrbe: Bryan Lee,Albert Gu, Eugene Cho he Mstake Bound Model Suppose there

More information

A PROBABILITY-DRIVEN SEARCH ALGORITHM FOR SOLVING MULTI-OBJECTIVE OPTIMIZATION PROBLEMS

A PROBABILITY-DRIVEN SEARCH ALGORITHM FOR SOLVING MULTI-OBJECTIVE OPTIMIZATION PROBLEMS HCMC Unversty of Pedagogy Thong Nguyen Huu et al. A PROBABILITY-DRIVEN SEARCH ALGORITHM FOR SOLVING MULTI-OBJECTIVE OPTIMIZATION PROBLEMS Thong Nguyen Huu and Hao Tran Van Department of mathematcs-nformaton,

More information

Inexact Newton Methods for Inverse Eigenvalue Problems

Inexact Newton Methods for Inverse Eigenvalue Problems Inexact Newton Methods for Inverse Egenvalue Problems Zheng-jan Ba Abstract In ths paper, we survey some of the latest development n usng nexact Newton-lke methods for solvng nverse egenvalue problems.

More information

DETERMINATION OF UNCERTAINTY ASSOCIATED WITH QUANTIZATION ERRORS USING THE BAYESIAN APPROACH

DETERMINATION OF UNCERTAINTY ASSOCIATED WITH QUANTIZATION ERRORS USING THE BAYESIAN APPROACH Proceedngs, XVII IMEKO World Congress, June 7, 3, Dubrovn, Croata Proceedngs, XVII IMEKO World Congress, June 7, 3, Dubrovn, Croata TC XVII IMEKO World Congress Metrology n the 3rd Mllennum June 7, 3,

More information

Some Comments on Accelerating Convergence of Iterative Sequences Using Direct Inversion of the Iterative Subspace (DIIS)

Some Comments on Accelerating Convergence of Iterative Sequences Using Direct Inversion of the Iterative Subspace (DIIS) Some Comments on Acceleratng Convergence of Iteratve Sequences Usng Drect Inverson of the Iteratve Subspace (DIIS) C. Davd Sherrll School of Chemstry and Bochemstry Georga Insttute of Technology May 1998

More information

EVALUATION OF THE VISCO-ELASTIC PROPERTIES IN ASPHALT RUBBER AND CONVENTIONAL MIXES

EVALUATION OF THE VISCO-ELASTIC PROPERTIES IN ASPHALT RUBBER AND CONVENTIONAL MIXES EVALUATION OF THE VISCO-ELASTIC PROPERTIES IN ASPHALT RUBBER AND CONVENTIONAL MIXES Manuel J. C. Mnhoto Polytechnc Insttute of Bragança, Bragança, Portugal E-mal: mnhoto@pb.pt Paulo A. A. Perera and Jorge

More information

Method for Fast Estimation of Contact Centre Parameters Using Erlang C Model

Method for Fast Estimation of Contact Centre Parameters Using Erlang C Model 200 Thrd Internatonal onference on ommuncaton Theory, Relablty, and Qualty of Servce Method for Fast Estmaton of ontact entre Parameters Usng Erlang Model Tbor Mšuth, Erk hromý, Ivan Baroňák Department

More information

Fixed Point Analysis of Single Cell IEEE e WLANs: Uniqueness, Multistability and Throughput Differentiation

Fixed Point Analysis of Single Cell IEEE e WLANs: Uniqueness, Multistability and Throughput Differentiation Fxed Pont Analyss of Sngle Cell IEEE 82.e WLANs: Unqueness, Multstablty and Throughput Dfferentaton Venkatesh Ramayan ECE Department Indan Insttute of Scence Bangalore, Inda rvenkat@ece.sc.ernet.n Anurag

More information

Transfer Functions. Convenient representation of a linear, dynamic model. A transfer function (TF) relates one input and one output: ( ) system

Transfer Functions. Convenient representation of a linear, dynamic model. A transfer function (TF) relates one input and one output: ( ) system Transfer Functons Convenent representaton of a lnear, dynamc model. A transfer functon (TF) relates one nput and one output: x t X s y t system Y s The followng termnology s used: x y nput output forcng

More information

Foundations of Arithmetic

Foundations of Arithmetic Foundatons of Arthmetc Notaton We shall denote the sum and product of numbers n the usual notaton as a 2 + a 2 + a 3 + + a = a, a 1 a 2 a 3 a = a The notaton a b means a dvdes b,.e. ac = b where c s an

More information

A note on almost sure behavior of randomly weighted sums of φ-mixing random variables with φ-mixing weights

A note on almost sure behavior of randomly weighted sums of φ-mixing random variables with φ-mixing weights ACTA ET COMMENTATIONES UNIVERSITATIS TARTUENSIS DE MATHEMATICA Volume 7, Number 2, December 203 Avalable onlne at http://acutm.math.ut.ee A note on almost sure behavor of randomly weghted sums of φ-mxng

More information