|
||||||||||
|
IEEE Conference on Decision and Control, Bahamas, December 14-17, 2004
This paper concerns control of stochastic networks using state-dependent safety-stocks. Three examples are considered: a pair of tandem queues; a simple routing model; and the Dai-Wang re-entrant line. In each case, a single policy is proposed that is independent of network load. The policy is fluid-scale optimal, and approximately average-cost optimal: The steady-state cost η satisfies the bound η_* < η < η_* + k_0 log( η_* ) , where η_* is the optimal steady-state cost. These results are based on the construction of an approximate solution to the average-cost dynamic programming equations via the one-dimensional relaxation and an associated fluid model. References:S.P. Meyn, Dynamic safety-stocks for asymptotic optimality in stochastic networks, Queueing Systems, 50, pp. 255-297 2005. (also available in pdf format) |
||||||||||
![]() |
||||||||||
|
Workshop on Large Deviations and Rare Events in Networks July 4-5, 2005 See also the three-part survey below This talk concerns a robust asymptotic hypothesis testing framework in which candidate hypotheses are characterized by moment classes. As an elementary example, suppose you are told that a sequence of scalar observations is i.i.d. with zero mean. Its variance is either 10 or 50. What test would you use to decide which hypothesis is correct? The following conclusions are obtained:
Extensions to the M-ary hypothesis testing problem are also included. References:I. Kontoyiannis, L.A. Lastras-Montaño, and S.P. Meyn, Relative Entropy and Exponential Deviation Bounds for General Markov Chains, ISIT 2005. C. Pandit, and S.P. Meyn, Worst-Case Large-Deviations Asymptotics with Application to Queueing and Information Theory. To appear, SPA, 2006. C. Pandit, J. Huang, S. Meyn, V. Veeravalli, Extremal Distributions in Information Theory and Hypothesis Testing. Proceedings of the IEEE Information Theory Workshop, San Antonio, Texas, October 24-29, 2004. C. Pandit and S.P. Meyn, Robust Measurement-Based Admission Control Using Markov's Theory of Canonical Distributions. To appear, IEEE Trans. Info. Theory (preliminary versions presented at ISIT 2003, Yokohama, Japan, June 29 - July 4, 2003; 37th Annual Conference on Information Sciences and Systems, Baltimore, Maryland, March 12--14, 2003. ) IMA 2005 Summer Program: Wireless Communications, June 22 - July 1, 2005 This presentation concerns the structure of optimal codes for stochastic channel models. An investigation of an associated dual convex program reveals that the optimal distribution in channel coding is typically discrete. Based on this observation we obtain the following theoretical conclusions, as well as new algorithms for constructing efficient channel codes:
References:J. Huang and S.P. Meyn, Characterization and Computation of Optimal Distributions for Channel Coding, IEEE Trans. Info. Theory 51(7) pp. 1--16. Published in abridged form in the proceedings of the 37th Annual Conference on Information Sciences and Systems, Baltimore, Maryland, March 12--14, 2003. (also available in pdf format) J. Huang, M. Medard, and S.P. Meyn, Error Exponents and Signal Constellation Design. IEEE International Symposium on Information Theory, June 2004. J. Huang, C. Pandit, S.P. Meyn, M. Medard, and V.\ Veeravalli Entropy, Inference, and Channel Coding. IEEE International Symposium on Information Theory, June 2004. |
||||||||||
![]() |
||||||||||
|
IMA Workshop on Control and Pricing in Communication and Power Networks
NBER/NSF Decentralization Conference, April 29 - May 1, 2005 See also October, 2005 SIAM News survey, SIAM Math model explains high prices in electricity markets These two talks concern resource allocation, pricing, and performance evaluation in electric power markets. Our ultimate goal is the integration of new approaches to dynamic control of stochastic networks, with recent results concerning the competitive market equilibrium in network industries, to obtain comprehensive approaches to model reduction and control for network-level bulk power systems. These talks describe some modest first steps:
Generalizations to complex models are also described. These conclusions have implication to other industries that require high reliability and provide critical services which are undergoing rapid deregulation. See also October, 2005 SIAM News survey, SIAM Math model explains high prices in electricity markets The main point of this research is that deregulation often fails. The question is why? In the case of electric power, market designs and analyses are typically based on very simple static models that ignore some very important aspects of the problem. In particular, when capacity becomes low relative to demand, prices will be enormous! This leaves little incentive for generators to increase capacity. This was recognized in a January 23, 2001 New York Times article by R. A. Oppel Jr, Under old-fashioned state regulation, utilities were given financial incentives - or otherwise were forced - to maintain surplus capacity, just in case it was needed. But deregulation has greatly reduced that tendency, leaving most power producers with smaller reserves, said Philip K. Verleger Jr., a California energy economist. This is part of the trend to break up vertically integrated industries and operate with leaner inventories, Mr. Verleger said. Electric utilities used to be required to hold 15 percent reserve capacity, but this inventory has been wiped out,'' he said. ''No one has the responsibility to hold extra capacity. It is when peaks in demand sap scarce supply that prices soar in deregulated power markets. References:M. Chen, I.-K. Cho and S.P. Meyn, Reliability by design in a distributed power transmission network. Submitted to Automatica Special Issue on Optimal Control Applications to Management Sciences 2005. I.-K. Cho and S.P. Meyn, Optimization and the Price of Anarchy in a Dynamic Newsboy Model. Submitted for publication. |
||||||||||
![]() |
||||||||||
|
IBM Watson Research Center, April 2004 Control-synthesis techniques are developed for demand-driven production systems. The resulting policies are time-optimal for a deterministic model, and approximately time-optimal for a stochastic model. Moreover, they are easily adapted to take into account a range of issues that arise in a realistic, dynamic environment. In particular, control synthesis techniques are developed for models in which resources are temporarily unavailable. This may be due to failure, maintenance, or an unanticipated change in demand. These conclusions are based upon the following development:
References:M. Chen, R. Dubrawski, and S.P. Meyn, Management of demand-driven production systems , IEEE Trans. Auto. Control, 49, pp. 686- 698, May 2004. Value Functions, Performance Evaluation, and Optimization in Stochastic Networks11:00am - 12:00 Monday March 1, 141 CSL This talk surveys control and performance evaluation techniques for stochastic workload models. A controlled Brownian motion process is introduced to model workload in a particular example, and the following issues are considered:
References:M. Chen, C. Pandit, and S.P. Meyn, In Search of Sensitivity in Network Optimization. Queueing Systems, Volume 44, No. 4, pp. 313-363, 2003. S.P. Meyn, Sequencing and Routing in Multiclass Queueing Networks. Part II: Workload Relaxations. SIAM J. Control and Optimization, Vol. 42, No. 1, pp. 178-217, 2003 S.P. Meyn, Workload Models for Stochastic Networks: Value Functions and Performance Evaluation. To appear, IEEE Transactions on Automatic Control, 2005 |
||||||||||
|
31st Conference on Stochastic Processes and their Applications, Paris, July 17 - 21, 2006 LMS Durham Symposium: Markov Chains, July 25 - August 4 2003, University of Durham, UK These talks provide a survey of recent approaches to the spectral theory of Markov processes. The lectures will focus on diffusion models on finite-dimensional Euclidian space, with hypo-elliptic generator. Part I describes a framework for spectral theory based on finite approximations in a weighted L-infinty norm. It is assumed that the process is exponentially ergodic, with Lyapunov function V, and the weighting function is equal to V. Under exponential ergodicity alone, the resolvent operator admits a spectral gap in this function space. If the diffusion satisfies a stronger condition, generalizing the drift condition used by Donsker and Varadahn in their classic papers, then the resolvent may be approximated by finite-rank operators. This leads to approximations for the eigenfunctions that arise in large deviation theory for the empirical measures. The expressions obtained are extensions of the standard representations of eigenfunctions and eigenmeasures via small functions used in the Perron-Frobenius theory of positive matrices. Part II develops application of these results to eigen-function and eigen-measure expansions. Real eigenfunctions provide a decomposition of the state space into 'almost'-absorbing subsets. It is shown that the process mixes rapidly in each of these subsets prior to exiting, and that the conditional distributions of exit times are approximately exponential. These results may be viewed as an extension of the perturbation theory of Wentzell and Freidlin. References:I. Kontoyiannis and S.P. Meyn, Spectral Theory and Limit Theory for Geometrically Ergodic Markov Processes, Annals of Applied Prob., Volume 13, pp. 304-362, 2003. |
||||||||||
![]() |
||||||||||