REGENERATIVE-SIMULATION OF TES PROCESSES

被引:2
|
作者
ASMUSSEN, S
MELAMED, B
机构
[1] AALBORG UNIV, INST ELECTR SYST, AALBORG, DENMARK
[2] NEC USA INC, C&C RES LABS, PRINCETON, NJ USA
关键词
AUTOCORRELATED VARIATES; AUTOCORRELATION FUNCTION; AUTOCOVARIANCE FUNCTION; AUTOREGRESSIVE PROCESSES; G/GI/1; QUEUE; HARRIS RECURRENCE; LIKELIHOOD RATIOS; MARKOV PROCESSES; MONTE-CARLO SIMULATION; REGENERATIVE PROCESSES; TES PROCESSES AND METHODS;
D O I
10.1007/BF00994268
中图分类号
O29 [应用数学];
学科分类号
070104 ;
摘要
Regenerative simulation has become a familiar and established tool for simulation-based estimation. However, many applications (e.g., traffic in high-speed communications networks) call for autocorrelated stochastic models to which traditional regenerative theory is not directly applicable. Consequently, extensions of regenerative simulation to dependent time series is increasingly gaining in theoretical and practical interest, with Markov chains constituting an important case. Fortunately, a regenerative structure can be identified in Harris-recurrent Markov chains with minor modification, and this structure can be exploited for standard regenerative estimation. In this paper we focus on a versatile class of Harris-recurrent Markov chains, called TES (Transform-Expand-Sample). TES processes can generate a variety of sample paths with arbitrary marginal distributions, and autocorrelation functions with a variety of functional forms (monotone, oscillating and alternating). A practical advantage of TES processes is that they can simultaneously capture the first and second order statistics of empirical sample paths (raw field measurements). Specifically, the TES modeling methodology can simultaneously match the empirical marginal distribution (histogram), as well as approximate the empirical autocorrelation function. We explicitly identify regenerative structures in TES processes and proceed to address efficiency and accuracy issues of prospective simulations. To show the efficacy of our approach, we report on a TES/M/1 case study. In this study, we used the likelihood ratio method to calculate the mean waiting time performance as a function of the regenerative structure and the intrinsic TES parameter controlling burstiness (degree of autocorrelation) in the arrival process. The score function method was used to estimate the corresponding sensitivity (gradient) with respect to the service rate. Finally, we demonstrated the importance of the particular regenerative structure selected in regard to the estimation efficiency and accuracy induced by the regeneration cycle length.
引用
收藏
页码:237 / 260
页数:24
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