Abstract:Simulation is commonly used to find the best values of decision variables for problems which defy analytical solutions. This objective is similar to that of optimization problems and thus, mathematical programming techniques may be applied to simulation. However, the application of mathematical programming techniques, e.g., the gradient methods, to simulation is compounded by the random nature of simulation responses and by the complexity of the statistical issues involved. The literature relevant to optimizat… Show more
“…According to Safizadeh (1990), RSM assumes that the user is able to identify, at least approximately, the region of interest as is characterized by the constraints that were defined for the problem.…”
Section: P R O B L E M S T a T E M E N Tmentioning
“…According to Safizadeh (1990), RSM assumes that the user is able to identify, at least approximately, the region of interest as is characterized by the constraints that were defined for the problem.…”
Section: P R O B L E M S T a T E M E N Tmentioning
Simulation Optimization (SO) refers to the optimization of an objective function subject to constraints, both of which can be evaluated through a stochastic simulation. To address specific features of a particular simulation-discrete or continuous decisions, expensive or cheap simulations, single or multiple outputs, homogeneous or heterogeneous noise-various algorithms have been proposed in the literature. As one can imagine, there exist several competing algorithms for each of these classes of problems. This document emphasizes the difficulties in simulation optimization as compared to mathematical programming, makes reference to state-of-the-art algorithms in the field, examines and contrasts the different approaches used, reviews some of the diverse applications that have been tackled by these methods, and speculates on future directions in the field.
“…Simulation optimization problems have been discussed continuously by Glynn (1986), Meketon (1987), Jacobson and Schruben (1989), Safizadeh (1990), Ho and Cao (1991), Rubinstein and Shapiro (1992), etc. Methods using Finite Differences, which is widely used in optimization, have the disadvantage that at least n + 1 simulation runs are necessary to estimate the gradient of a given problem when the number of parameters is n (Heidergott 1995).…”
This paper deals with a discrete simulation optimization method for designing a complex probabilistic discrete event system. The proposed algorithm in this paper searches the effective and reliable alternatives satisfying the target values of the system to be designed through a single run in a relatively short time period. It tries to estimate an auto-regressive model, and construct mean and confidence interval for evaluating correctly the objective function obtained by a small amount of output data. The experimental results using the proposed method are also shown.
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