SOMS is a general surrogate-based multistart algorithm, which is used in combination with any local optimizer to find global optima for computationally expensive functions with multiple local minima. SOMS differs from previous multistart methods in that a surrogate approximation is used by the multistart algorithm to help reduce the number of function evaluations necessary to identify the most promising points from which to start each nonlinear programming local search. SOMS’s numerical results are compared with four well-known methods, namely, Multi-Level Single Linkage (MLSL), MATLAB’s MultiStart, MATLAB’s GlobalSearch, and GLOBAL. In addition, we propose a class of wavy test functions that mimic the wavy nature of objective functions aris...
Recent research in algorithms for solving global optimization problems using response surface method...
Sequential surrogate model-based global optimization algorithms, such as super-EGO, have been develo...
A stochastic global optimization method based on a multistart strategy and a derivative-free filter ...
This paper introduces a surrogate model based algorithm for computationally expensive mixed-integer ...
Gradient-based optimization algorithms are probably the most efficient option for the solution of a ...
this article is an extension of the multistart method. Having drawn a quasirandom sample of N points...
We evaluate the performance of a numerical method for global optimization of expensive functions. Th...
Surrogate models (also called response surface models or metamodels) have been widely used in the li...
This paper presents a parallel surrogate-based global optimization method for computationally expens...
Three derivative-free global optimization methods are developed based on radial basis functions (RBF...
MATSuMoTo is the MATLAB Surrogate Model Toolbox for computationally ex-pensive, black-box, global op...
The high efficiency of the Monte Carlo optimization algorithm developed by Pulfer and Waine(14) is d...
The solution of noisy nonlinear optimization problems with nonlinear constraints and derivative info...
This paper proposes a novel optimization algorithm for constrained black-box problems, where the obj...
Decades of progress in simulation-based surrogate-assisted optimization and unprecedented growth in ...
Recent research in algorithms for solving global optimization problems using response surface method...
Sequential surrogate model-based global optimization algorithms, such as super-EGO, have been develo...
A stochastic global optimization method based on a multistart strategy and a derivative-free filter ...
This paper introduces a surrogate model based algorithm for computationally expensive mixed-integer ...
Gradient-based optimization algorithms are probably the most efficient option for the solution of a ...
this article is an extension of the multistart method. Having drawn a quasirandom sample of N points...
We evaluate the performance of a numerical method for global optimization of expensive functions. Th...
Surrogate models (also called response surface models or metamodels) have been widely used in the li...
This paper presents a parallel surrogate-based global optimization method for computationally expens...
Three derivative-free global optimization methods are developed based on radial basis functions (RBF...
MATSuMoTo is the MATLAB Surrogate Model Toolbox for computationally ex-pensive, black-box, global op...
The high efficiency of the Monte Carlo optimization algorithm developed by Pulfer and Waine(14) is d...
The solution of noisy nonlinear optimization problems with nonlinear constraints and derivative info...
This paper proposes a novel optimization algorithm for constrained black-box problems, where the obj...
Decades of progress in simulation-based surrogate-assisted optimization and unprecedented growth in ...
Recent research in algorithms for solving global optimization problems using response surface method...
Sequential surrogate model-based global optimization algorithms, such as super-EGO, have been develo...
A stochastic global optimization method based on a multistart strategy and a derivative-free filter ...