Probabilistic constrained simulation optimization problems (PCSOP) are concerned with allocating limited resources to achieve a stochastic objective function subject to a probabilistic inequality constraint. The PCSOP are NP-hard problems whose goal is to find optimal solutions using simulation in a large search space. An efficient “Ordinal Optimization (OO)„ theory has been utilized to solve NP-hard problems for determining an outstanding solution in a reasonable amount of time. OO theory to solve NP-hard problems is an effective method, but the probabilistic inequality constraint will greatly decrease the effectiveness and efficiency. In this work, a method that embeds ordinal optimization (OO) into tree⁻seed algorithm (...
This paper considers the problem of planning and scheduling a complex make-to-order product with mul...
This paper presents a novel heuristic for constrained optimization of random computer simula-tion mo...
This article presents a novel heuristic for constrained optimization of computationally expensive ra...
Probabilistic constrained simulation optimization problems (PCSOP) are concerned with allocating lim...
Ordinal Optimization offers an efficient approach for simulation optimization by focusing on ranking...
Ordinal Optimization has emerged as an efficient technique for simulation and optimization. Exponent...
Selecting a subset of the best solutions among large-scale problems is an important area of research...
In engineering design and manufacturing optimization, the trade-off between a quality performance me...
We develop a novel method for solving constrained optimization problems in random (or stochastic) si...
Stochastic Constraint Optimisation Problems(SCOPs), such as the viral marketing problem and transmis...
This article presents a novel heuristic for constrained optimization of computationally expensive ra...
In this tutorial we consider the problem of finding the best set up to use for a system, where the o...
We propose a new modeling and solution method for probabilistically constrained optimization prob-le...
This paper presents a novel heuristic for constrained optimization of random computer simulation mod...
We propose a new modeling and solution method for probabilistically constrained optimization problem...
This paper considers the problem of planning and scheduling a complex make-to-order product with mul...
This paper presents a novel heuristic for constrained optimization of random computer simula-tion mo...
This article presents a novel heuristic for constrained optimization of computationally expensive ra...
Probabilistic constrained simulation optimization problems (PCSOP) are concerned with allocating lim...
Ordinal Optimization offers an efficient approach for simulation optimization by focusing on ranking...
Ordinal Optimization has emerged as an efficient technique for simulation and optimization. Exponent...
Selecting a subset of the best solutions among large-scale problems is an important area of research...
In engineering design and manufacturing optimization, the trade-off between a quality performance me...
We develop a novel method for solving constrained optimization problems in random (or stochastic) si...
Stochastic Constraint Optimisation Problems(SCOPs), such as the viral marketing problem and transmis...
This article presents a novel heuristic for constrained optimization of computationally expensive ra...
In this tutorial we consider the problem of finding the best set up to use for a system, where the o...
We propose a new modeling and solution method for probabilistically constrained optimization prob-le...
This paper presents a novel heuristic for constrained optimization of random computer simulation mod...
We propose a new modeling and solution method for probabilistically constrained optimization problem...
This paper considers the problem of planning and scheduling a complex make-to-order product with mul...
This paper presents a novel heuristic for constrained optimization of random computer simula-tion mo...
This article presents a novel heuristic for constrained optimization of computationally expensive ra...