Probabilistic or Stochastic programming is a framework for modeling optimization problems that involve uncertainty. The basic idea used in solving stochastic optimization problems has so far been to convert a stochastic model into an equivalent deterministic model and is possible when the right hand side resource vector follows some specific distributions such as normal, lognormal and exponential distributions. In this paper, a multi-objective stochastic programming problem has been considered with right hand side resource vector following general form of distributions ii bhAii eBbF 1, which include many distributions such as Power Function distribution, Pareto distribution, Beta distribution of first kind, Weibull distribution, and ...
Abstract Many real problems with uncertainties may often be formulated as Stochastic Programming Pro...
Abstract — The distribution of the Pareto-optimal solutions often has a clear structure. To adapt ev...
ABSTRACT: The aim of this study is to analyse the resolution of Stochastic Programming Problems in w...
Many Optimization problems in engineering and economics involve the challenging task of pondering bo...
In this paper we suggest an approach for solving a multiobjective stochastic linear programming prob...
AbstractStochastic multi objective programming problems commonly arise in complex systems such as po...
This paper presents an extension of the previously developed approach to solve multiobjective optimi...
AbstractIn this paper a class of stochastic multiple-objective programming problems with one quadrat...
The approaches to tackling optimization problems of multiple-objectives can be classified into 3 cat...
This study focuses on solving multiobjective stochastic linear programming (MSLP) problems with part...
In this paper we show how one can get stochastic solutions of Stochastic Multi-objective Problem (SM...
This paper solves the multiobjective stochastic linear program with partially known probability. We ...
For multi-objective optimization problems, a common solution methodology is to determine a Pareto op...
In practice we often have to solve optimization problems with several criteria. These problems are c...
In this paper, an approach to deal with the multi-objective programming problem is regulated by mean...
Abstract Many real problems with uncertainties may often be formulated as Stochastic Programming Pro...
Abstract — The distribution of the Pareto-optimal solutions often has a clear structure. To adapt ev...
ABSTRACT: The aim of this study is to analyse the resolution of Stochastic Programming Problems in w...
Many Optimization problems in engineering and economics involve the challenging task of pondering bo...
In this paper we suggest an approach for solving a multiobjective stochastic linear programming prob...
AbstractStochastic multi objective programming problems commonly arise in complex systems such as po...
This paper presents an extension of the previously developed approach to solve multiobjective optimi...
AbstractIn this paper a class of stochastic multiple-objective programming problems with one quadrat...
The approaches to tackling optimization problems of multiple-objectives can be classified into 3 cat...
This study focuses on solving multiobjective stochastic linear programming (MSLP) problems with part...
In this paper we show how one can get stochastic solutions of Stochastic Multi-objective Problem (SM...
This paper solves the multiobjective stochastic linear program with partially known probability. We ...
For multi-objective optimization problems, a common solution methodology is to determine a Pareto op...
In practice we often have to solve optimization problems with several criteria. These problems are c...
In this paper, an approach to deal with the multi-objective programming problem is regulated by mean...
Abstract Many real problems with uncertainties may often be formulated as Stochastic Programming Pro...
Abstract — The distribution of the Pareto-optimal solutions often has a clear structure. To adapt ev...
ABSTRACT: The aim of this study is to analyse the resolution of Stochastic Programming Problems in w...