The CHAPS algorithm (CHAPS = Chance-Constrained Programming System) has proved to be an efficient and accurate method for solving linear optimization problems which have several random variables distributed normally and independently of each other. The CHAPS algorithm is based on the separation, linearization and iterative adjusting of linearization of chance-constrained deterministic equivalents by using the simplex method.According to test results the solution time of the algorithm is directly proportional to the second power of the number of constraints of a linearized model corresponding to the chance-constrained model. The positive result is partly due to the fact that the linearized model is very sparse. The algorithm requires six to ...
This paper introduces a method for constrained optimization using a modified multi-objective algorit...
Part 1: Plenary TalksInternational audienceThe solution of chance constrained optimization problems ...
Three concepts combine to show both the feasibility and desirability of incorporating probability wi...
The CHAPS algorithm (CHAPS = Chance-Constrained Programming System) has proved to be an efficient an...
Chance constraint programming has become an attractive topic in the field of stochastic optimization...
The aim of this paper is to construct sets of uniformly tighter linear constraints to replace a chan...
In many relevant situations, chance constrained linear programs can be explicitly converted into eff...
Abstract. Recent years have brought some progress in the knowledge of the complexity of linear progr...
In many relevant situations, chance constrained linear programs can be explicitly converted into eff...
In this paper, we describe an effective algorithm for handling chance constrained optimization probl...
An algorithm for solving linearly constrained general convex quadratic problems is proposed *. The e...
Chance constraints are a valuable tool for the design of safe decisions in uncertain environments; t...
<div><p>Chance constrained optimization problems in engineering applications possess highly nonlinea...
In Constraint Processing, many algorithms for enforcing the same level of local consistency may exis...
This thesis explores Chance-Constrained Programming (CCP) in the context of learning. It is shown th...
This paper introduces a method for constrained optimization using a modified multi-objective algorit...
Part 1: Plenary TalksInternational audienceThe solution of chance constrained optimization problems ...
Three concepts combine to show both the feasibility and desirability of incorporating probability wi...
The CHAPS algorithm (CHAPS = Chance-Constrained Programming System) has proved to be an efficient an...
Chance constraint programming has become an attractive topic in the field of stochastic optimization...
The aim of this paper is to construct sets of uniformly tighter linear constraints to replace a chan...
In many relevant situations, chance constrained linear programs can be explicitly converted into eff...
Abstract. Recent years have brought some progress in the knowledge of the complexity of linear progr...
In many relevant situations, chance constrained linear programs can be explicitly converted into eff...
In this paper, we describe an effective algorithm for handling chance constrained optimization probl...
An algorithm for solving linearly constrained general convex quadratic problems is proposed *. The e...
Chance constraints are a valuable tool for the design of safe decisions in uncertain environments; t...
<div><p>Chance constrained optimization problems in engineering applications possess highly nonlinea...
In Constraint Processing, many algorithms for enforcing the same level of local consistency may exis...
This thesis explores Chance-Constrained Programming (CCP) in the context of learning. It is shown th...
This paper introduces a method for constrained optimization using a modified multi-objective algorit...
Part 1: Plenary TalksInternational audienceThe solution of chance constrained optimization problems ...
Three concepts combine to show both the feasibility and desirability of incorporating probability wi...