Abstract We consider a joint chance-constrained linear programming problem with random right hand side vector. T h e deterministic equivalent of the joint chance-constraint is already known in the case that the right hand side vector is statistically independent. But if the right hand side vector is correlative, it is difficult to derive the deterministic equivalent of the joint chance-constraint. We discuss two methods for calculating the joint chance-constraint. For the case of uncorrelated right hand side, we try a direct method different from the usual deterministic equivalent, for the correlative right hand side case, we apply numerical integration. In this paper a chance-constrained programming problem is developed for electric power ...
This article presents data-driven nonparametric joint chance constraints (JCCs) for ramp-constrained...
Many engineering applications concerned with issues such as the probability of meeting demand or the...
Various applications in reliability and risk management give rise to optimization problems with cons...
This paper presents an algorithm to solve a unit commitment problem that takes into account the unc...
This dissertation is dedicated to implementing data-driven nonparametric joint chance constraints (J...
A chance constrained AC optimal power flow is to find the optimal economic operation plan whose prob...
This paper deals with a Chance-Constrained Programming formulation and approximate resolution of an ...
In this paper we consider chance constrained programming problems with joint constraints shown in th...
Uncertainty modeling has a significant role in power system scheduling and operation. This paper pre...
Reliable power production is critical to theprofitability of electricity utilities. Power generators...
Deregulation in the electricity supply industry has brought many new challenges to the problem of re...
In the context of large-scale renewable energy integrated into an electrical power system, the effec...
We tackle the resolution of a probabilistically-constrained version of the DC Optimal Power Flow pro...
Constraints on each node and line in power systems generally have upper and lower bounds, denoted as...
In light of a reliable and resilient power system under extreme weather and natural disasters, netwo...
This article presents data-driven nonparametric joint chance constraints (JCCs) for ramp-constrained...
Many engineering applications concerned with issues such as the probability of meeting demand or the...
Various applications in reliability and risk management give rise to optimization problems with cons...
This paper presents an algorithm to solve a unit commitment problem that takes into account the unc...
This dissertation is dedicated to implementing data-driven nonparametric joint chance constraints (J...
A chance constrained AC optimal power flow is to find the optimal economic operation plan whose prob...
This paper deals with a Chance-Constrained Programming formulation and approximate resolution of an ...
In this paper we consider chance constrained programming problems with joint constraints shown in th...
Uncertainty modeling has a significant role in power system scheduling and operation. This paper pre...
Reliable power production is critical to theprofitability of electricity utilities. Power generators...
Deregulation in the electricity supply industry has brought many new challenges to the problem of re...
In the context of large-scale renewable energy integrated into an electrical power system, the effec...
We tackle the resolution of a probabilistically-constrained version of the DC Optimal Power Flow pro...
Constraints on each node and line in power systems generally have upper and lower bounds, denoted as...
In light of a reliable and resilient power system under extreme weather and natural disasters, netwo...
This article presents data-driven nonparametric joint chance constraints (JCCs) for ramp-constrained...
Many engineering applications concerned with issues such as the probability of meeting demand or the...
Various applications in reliability and risk management give rise to optimization problems with cons...