A novel approach for multiobjective generation scheduling is presented. The work reported employs a simple heuristics-guided evolutionary algorithm to generate solutions to this nonlinear constrained optimisation problem where the objectives are mutually conflicting and equally important. The algorithm produces a cost-emission frontier of pareto-optimal solutions, any of which can be selected based on the relative preference of the objectives. Within this framework, an efficient search algorithm has been developed to deal with the combinatorial explosion of the search space such that only feasible schedules are generated based on heuristics. This approach has been evaluated by successful experiments with three test systems containing 11, 19...
The purpose of this paper is to present an approach to optimization in which every target is conside...
Scheduling problems and constraint satisfaction problems are generally known to be extremely hard. T...
This paper presents a genetic algorithm (GA) based on heuristic rules for high-constrained large-siz...
Abstract—This paper presents novel two-phase multi-objective evolutionary approaches for solving the...
This paper presents novel two-phase multi-objective evolutionary approaches for solving the optimal ...
Generation scheduling (GS) in power systems is a tough optimisation problem which continues to prese...
The solution of generation scheduling (GS) problems involves the determination of the unit commitmen...
The paper is devoted to solution of multistage scheduling problems by genetic algorithms. The Heuris...
International audienceMulti-objective optimization using evolutionary algorithms has been extensivel...
Evolutionary algorithms (EAs) based on the concept of Pareto dominance seem the most suitable techni...
10.1049/ip-gtd:19949943IEE Proceedings: Generation, Transmission and Distribution1413233-242IGTD
to appearInternational audienceWe present a modular and flexible algorithmic framework to enable a f...
This paper presents a genetic algorithm (GA) approach for solving the generators scheduling problem ...
Variation in load demand does not allow a fixed number of generators working in parallel to share th...
Scheduling of multiobjective problems has gained the interest of the researchers. Past many decades,...
The purpose of this paper is to present an approach to optimization in which every target is conside...
Scheduling problems and constraint satisfaction problems are generally known to be extremely hard. T...
This paper presents a genetic algorithm (GA) based on heuristic rules for high-constrained large-siz...
Abstract—This paper presents novel two-phase multi-objective evolutionary approaches for solving the...
This paper presents novel two-phase multi-objective evolutionary approaches for solving the optimal ...
Generation scheduling (GS) in power systems is a tough optimisation problem which continues to prese...
The solution of generation scheduling (GS) problems involves the determination of the unit commitmen...
The paper is devoted to solution of multistage scheduling problems by genetic algorithms. The Heuris...
International audienceMulti-objective optimization using evolutionary algorithms has been extensivel...
Evolutionary algorithms (EAs) based on the concept of Pareto dominance seem the most suitable techni...
10.1049/ip-gtd:19949943IEE Proceedings: Generation, Transmission and Distribution1413233-242IGTD
to appearInternational audienceWe present a modular and flexible algorithmic framework to enable a f...
This paper presents a genetic algorithm (GA) approach for solving the generators scheduling problem ...
Variation in load demand does not allow a fixed number of generators working in parallel to share th...
Scheduling of multiobjective problems has gained the interest of the researchers. Past many decades,...
The purpose of this paper is to present an approach to optimization in which every target is conside...
Scheduling problems and constraint satisfaction problems are generally known to be extremely hard. T...
This paper presents a genetic algorithm (GA) based on heuristic rules for high-constrained large-siz...