NoA genetic algorithm (GA) augmented with knowledge-based methods has been developed for solving the unit commitment economic dispatch problem. The GA evolves a population of binary strings which represent commitment schedules. The initial population of schedules is chosen using a method based on elicited scheduling knowledge. A fast rule-based dispatch method is then used to evaluate candidate solutions. The knowledge-based genetic algorithm is applied to a test system of ten thermal units over 24-hour time intervals, including minimum on/off times and ramp rates, and achieves lower cost solutions than Lagrangian relaxation in comparable computational time
This paper presents a new algorithm for solving unit commitment (UC) problems using a binary-real co...
This paper presents a new algorithm based on integrating genetic algorithms, tabu search and simulat...
In this paper, the Genetic Algorithm (GA) is used to evolve the weight and the interconnection of th...
A genetic algorithm (GA) augmented with knowledge-based methods has been developed for solving the u...
This paper presents and identifies alternative strategies with the advantages of Genetic Algorithm f...
Unit commitment is a complex decision-making process because of multiple constraints which must not ...
This paper presents a new algorithm based on integrating genetic algorithms, tabu search and simulat...
Unit commitment is a complex decision-making process because of multiple con-straints which must not...
This paper presents a new genetic algorithm approach to solve the unit commitment problem in electri...
Abstract—This paper presents a new solution to the thermal unit-commitment (UC) problem based on an ...
This paper presents a genetic approach for determining the priority order in the commitment of therm...
A novel strategy including a Priority List (PL) based method and a heuristic algorithm which is name...
Unit commitment(UC) is one of the essential activities in power systems planning and operation that ...
The National Energy Policy Act of 1992 allows open access to transmission lines. The electric utilit...
Abstract. This paper presents an evolutionary neural network (ENN) approach for solving the power sy...
This paper presents a new algorithm for solving unit commitment (UC) problems using a binary-real co...
This paper presents a new algorithm based on integrating genetic algorithms, tabu search and simulat...
In this paper, the Genetic Algorithm (GA) is used to evolve the weight and the interconnection of th...
A genetic algorithm (GA) augmented with knowledge-based methods has been developed for solving the u...
This paper presents and identifies alternative strategies with the advantages of Genetic Algorithm f...
Unit commitment is a complex decision-making process because of multiple constraints which must not ...
This paper presents a new algorithm based on integrating genetic algorithms, tabu search and simulat...
Unit commitment is a complex decision-making process because of multiple con-straints which must not...
This paper presents a new genetic algorithm approach to solve the unit commitment problem in electri...
Abstract—This paper presents a new solution to the thermal unit-commitment (UC) problem based on an ...
This paper presents a genetic approach for determining the priority order in the commitment of therm...
A novel strategy including a Priority List (PL) based method and a heuristic algorithm which is name...
Unit commitment(UC) is one of the essential activities in power systems planning and operation that ...
The National Energy Policy Act of 1992 allows open access to transmission lines. The electric utilit...
Abstract. This paper presents an evolutionary neural network (ENN) approach for solving the power sy...
This paper presents a new algorithm for solving unit commitment (UC) problems using a binary-real co...
This paper presents a new algorithm based on integrating genetic algorithms, tabu search and simulat...
In this paper, the Genetic Algorithm (GA) is used to evolve the weight and the interconnection of th...