This paper presents a fuzzy model for the unit commitment problem (UCP). The model takes the uncertainties in the forecasted load demand and the spinning reserve constraints in a fuzzy frame. The genetic algorithm (GA) approach is then used to solve the proposed fuzzy UCP model. In the implementation for the GA, coding of the UCP solutions is based on mixing binary and decimal representations. A fitness function is constructed from the total operating cost of the generating units plus a penalty term determined due to the fuzzy load and spinning reserve membership functions. Numerical results showed an improvement in the solutions costs compared to the results reported in the literature and the GA with crisp UCP mode
A genetic algorithm (GA) augmented with knowledge-based methods has been developed for solving the u...
International audienceThis work proposes a hybrid genetic algorithm (GA) to address the unit commitm...
This paper presents a new algorithm for solving unit commitment (UC) problems using a binary-real co...
This paper presents a new genetic algorithm approach to solve the unit commitment problem in electri...
This paper presents a new algorithm based on integrating simulated annealing and fuzzy logic methods...
Unit commitment(UC) is one of the essential activities in power systems planning and operation that ...
Due to the continuous increase of the population and the perpetual progress of industry, the energy ...
This paper presents a new algorithm based on integrating genetic algorithms, tabu search and simulat...
This paper presents a new algorithm based on integrating simulated annealing and fuzzy logic methods...
This paper presents an application of the fuzzy logic to the unit commitment problem in order to fin...
This paper presents a new algorithm based on integrating the use of genetic algorithms and tabu sear...
This paper presents an implementation of fuzzy-logic to solve the unit-commitment problem of thermal...
This paper presents and identifies alternative strategies with the advantages of Genetic Algorithm f...
The Unit Commitment Problem is to determine a minimal cost turn-on and turn-off schedule of a set of...
Unit commitment is a complex decision-making process because of multiple constraints which must not ...
A genetic algorithm (GA) augmented with knowledge-based methods has been developed for solving the u...
International audienceThis work proposes a hybrid genetic algorithm (GA) to address the unit commitm...
This paper presents a new algorithm for solving unit commitment (UC) problems using a binary-real co...
This paper presents a new genetic algorithm approach to solve the unit commitment problem in electri...
This paper presents a new algorithm based on integrating simulated annealing and fuzzy logic methods...
Unit commitment(UC) is one of the essential activities in power systems planning and operation that ...
Due to the continuous increase of the population and the perpetual progress of industry, the energy ...
This paper presents a new algorithm based on integrating genetic algorithms, tabu search and simulat...
This paper presents a new algorithm based on integrating simulated annealing and fuzzy logic methods...
This paper presents an application of the fuzzy logic to the unit commitment problem in order to fin...
This paper presents a new algorithm based on integrating the use of genetic algorithms and tabu sear...
This paper presents an implementation of fuzzy-logic to solve the unit-commitment problem of thermal...
This paper presents and identifies alternative strategies with the advantages of Genetic Algorithm f...
The Unit Commitment Problem is to determine a minimal cost turn-on and turn-off schedule of a set of...
Unit commitment is a complex decision-making process because of multiple constraints which must not ...
A genetic algorithm (GA) augmented with knowledge-based methods has been developed for solving the u...
International audienceThis work proposes a hybrid genetic algorithm (GA) to address the unit commitm...
This paper presents a new algorithm for solving unit commitment (UC) problems using a binary-real co...