Optimization of the test intervals of a nuclear safety system by genetic algorithms, solution clustering and fuzzy preference assignment

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Abstract

In this paper, a procedure is developed for identifying a number of representative solutions manageable for decision-making in a multiobjective optimization problem concerning the test intervals of the components of a safety system of a nuclear power plant. Pareto Front solutions are identified by a genetic algorithm and then clustered by subtractive clustering into "families". On the basis of the decision maker's preferences, each family is then synthetically represented by a "head of the family" solution. This is done by introducing a scoring system that ranks the solutions with respect to the different objectives: a fuzzy preference assignment is employed to this purpose. Level Diagrams are then used to represent, analyze and interpret the Pareto Fronts reduced to the head-of-the-family solutions.

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APA

Zio, E., & Bazzo, R. (2010). Optimization of the test intervals of a nuclear safety system by genetic algorithms, solution clustering and fuzzy preference assignment. Nuclear Engineering and Technology, 42(4), 414–425. https://doi.org/10.5516/NET.2010.42.4.414

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