Title of article :
Surveillance test policy optimization through genetic algorithms using non-periodic intervention frequencies and considering seasonal constraints
Author/Authors :
Lapa، نويسنده , , Celso M.F. and Pereira، نويسنده , , Clلudio M.N.A. and Frutuoso e Melo، نويسنده , , Paulo F.، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2003
Abstract :
In order to maximize systems average availability during a given period of time, it has recently been developed a non-periodic surveillance test optimization methodology based on genetic algorithms (GA). The fact of allowing non-periodic tests turns the solution space much more flexible and schedules can be better adjusted, providing gains in the overall system average availability, when compared to those obtained by an optimized periodic test scheme. This approach, however, turns the optimization problem more complex. Hence, the use of a powerful optimization technique, such as GA, is required.
ering that some particular features of certain systems can turn it advisable to introduce other specific constraints in the optimization problem, this work investigates the application of seasonal constraints for the set of the Emergency Diesel Generation of a typical four-loop pressurized water reactor in order to planning and optimizing its surveillance test policy. In this analysis, the growth of the blackout accident probability during summer, due to electrical power demand increases, was considered. Here, the used model penalizes surveillance test interventions when the blackout probability is higher.
s demonstrate the ability of the method in adapting the surveillance test policy to seasonal constraints. The knowledge acquired by the GA during the searching process has lead to test schedules that drastically minimize test interventions at periods of high blackout probability. It is compensated by more frequent redistributed tests through the periods of low blackout probability in order to improve on the overall average availability at the system level.
Keywords :
Surveillance tests , optimization , Genetic algorithms , Probabilistic safety assessment , Reliability engineering
Journal title :
Reliability Engineering and System Safety
Journal title :
Reliability Engineering and System Safety