4 research outputs found
Preventive Maintenance Policy Optimization of a Nuclear Reactor High Pressure Injection System Using a Reliability-Cost Model
A niching genetic algorithm applied to a nuclear power plant auxiliary feedwater system surveillance tests policy optimization
Submitted by Sherillyn Lopes ([email protected]) on 2016-03-03T14:11:55Z
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A niching genetic algorithm....pdf: 296194 bytes, checksum: 04d36747d77a1fe8ef598cc981203326 (MD5)Made available in DSpace on 2016-03-03T14:11:55Z (GMT). No. of bitstreams: 1
A niching genetic algorithm....pdf: 296194 bytes, checksum: 04d36747d77a1fe8ef598cc981203326 (MD5)This article extends previous efforts on genetic algorithms (GAs) applied to a nuclear power plant (NPP) auxiliary feedwater system (AFWS) surveillance tests policy optimization. We introduce the application of a niching genetic algorithm (NGA) to this problem and compare its performance to previous results. The NGA maintains a populational diversity during the search process, thus promoting a greater exploration of the search space. The optimization problem consists in maximizing the system’s average availability for a given
period of time, considering realistic features such as: (i) aging effects on standby components during the tests; (ii) revealing failures in the tests implies on corrective maintenance, increasing outage times; (iii) components have distinct test parameters (outage time, aging factors, etc.) and (iv) tests are not necessarily periodic. We find that the NGA performs better than the conventional GA and the island GA due to a greater exploration of the search space