A Fitness Landscape View on the Tuning of an Asynchronous Master-Worker EA for Nuclear Reactor Design
Muniglia, Mathieu, Verel, Sébastien, Pallec, Jean-Charles Le, Do, Jean-Michel
–arXiv.org Artificial Intelligence
In the context of the introduction of intermittent renewable energies, we propose to optimize the main variables of the control rods of a nuclear power plant to improve its capability to load-follow. The design problem is a black-box combinatorial optimization problem with expensive evaluation based on a multi-physics simulator. Therefore, we use a parallel asynchronous master-worker Evolutionary Algorithm scaling up to thousand computing units. One main issue is the tuning of the algorithm parameters. A fitness landscape analysis is conducted on this expensive real-world problem to show that it would be possible to tune the mutation parameters according to the low-cost estimation of the fitness landscape features.
arXiv.org Artificial Intelligence
Jul-6-2021
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- Energy > Power Industry > Utilities > Nuclear (1.00)
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