Quadrupole Magnet Design based on Genetic Multi-Objective Optimization
November 17, 2022 Β· Declared Dead Β· π Electrical Engineering
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Authors
Eric Diehl, Moritz von Tresckow, Lou Scholtissek, Dimitrios Loukrezis, Nicolas Marsic, Wolfgang F. O. MΓΌller, Herbert De Gersem
arXiv ID
2211.09580
Category
physics.acc-ph
Cross-listed
cs.NE
Citations
3
Venue
Electrical Engineering
Last Checked
3 months ago
Abstract
This work suggests to optimize the geometry of a quadrupole magnet by means of a genetic algorithm adapted to solve multi-objective optimization problems. To that end, a non-domination sorting genetic algorithm known as NSGA-III is used. The optimization objectives are chosen such that a high magnetic field quality in the aperture of the magnet is guaranteed, while simultaneously the magnet design remains cost-efficient. The field quality is computed using a magnetostatic finite element model of the quadrupole, the results of which are post-processed and integrated into the optimization algorithm. An extensive analysis of the optimization results is performed, including Pareto front movements and identification of best designs.
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