Particle Swarm Optimization
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Multi-Column RBF Neural Network Using Adaptive and Non-Adaptive Particle Swarm Optimization
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Particle swarm optimization fitting of long-range wake potentials for trapped-mode parameter characterization in the HALF storage ring
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Light pulses uncover Higgs mode that reshapes perovskite crystal symmetry
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