Frenetic Cat-inspired Particle Optimization: a Markov state-switching hybrid swarm optimizer with application to cardiac digital twinning
Jorge S\'anchez, Guadalupe Garc\'ia-Isla, Sandra Perez-Herrero, Beatriz Trenor, Javier Saiz

TL;DR
FCPO is a novel hybrid swarm optimizer inspired by cats and Markov switching, designed for efficient black-box optimization in expensive settings like cardiac digital twinning, outperforming several benchmarks in speed and accuracy.
Contribution
Introduces FCPO, a hybrid swarm optimizer combining particle swarm dynamics with Markov switching, tailored for efficient optimization under tight evaluation budgets.
Findings
FCPO achieves the lowest mean runtime among tested algorithms.
FCPO attains the best mean objective on multimodal functions at D=20.
In cardiac calibration, FCPO reaches target ECG fidelity within ~40 iterations.
Abstract
Designing optimizers that remain effective under tight evaluation budgets is critical in expensive black-box settings such as cardiac digital twinning. We propose Frenetic Cat-inspired Particle Optimization (FCPO), a hybrid swarm method that couples particle swarm optimization-like dynamics with an explicit-state Markov switching controller to schedule exploration and refinement operators online. FCPO integrates (i) state-conditioned bounded motion, (ii) an elite-difference global jump operator to escape stagnation, (iii) eigen-space guided local refinement from elite covariance, and (iv) linear population size reduction to control late-stage computational cost. We benchmark FCPO on five representative functions from the Congress on Evolutionary Computation (CEC) 2022 suite (F1, F2, F3, F6 and F10) at dimensions D{10,20} over 30 independent runs, comparing against PSO, CSO, CLPSO,…
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