The document presents a new fuzzy c-clustering recursive genetic algorithm (ts-fold++) that integrates Bayesian function adaptation to enhance performance in optimization tasks by overcoming issues related to local minima and premature convergence. The approach combines an initial search phase using the fuzzy c-cluster algorithm with a refined search strategy to explore solution spaces more effectively. Simulation results demonstrate improved accuracy and stability in function optimization compared to existing methods.