Recent Metaheuristics on Control Parameter Determination
Citation
ÖLMEZ, Yağmur, Gonca Özmen KOCA & Zühtü Hakan AKPOLAT. “Recent Metaheuristics on Control Parameter Determination”. An International Journal of Optimization and Control: Theories & Applications, 15.1 (2025): 166-182.Abstract
Metaheuristics have been widely used in recent years for tuning control parameters
since they have a simple structure, are easy to apply, and provide
efficient solutions. In this study, control of a two-wheeled mobile robot using
the inverted pendulum principle is proposed. The performances of nine recent
metaheuristics (Political Optimizer, Equilibrium Optimizer, Aquila Optimizer,
Flow Directional Algorithm, Cheetah Optimizer, Golden Jackal Optimizer,
Artificial Rabbit Optimization, Gazelle Optimizer, and Pelican Optimization)
have been investigated for the balancing and speed control of a two-wheeled
vehicle. In this context, a framework consisting of two cascaded PI controllers
is designed to provide balance and speed control of the two-wheeled vehicle.
The performances of the recent metaheuristics are also compared with previously
introduced effective metaheuristic algorithms for further evaluation.
The parameters of the controllers are tuned by using these metaheuristics. In
experimental studies, quantitative and qualitative analyses are performed for
evaluation of the metaheuristics. The dynamic system properties, convergence
curves, computational times, and statistical results are provided to prove optimal
control performances. The results show that 11 out of 14 compared
algorithms produce similar optimal results in speed and balance control of the
two-wheeled vehicle. The rest of them do not provide satisfactory results for
the tuning of optimum control parameters of the two-wheeled vehicle.



















