This study introduces the Chaotic Particle Swarm Optimization as an innovative variant of the traditional particle swarm optimization algorithm, addressing the issue of particle swarm optimization getting trapped in local minima with a low convergence characteristic during later iterations. Chaotic particle swarm optimization incorporates principles from chaos theory to enhance the swarm's exploration and exploitation capabilities. By introducing controlled chaotic behavior, particles exhibit more diverse and unpredictable movements in the search space, leading to improved global convergence and escape from local minima. The proposed method has been implemented and evaluated on benchmark problems to assess its effectiveness. The integration of chaos theory with particle swarm optimization offers promising opportunities for developing robust and efficient optimization techniques suitable for complex and dynamic problem domains in various real-world applications.
M. M. Gajjala and A. Ahmad, “A novel adaptive restarting genetic algorithm based congestion management,” Pollack Period., vol. 18, no. 1, pp. 149–154, 2023.
F. Marini and B. Walczak, “Particle swarm optimization (PSO). A tutorial,” Chemom. Intell. Lab. Syst., Part B, vol. 149, pp. 153–165, 2015.
G. Quaranta, W. Lacarbonara, and S. F. Masri, “A review on computational intelligence for identification of nonlinear dynamical systems,” Nonlinear Dyn., vol. 99, pp. 1709–1761, 2020.
D. M. Prata, M. Schwaab, E. L. Lima, and J. C. Pinto, “Nonlinear dynamic data reconciliation and parameter estimation through particle swarm optimization: Application for an industrial polypropylene reactor,” Chem. Eng. Sci., vol. 64, no. 18, pp. 3953–3967, 2009.
J. Zhang and P. Xia, “An improved PSO algorithm for parameter identification of nonlinear dynamic hysteretic models,” J. Sound Vib., vol. 389, pp. 153–167, 2017.
S. P. Diwan and S. S. Deshpande, “Fast nonlinear model predictive controller using parallel PSO based on divide and conquer approach,” Int. J. Control, vol. 96, no. 9, pp. 2230–2239, 2023.
L. Yiyang, J. Xi, B. Hongfei, W. Zhining, and S. Liangliang, “A general robot inverse kinematics solution method based on improved PSO algorithm,” IEEE Access, vol. 9, pp. 32341–32350, 2021.
H. Nobahari and S. Nasrollahi, “A nonlinear robust model predictive differential game guidance algorithm based on the particle swarm optimization,” J. Franklin Inst., vol. 357, no. 15, pp. 11042–11071, 2020.
M. M. Gajjala and A. Ahmad, "Congestion management using grey wolf optimization in a deregulated power market," Pollack Periodica, vol. 17, no. 2, pp. 14–19, 2021.
E. Russell and J. Kennedy, “Particle swarm optimization,” in Proceedings of the IEEE International Conference on Neural Networks, Vol. 4, Perth, WA, Australia, November 27, 1995, pp. 1942–1948.
S. Dasgupta, S. Das, A. Abraham, and A. Biswas, “Adaptive computational chemotaxis in bacterial foraging optimization: An analysis,” IEEE Trans. Evol. Comput., vol. 13, no. 4, pp. 919–941, 2009.