An exponential function inflation size of multi-verse optimisation algorithm for global optimisation

This paper proposed an improved multi-verse optimisation (IMVO) algorithm based on exponential function inflation size. The main inspirations of IMVO are based on cosmic expansion, and inflation never ends. In the entire universe, we can think it is exponential growth. Exponential function inflation size is introduced to enhance accuracy and increase convergence rate of the multi-verse optimisation (MVO) algorithm. The numerical simulation experiments and comparisons are carried out based on a set of ten benchmark functions. The IMVO algorithm is compared with multi-verse optimisation (MVO), moth-flame optimisation (MFO), artificial bee colony (ABC) algorithm, bat algorithm (BA), differential evolution (DE) algorithm and dragonfly algorithm (DA). The experiment results show that the IMVO has not only the higher accuracy but also the faster convergence speed.

[1]  Sam Kwong,et al.  Genetic algorithms and their applications , 1996, IEEE Signal Process. Mag..

[2]  Seyed Mohammad Mirjalili,et al.  Multi-Verse Optimizer: a nature-inspired algorithm for global optimization , 2015, Neural Computing and Applications.

[3]  Marco Dorigo,et al.  Ant system: optimization by a colony of cooperating agents , 1996, IEEE Trans. Syst. Man Cybern. Part B.

[4]  Yu Xue,et al.  Improved bat algorithm with optimal forage strategy and random disturbance strategy , 2016, Int. J. Bio Inspired Comput..

[5]  Chuanpei Xu,et al.  A Multi-Verse Optimizer with Levy Flights for Numerical Optimization and Its Application in Test Scheduling for Network-on-Chip , 2016, PloS one.

[6]  K. Thorne,et al.  Wormholes in spacetime and their use for interstellar travel: A tool for teaching general relativity , 1988 .

[7]  Attia A. El-Fergany,et al.  Parameter extraction of photovoltaic generating units using multi-verse optimizer , 2016 .

[8]  Dervis Karaboga,et al.  A powerful and efficient algorithm for numerical function optimization: artificial bee colony (ABC) algorithm , 2007, J. Glob. Optim..

[9]  Seyed Mohammad Mirjalili,et al.  Moth-flame optimization algorithm: A novel nature-inspired heuristic paradigm , 2015, Knowl. Based Syst..

[10]  Yu Xue,et al.  A novel oriented cuckoo search algorithm to improve DV-Hop performance for cyber-physical systems , 2017, J. Parallel Distributed Comput..

[11]  Dong Hwa Kim,et al.  A hybrid genetic algorithm and bacterial foraging approach for global optimization , 2007, Inf. Sci..

[12]  Peter J. Fleming,et al.  Diversity Management in Evolutionary Many-Objective Optimization , 2011, IEEE Transactions on Evolutionary Computation.

[13]  Hernando Quevedo,et al.  Geometrothermodynamics of black holes , 2007, 0704.3102.

[14]  R. H. Bhesdadiya,et al.  A novel hybrid Particle Swarm Optimizer with multi verse optimizer for global numerical optimization and Optimal Reactive Power Dispatch problem , 2017 .

[15]  Xin-She Yang,et al.  A new hybrid method based on krill herd and cuckoo search for global optimisation tasks , 2016, Int. J. Bio Inspired Comput..

[16]  Amir Hossein Gandomi,et al.  Bat algorithm for constrained optimization tasks , 2012, Neural Computing and Applications.

[17]  Seyedali Mirjalili,et al.  Dragonfly algorithm: a new meta-heuristic optimization technique for solving single-objective, discrete, and multi-objective problems , 2015, Neural Computing and Applications.

[18]  Cihan Karakuzu Retraction notice to: Fuzzy controller training using particle swarm optimization for nonlinear system control. , 2009, ISA transactions.

[19]  Mao Ye,et al.  A tabu search approach for the minimum sum-of-squares clustering problem , 2008, Inf. Sci..

[20]  A. Guth Eternal inflation and its implications , 2007, hep-th/0702178.