"An Adaptive Differential Evolution Algorithm to Solve Constrained Optimization Problems in Engineering Design"
written by Y.Y. AO, H.Q. CHI,
published by Engineering, Vol.2 No.1, 2010
has been cited by the following article(s):
  • Google Scholar
  • CrossRef
[1] The influence of inertia weight on the particle swarm optimization algorithm
[2] Integrating surrogate modeling to improve DIRECT, DE and BA global optimization algorithms for computationally intensive problems
[3] A new Kriging–Bat Algorithm for solving computationally expensive black-box global optimization problems
Engineering Optimization, 2018
[4] Differential evolution with adaptive trial vector generation strategy and cluster-replacement-based feasibility rule for constrained optimization
Information Sciences, 2018
[5] Adaptive differential evolution with multi-population-based mutation operators for constrained optimization
Soft Computing, 2018
[6] CHIP: Constraint Handling with Individual Penalty approach using a hybrid evolutionary algorithm
Neural Computing and Applications, 2018
[7] The analysis, identification and measures to remove inconsistencies from differential evolution mutation variants
Science Asia, 2017
[8] Hybridizing gravitational search algorithm with real coded genetic algorithms for structural engineering design problem
[9] The influence of the length of trajectory of SCARA manipulator duty cycle on electricity consumption
[10] Continuous Optimization using Evolutionary Computing: Advancements in Differential Evolution Algorithm for Function Optimization and Data Classification
[11] Multi-start Space Reduction (MSSR) surrogate-based global optimization method
Structural and Multidisciplinary Optimization, 2016
[12] Quantum evolutionary computational technique for constrained engineering optimization
[13] A Fast Differential Evolution for Constrained Optimization Problems in Engineering Design
Bio-Inspired Computing -- Theories and Applications, 2015
[14] Enhanced versions of differential evolution: state-of-the-art survey
International Journal of Computing Science and Mathematics?5.2 (2014), 2014
[15] Enhanced versions of differential evolution: state-of-the-art survey.
[16] A combination of specialized differential evolution variants for constrained optimization
Advances in Artificial Intelligence–IBERAMIA 2012. Springer Berlin Heidelberg, 2012
[17] Exponential inertia weight for particle swarm optimization
Advances in Swarm Intelligence, Springer, 2012
[18] An adaptive normalization based constrained handling methodology with hybrid bi-objective and penalty function approach
Evolutionary Computation (CEC), 2012 IEEE Congress on. IEEE, 2012., 2012
[19] Differential evolution using opposite point for global numerical optimization
Journal of Intelligent Learning Systems and Applications, 2012
[20] Constrained engineering design optimization using a hybrid bi-objective evolutionary-classical methodology
Simulated Evolution and Learning, Springer, 2010
[21] Large-scale global optimization based on hybrid swarm intelligence algorithm