Ikuti
Javidan Kazemi Kordestani
Javidan Kazemi Kordestani
Nama lainnyaJK Kordestani, J Kazemi Kordestani
Ph.D. in Artificial Intelligence, Science and Research Branch, IAU
Email yang diverifikasi di ieee.org
Judul
Dikutip oleh
Dikutip oleh
Tahun
CDEPSO: a bi-population hybrid approach for dynamic optimization problems
JK Kordestani, A Rezvanian, MR Meybodi
Applied intelligence 40, 682-694, 2014
802014
A novel framework for improving multi-population algorithms for dynamic optimization problems: A scheduling approach
JK Kordestani, AE Ranginkaman, MR Meybodi, P Novoa-Hernández
Swarm and evolutionary computation 44, 788-805, 2019
63*2019
A novel hybrid adaptive collaborative approach based on particle swarm optimization and local search for dynamic optimization problems
A Sharifi, JK Kordestani, M Mahdaviani, MR Meybodi
Applied Soft Computing 32, 432-448, 2015
532015
An adaptive bi-flight cuckoo search with variable nests for continuous dynamic optimization problems
JK Kordestani, HA Firouzjaee, MR Meybodi
Applied Intelligence, 1-21, 2018
472018
LADE: learning automata based differential evolution
M Mahdaviani, JK Kordestani, A Rezvanian, MR Meybodi
International Journal on Artificial Intelligence Tools 24 (06), 1550023, 2015
312015
An improved differential evolution algorithm using learning automata and population topologies
JK Kordestani, A Ahmadi, MR Meybodi
Applied intelligence 41, 1150-1169, 2014
312014
An efficient oscillating inertia weight of particle swarm optimisation for tracking optima in dynamic environments
JK Kordestani, A Rezvanian, MR Meybodi
Journal of Experimental & Theoretical Artificial Intelligence 28 (1-2), 137-149, 2016
282016
A note on the exclusion operator in multi-swarm PSO algorithms for dynamic environments
J Kazemi Kordestani, MR Meybodi, AM Rahmani
Connection Science, 1-25, 2019
262019
Cuckoo search with composite flight operator for numerical optimization problems and its application in tunneling
HA Firouzjaee, JK Kordestani, MR Meybodi
Engineering Optimization 49 (4), 597-616, 2017
242017
Cellular teaching-learning-based optimization approach for dynamic multi-objective problems
A Birashk, JK Kordestani, MR Meybodi
Knowledge-Based Systems 141, 148-177, 2018
212018
New measures for comparing optimization algorithms on dynamic optimization problems
JK Kordestani, A Rezvanian, MR Meybodi
Natural Computing 18 (4), 705-720, 2019
162019
A note on the paper “A multi-population harmony search algorithm with external archive for dynamic optimization problems” by Turky and Abdullah
AE Ranginkaman, JK Kordestani, A Rezvanian, MR Meybodi
Information Sciences 288, 12-14, 2014
152014
Self-adaptive multi-population genetic algorithms for dynamic resource allocation in shared hosting platforms
A Shirali, J Kazemi Kordestani, MR Meybodi
Genetic Programming and Evolvable Machines 19, 505-534, 2018
102018
A two-level function evaluation management model for multi-population methods in dynamic environments: hierarchical learning automata approach
J Kazemi Kordestani, MR Meybodi, AM Rahmani
Journal of Experimental & Theoretical Artificial Intelligence 33 (1), 1-26, 2021
62021
Advances in Learning Automata and Intelligent Optimization
JK Kordestani
Springer International Publishing, 2021
42021
An overview of multi-population methods for dynamic environments
J Kazemi Kordestani, M Razapoor Mirsaleh, A Rezvanian, MR Meybodi
Advances in Learning Automata and Intelligent Optimization, 253-286, 2021
22021
Application of Sub‐Population Scheduling Algorithm in Multi‐Population Evolutionary Dynamic Optimization
JK Kordestani, MR Meybodi
Evolutionary Computation in Scheduling, 169-211, 2020
22020
Cellular automata, learning automata, and cellular learning automata for optimization
J Kazemi Kordestani, M Razapoor Mirsaleh, A Rezvanian, MR Meybodi
Advances in Learning Automata and Intelligent Optimization, 75-125, 2021
12021
An Introduction to Learning Automata and Optimization
J Kazemi Kordestani, M Razapoor Mirsaleh, A Rezvanian, MR Meybodi
Advances in Learning Automata and Intelligent Optimization, 1-50, 2021
12021
Learning Automata for Online Function Evaluation Management in Evolutionary Multi-population Methods for Dynamic Optimization Problems
J Kazemi Kordestani, M Razapoor Mirsaleh, A Rezvanian, MR Meybodi
Advances in Learning Automata and Intelligent Optimization, 287-321, 2021
2021
Sistem tidak dapat melakukan operasi ini. Coba lagi nanti.
Artikel 1–20