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. 2021 Oct 20;189:116063. doi: 10.1016/j.eswa.2021.116063

Table 1.

Summary of some BA-based and PSO-based hybrid techniques.

Ref. Technique Hybridization methodology Application
(Issa et al., 2018) ASCA-PSO* PSO exploits the regions around solutions found by SCA LCCS between biological sequences
(Issa & Abd Elaziz, 2020) IMO-PSO* IMO starts exploring the search space then PSO refines the found solutions (exploitation phase) LCCS between biological sequences
(Shehab et al., 2019) BA-CSA BA update procedure is applied to agents of CSA where new solutions survive if fitness improves Global numerical optimization
(Yildizdan & Baykan, 2020) BA-DE The population is updated randomly using improved BA or DE mechanism to improve both exploration and exploitation Global numerical optimization
(Manoj et al., 2016) BA-PSO PSO operators are applied to BA solutions in the exploitation phase ANN training for Enhancement of image registration process of the diagnosis of medical images
(Ferdowsi et al., 2019) BA-PSO Swap and update mechanism is applied where best solutions of one algorithm replace worst solutions in the other one Design of the labyrinth spillway geometry
(Yadav et al., 2015) BA-PSO Non satisfied solutions in the PSO population are updated using BA operators Location of unified power flow controller in power systems
(Abd-Elazim & Ali, 2013) PSO-BFA PSO is applied as a mutation operator for BFA individuals Design of power systems stabilizers in multimachine power systems
(Shen et al., 2008) PSO-TS TS works as a local improvement procedure for PSO solutions Tumor classification using gene expression data
(Jiang et al., 2014) PSO-GSA Each updates its position with the contribution of both algorithms (co-evolutionary technique) Economic emission load dispatch problems
(Dao et al., 2020) BA-ALO Updating operators of ALO were embedded into the updating equations of BA Global numerical optimization
(Neto et al., 2019) BA-LBBA One of many micro-bats is assigned as a leader instead of only one best solution to influence the other agents of LBBA The mobile robot localization problem
(Garg, 2016) PSO-GA Balancing exploration and exploitation is achieved via incorporating the crossover and mutation operators within PSO Solving constrained optimization problems

*Studies which implement the FLAT technique.