A hybrid COA-DEA method for solving multi-objective problems
This is an incremental improvement for researchers in optimization algorithms, addressing multi-objective problem-solving.
The paper tackled the inability of the Cuckoo optimization algorithm (COA) to solve multi-objective problems by developing a hybrid COA-DEA method, which increased speed and accuracy in generating efficient Pareto frontiers.
The Cuckoo optimization algorithm (COA) is developed for solving single-objective problems and it cannot be used for solving multi-objective problems. So the multi-objective cuckoo optimization algorithm based on data envelopment analysis (DEA) is developed in this paper and it can gain the efficient Pareto frontiers. This algorithm is presented by the CCR model of DEA and the output-oriented approach of it. The selection criterion is higher efficiency for next iteration of the proposed hybrid method. So the profit function of the COA is replaced by the efficiency value that is obtained from DEA. This algorithm is compared with other methods using some test problems. The results shows using COA and DEA approach for solving multi-objective problems increases the speed and the accuracy of the generated solutions.