Author/Authors :
Donyaii, Alireza Department of Civil Engineering - Islamic Azad University Roudehen Branch, Roudehen, Iran , Sarraf, Amirpouya Department of Civil Engineering - Islamic Azad University Roudehen Branch, Roudehen, Iran , Ahmadi, Hassan Department of Civil Engineering - Islamic Azad University Roudehen Branch, Roudehen, Iran
Abstract :
In this study, the performance of the algorithms of Whale (WOA), Differential Evolution
(DE), Crow Search (CSA), and Gray Wolf optimization (GWO) were evaluated to operate the
Golestan Dam reservoir with the objective function of meeting downstream water demands.
After defining the objective function and its constraints, the performance of the algorithms was
compared with each other and with the absolute optimal values obtained by GAMS nonlinear
programming method (19.41).These values together with each algorithm optimization results
were ranked using six multi-criteria decision-making methods of TOPSIS, VIKOR, LINMAP,
CODAS, ELECTRE I and Simple Additive Weighting after obtaining the performance
evaluation indices of each algorithm (Reliability, reversibility, and vulnerability). Finally,
integration methods (Mean, Borda, and Copeland techniques) were used to evaluate the
performance of models. The results showed that the average responses of the GWO, WOA, DE,
and CSA were 1.08, 1.49, 1.29 and 1.19 times the absolute optimal response and the answers’
coefficient of variation obtained by GWO was 2,113 and 1.43 times smaller than the WOA, DE,
and CSA, respectively. Moreover, all integration techniques indicated the superiority of the
GWO. Then, the CSA, DE, and WOA algorithms were ranked second to fourth, respectively. On
the other hand, the use of these methods in solving the problem of Golestan Dam reservoir
optimization was considered appropriate due to the similarity of the results obtained from the
integration techniques with the results of TOPSIS, VIKOR and LINMAP methods.
Keywords :
Optimal use of dam reservoir , Whale optimization algorithm , Differential Evolution optimization algorithm , Crow search optimization algorithm , Gray wolf optimization algorithm