Dynamic optimization problems (DOPs) have been widely researched in recent years. This is due to its numerous practical applications in real-life conditions. To solve DOPs, the optimizer should be able to track the changes and simultaneously seek for global optima in the search space. This paper proposes a dual population multi operators harmony search algorithm for DOPs to deal with changes in the problem landscape. The main difference between the proposed algorithm and other techniques are twofold: dual population for exploring and exploiting the search space, and the use of multi operators at different points of the search. Extensive experiments were conducted on the Moving Peaks Benchmark (MPB) and six dynamic test functions proposed in...
The file attached to this record is the author's final peer reviewed version. The Publisher's final ...
In this work, a new version of the Harmony Search algorithm for solving multi-objective optimization...
Yazdani D, Cheng R, Yazdani D, Branke J, Jin Y, Yao X. A Survey of Evolutionary Continuous Dynamic O...
Dynamic optimization problems present great challenges to the research community because their param...
Many optimisation problems are dynamic in the sense that changes occur during the optimisation proce...
AbstractMany optimisation problems are dynamic in the sense that changes occur during the optimisati...
A novel global harmony search (NGHS) algorithm, as proposed in 2010, is an improved algorithm that c...
Harmony search (HS) method is an emerging metaheuristic optimization algorithm. In this paper, an im...
In traditional optimization problems, problem domain, constraints and problem related data are assum...
The performance of the Harmony Search (HS) algorithm is highly dependent on the parameter settings a...
Abstract—This paper proposes two hybrid optimization methods based on Harmony Search algorithm (HS) ...
The theoretical analysis of evolutionary algorithms is believed to be very important for understandi...
Maintaining population diversity is the most notable challenge in solving dynamic optimization probl...
In most of the optimization studies, the problem related data is assumed to be exactly known beforeh...
AbstractHarmony Search metaheuristic is successfully used in several applications of science and eng...
The file attached to this record is the author's final peer reviewed version. The Publisher's final ...
In this work, a new version of the Harmony Search algorithm for solving multi-objective optimization...
Yazdani D, Cheng R, Yazdani D, Branke J, Jin Y, Yao X. A Survey of Evolutionary Continuous Dynamic O...
Dynamic optimization problems present great challenges to the research community because their param...
Many optimisation problems are dynamic in the sense that changes occur during the optimisation proce...
AbstractMany optimisation problems are dynamic in the sense that changes occur during the optimisati...
A novel global harmony search (NGHS) algorithm, as proposed in 2010, is an improved algorithm that c...
Harmony search (HS) method is an emerging metaheuristic optimization algorithm. In this paper, an im...
In traditional optimization problems, problem domain, constraints and problem related data are assum...
The performance of the Harmony Search (HS) algorithm is highly dependent on the parameter settings a...
Abstract—This paper proposes two hybrid optimization methods based on Harmony Search algorithm (HS) ...
The theoretical analysis of evolutionary algorithms is believed to be very important for understandi...
Maintaining population diversity is the most notable challenge in solving dynamic optimization probl...
In most of the optimization studies, the problem related data is assumed to be exactly known beforeh...
AbstractHarmony Search metaheuristic is successfully used in several applications of science and eng...
The file attached to this record is the author's final peer reviewed version. The Publisher's final ...
In this work, a new version of the Harmony Search algorithm for solving multi-objective optimization...
Yazdani D, Cheng R, Yazdani D, Branke J, Jin Y, Yao X. A Survey of Evolutionary Continuous Dynamic O...