As a typical NP-hard combination optimization problem, the hybrid flow shop widely exists in manufacturing systems. In this paper, a mathematical model of hybrid flow shop is formulated, and then a new encoding and decoding method based on matrix is designed, together with Self-Adaptive Cuckoo Search(SACS) algorithm to minimize the makespan of this problem. The main contribution of this paper is to develop a new approach hybridizing CS with bottleneck heuristic method to fully exploit the bottleneck stage, and then bring in a self-adaptive parameter adjusting strategy along with iterations to enhance the ability to jump out of local extreme value and maintain the evolution energy. furthermore, elite learning strategies and some local search...
Real-life optimization problems demand robust algorithms that perform efficient search in the enviro...
For the purpose of enhancing the search ability of the cuckoo search (CS) algorithm, an improved rob...
Interest in multimodal optimization is expanding rapidly, since many practical engineering problems ...
As a typical NP-hard combination optimization problem, the hybrid flow shop widely exists in manufac...
The multistage hybrid flow shop (HFS) scheduling problems are considered in this paper. Hybrid flows...
Cuckoo search algorithm is considered one of the promising metaheuristic algorithms applied to solve...
Cuckoo search algorithm is considered one of the promising metaheuristic algorithms applied to solve...
Cuckoo search (CS) algorithm, based on the brood parasitic behaviour of cuckoo species, since its in...
Simulated annealing (SA) proved its success as a single-state optimization search algorithm for both...
Optimization techniques, specially metaheuristics, are constantly refined in order to decrease execu...
The no idle permutation flow shop scheduling problem (NIPFSP) is a popular NP-hard combinatorial opt...
In this paper, two hybrid schemes using cuckoo search algorithm and genetic algorithm are proposed. ...
This paper deals with the hybrid particle swarm optimization-Cuckoo Search (PSO-CS) algorithm which ...
Scheduling of jobs in manufacturing environment is often NP Hard4.Multi stage Hybrid flow shop with ...
A Cuckoo Search (CS) algorithm based on ant colony algorithm is proposed for scheduling problem in p...
Real-life optimization problems demand robust algorithms that perform efficient search in the enviro...
For the purpose of enhancing the search ability of the cuckoo search (CS) algorithm, an improved rob...
Interest in multimodal optimization is expanding rapidly, since many practical engineering problems ...
As a typical NP-hard combination optimization problem, the hybrid flow shop widely exists in manufac...
The multistage hybrid flow shop (HFS) scheduling problems are considered in this paper. Hybrid flows...
Cuckoo search algorithm is considered one of the promising metaheuristic algorithms applied to solve...
Cuckoo search algorithm is considered one of the promising metaheuristic algorithms applied to solve...
Cuckoo search (CS) algorithm, based on the brood parasitic behaviour of cuckoo species, since its in...
Simulated annealing (SA) proved its success as a single-state optimization search algorithm for both...
Optimization techniques, specially metaheuristics, are constantly refined in order to decrease execu...
The no idle permutation flow shop scheduling problem (NIPFSP) is a popular NP-hard combinatorial opt...
In this paper, two hybrid schemes using cuckoo search algorithm and genetic algorithm are proposed. ...
This paper deals with the hybrid particle swarm optimization-Cuckoo Search (PSO-CS) algorithm which ...
Scheduling of jobs in manufacturing environment is often NP Hard4.Multi stage Hybrid flow shop with ...
A Cuckoo Search (CS) algorithm based on ant colony algorithm is proposed for scheduling problem in p...
Real-life optimization problems demand robust algorithms that perform efficient search in the enviro...
For the purpose of enhancing the search ability of the cuckoo search (CS) algorithm, an improved rob...
Interest in multimodal optimization is expanding rapidly, since many practical engineering problems ...