163 research outputs found
An elitist quantum-inspired evolutionary algorithm for the flexible job-shop scheduling problem
The flexible job shop scheduling problem (FJSP) is vital to manufacturers especially in today’s constantly changing environment. It is a strongly NP-hard problem and therefore metaheuristics or heuristics are usually pursued to solve it. Most of the existing metaheuristics and heuristics, however, have low efficiency in convergence speed. To overcome this drawback, this paper develops an elitist quantum-inspired evolutionary algorithm. The algorithm aims to minimise the maximum completion time (makespan). It performs a global search with the quantum-inspired evolutionary algorithm and a local search with a method that is inspired by the motion mechanism of the electrons around an atomic nucleus. Three novel algorithms are proposed and their effect on the whole search is discussed. The elitist strategy is adopted to prevent the optimal solution from being destroyed during the evolutionary process. The results show that the proposed algorithm outperforms the best-known algorithms for FJSPs on most of the FJSP benchmarks
Prediction the effects of ZnO2 nanoparticles on splitting tensile strength and water absorption of high strength concrete
An efficient application of goal programming to tackle multiobjective problems with recurring fitness landscapes
Many real-world applications require decision-makers to assess the quality of solutions while considering multiple conflicting objectives. Obtaining good approximation sets for highly constrained many objective problems is often a difficult task even for modern multiobjective algorithms. In some cases, multiple instances of the problem scenario present similarities in their fitness landscapes. That is, there are recurring features in the fitness landscapes when searching for solutions to different problem instances. We propose a methodology to exploit this characteristic by solving one instance of a given problem scenario using computationally expensive multiobjective algorithms to obtain a good approximation set and then using Goal Programming with efficient single-objective algorithms to solve other instances of the same problem scenario. We use three goal-based objective functions and show that on benchmark instances of the multiobjective vehicle routing problem with time windows, the methodology is able to produce good results in short computation time. The methodology allows to combine the effectiveness of state-of-the-art multiobjective algorithms with the efficiency of goal programming to find good compromise solutions in problem scenarios where instances have similar fitness landscapes
Exemplo de aplicação do método de Pesquisa-ação para a solução de um problema de sistema de informação em uma empresa produtora de cana-de-açúcar
A multiple-objective grouping genetic algorithm for the cell formation problem with alternative routings
Group Decision Making with the Analytic Hierarchy Process in Benefit-Risk Assessment: A Tutorial
Multi-criteria decision analysis with goal programming in engineering, management and social sciences: a state-of-the art review
Multiple objective decision support framework for configuring, loading and reconfiguring manufacturing cells
SIGLEAvailable from British Library Document Supply Centre-DSC:DXN031153 / BLDSC - British Library Document Supply CentreGBUnited Kingdo
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