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A variable neighborhood MOEA/D for multiobjective test task scheduling problem - MaRDI portal

A variable neighborhood MOEA/D for multiobjective test task scheduling problem (Q1718350)

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scientific article; zbMATH DE number 7016409
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A variable neighborhood MOEA/D for multiobjective test task scheduling problem
scientific article; zbMATH DE number 7016409

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    A variable neighborhood MOEA/D for multiobjective test task scheduling problem (English)
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    8 February 2019
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    Summary: Test task scheduling problem (TTSP) is a typical combinational optimization scheduling problem. This paper proposes a variable neighborhood MOEA/D (VNM) to solve the multiobjective TTSP. Two minimization objectives, the maximal completion time (makespan) and the mean workload, are considered together. In order to make solutions obtained more close to the real Pareto Front, variable neighborhood strategy is adopted. Variable neighborhood approach is proposed to render the crossover span reasonable. Additionally, because the search space of the TTSP is so large that many duplicate solutions and local optima will exist, the Starting Mutation is applied to prevent solutions from becoming trapped in local optima. It is proved that the solutions got by VNM can converge to the global optimum by using Markov Chain and Transition Matrix, respectively. The experiments of comparisons of VNM, MOEA/D, and CNSGA (chaotic nondominated sorting genetic algorithm) indicate that VNM performs better than the MOEA/ D and the CNSGA in solving the TTSP. The results demonstrate that proposed algorithm VNM is an efficient approach to solve the multiobjective TTSP.
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