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Dynamic multi-objective evolutionary algorithm based on decomposition for test task scheduling problem

机译:基于分解的动态多目标进化算法求解测试任务调度问题

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Test task scheduling problem in the dynamic environment (DTTSP) is an important issue in automatic test system. In this paper, a dynamic multi-objective evolutionary algorithm based on decomposition (DMOEA/D) is proposed to improve the adaptability of the environment changes in test process. The mathematical model considering the arrival of dynamic tasks is proposed based on the Markov decision process. Three standard test functions and two DTTSP examples are used in experiment for illustrating the performance of the proposed algorithm. The results show that the proposed algorithm has good performance in convergence and diversity. Almost all the performance metrics of convergence and diversity obtain stable statistical results. The result of convergence ratio of an algorithm is not good as other metrics because of the slow convergence rate. The results also show that the solutions obtained by DMOEA/D have better Pareto front than the dynamic multi-objective particle swarm optimization algorithm (DMOPSO).
机译:动态环境中的测试任务调度问题(DTTSP)是自动测试系统中的重要问题。为了提高测试过程中环境变化的适应性,提出了一种基于分解的动态多目标进化算法(DMOEA / D)。基于马尔可夫决策过程,提出了考虑动态任务到达的数学模型。实验中使用了三个标准测试功能和两个DTTSP示例来说明所提出算法的性能。结果表明,所提算法在收敛性和多样性上均具有良好的性能。几乎所有的收敛性和多样性性能指标都能获得稳定的统计结果。由于收敛速度慢,算法的收敛率结果不如其他指标。结果还表明,由DMOEA / D获得的解决方案比动态多目标粒子群优化算法(DMOPSO)具有更好的Pareto前沿。

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