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A two phase hybrid algorithm with a new decomposition method for large scale optimization

机译:一种具有新分解方法的两相混合算法,用于大规模优化

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摘要

Many real world problems can be modeled as large-scale global optimization (LSGO) problems which are very challenging due to their high nonlinearity, high dimensionality and too many local optimal solutions, especially for non-separable LSGO problems. In this paper, a two phase hybrid algorithm is proposed which is suitable for both non-separable and separable (fully and partially separable) LSGO problems. In the first phase, we design a self-adaptive discrete scan algorithm which can quickly and roughly scan the search space, locate promising areas and find good points to start with. The algorithm first converts the continuous search space into discrete one in order to save computational resources, and then dynamically restricts the upper and lower bounds of the search space so that the search can focus on the smaller and more promising region. In this way, it can effectively mitigate the premature convergence and save computational resources as well. In the second phase, we first design a new contribution-based decomposition method (CBD) for the most challenging non-separable LSGO problems, and then propose a self-adaptive decomposition method, in which two decomposition methods (FBG for fully and partially separable problems and CBD for non-separable problems) are automatically chosen. The parameters can also be self-adaptively changed to fit different problems and different stages of the optimization process. Based on these techniques, a two-phase hybrid algorithm (TPHA) is proposed for LGSO problems. Experiments are conducted on 15 most difficult LSGO problems in CEC' 2013 benchmark suite and on a real world problem, and TPHA is compared with the best and the state-of-the-art algorithms on these test problems. The results indicate the proposed TPHA is more effective than the compared state-of-the-art algorithms.
机译:许多现实世界问题可以被建模为大规模的全局优化(LSGO)问题,这是由于其高的非线性,高维度和太多当地最佳解决方案而非常具有挑战性,特别是对于不可分离的LSGO问题。在本文中,提出了一种适用于不可分离和可分离的(完全和部分可分离的)LSGO问题的两相混合算法。在第一阶段,我们设计一种自适应离散扫描算法,可以快速且大致扫描搜索空间,找到有希望的区域并找到良好的点以开始。该算法首先将连续搜索空间转换为离散的一个,以便节省计算资源,然后动态地限制搜索空间的上限和下限,以便搜索可以专注于更小更有前景的区域。通过这种方式,它也可以有效地减轻过早的融合并节省计算资源。在第二阶段,我们首先设计一种新的基于贡献的分解方法(CBD),用于最具挑战性的不可分解的LSGO问题,然后提出一种自适应分解方法,其中两种分解方法(FBG用于完全和部分可分离自动选择问题和不可分离问题的CBD。参数也可以自适应地改变以适应不同的问题和优化过程的不同阶段。基于这些技术,提出了一种用于LGSO问题的两相混合算法(TPHA)。实验是在CEC 2013年基准套件中的15个最困难的LSGO问题和现实世界问题上进行的,而TPHA则与这些测试问题的最佳和最先进的算法进行比较。结果表明,所提出的TPHA比比较的最先进的算法更有效。

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