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Surrogate modeling based on an adaptive network and granular computing

机译:基于自适应网络和粒度计算的代理建模

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Reducing the number of evaluations of expensive fitness functions is one of the main concerns in evolutionary algorithms, especially when working with instances of contemporary engineering problems. As an alternative to this efficiency constraint, surrogate-based methods are grounded in the construction of approximate models that estimate the solutions' fitness by modeling the relationships between solution variables and their performance. This paper proposes a methodology based on granular computing for the construction of surrogate models for evolutionary algorithms. Under the proposed method, granules are associated with representative solutions of the problem under analysis. New solutions are evaluated with the expensive (original) fitness function only if they are not already covered by an existing granule. The parameters defining granules are periodically adapted as the search goes on using a neuro-fuzzy network that does not only reduce the number of fitness function evaluations, but also provides better convergence capabilities. The proposed method is evaluated on classical benchmark functions and on a recent benchmark created to test large-scale optimization models. Our results show that the proposed method considerably reduces the actual number of fitness function evaluations without significantly degrading the quality of solutions.
机译:减少昂贵的适应度函数的求值次数是进化算法的主要问题之一,尤其是在处理当代工程问题实例时。作为此效率约束的替代方法,基于代理的方法基于构建近似模型,该近似模型通过对解决方案变量及其性能之间的关系进行建模来估计解决方案的适用性。本文提出了一种基于粒度计算的方法来构建进化算法的替代模型。在提出的方法下,将颗粒与所分析问题的代表性解决方案相关联。仅当新解决方案尚未被现有颗粒覆盖时,才使用昂贵的(原始)适应性函数对其进行评估。使用神经模糊网络,随着搜索的进行,可以定期更改定义颗粒的参数,该网络不仅可以减少适应度函数评估的次数,而且还可以提供更好的收敛能力。在经典基准函数和最近创建的基准上对提出的方法进行评估,以测试大规模优化模型。我们的结果表明,所提出的方法大大减少了适应度函数评估的实际次数,而不会显着降低解决方案的质量。

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