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A Preference-based Method of Updating the Surrogate Model by Broad Learning and Its Application

机译:基于优先的基于替代的替代模型通过广泛的学习及其应用

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摘要

A surrogate model is normally employed to evaluate an individual instead of time-consuming and expensive simulation. Inaccuracy model learning by the limited samples may mislead the evolution process. Thus, effectively updating the model by learning more typical samples is necessary. In this paper, a preference-based method of updating the surrogate model by broad learning is proposed, with the purpose of improving the accuracy of the model with the least computation complexity. The preferred individuals with the least distances to the Pareto front are chosen as the infilling samples. Following that, the surrogate model is updated based on the infilling samples by broad learning, so as to reduce the learning time. The rationality of the proposed updating method is verified by the instance of constructing a surrogate model for bolt supporting quality. The experimental results show that the preference-based updating method has the best accuracy and the least running time. The obtained optimal solutions meet the actual preference of the decision makers with the best convergence.
机译:通常采用代理模型来评估个体而不是耗时和昂贵的模拟。有限样本的不准确模型学习可能会误导进化过程。因此,需要通过学习更典型的样本来有效地更新模型。在本文中,提出了一种通过广泛学习更新代理模型的优先考虑方法,目的是提高模型的准确性,以计算复杂度最小。选择具有靠距离的最小距离的优选个体作为infilling样品。在此之后,通过广泛的学习基于infilling样本更新代理模型,以减少学习时间。通过构建螺栓支撑质量的代理模型的实例来验证所提出的更新方法的合理性。实验结果表明,基于偏好的更新方法具有最佳准确性和最少的运行时间。所获得的最佳解决方案符合决策者的实际偏好,以最好的收敛。

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