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Selective ensemble simulate meta-model based-on global optimize strategy

机译:基于全局优化策略的选择性集成模拟元模型

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The increment of model complexity and size has been bottle neck of improve simulation system analyze emulation effective and decision maker cognize complex system. One of the effective methods to solve this problem is to replace complex physical model with simple simulate meta-model. Aim at slowly modeling speed and difficulty to effective updating problem using traditional neural network and other machine learning based simulate meta-model algorithm, and lower modeling accurate and generalization et al problems, a new global optimization based selective ensemble strategy is proposed in this paper, and single-hidden layer feed-forward networks with random weights (SLFNrw) is used to construct simulate meta-model. At first, simulate meta-modeling technology using in complex system simulation is analyzed. Then, global optimization based selective ensemble SLFNrw simulate meta-modeling strategy and algorithm are clarified in detail. At last, synthetic function and benchmark data are used to test the proposed algorithm. The results show the proposed algorithm can obtain well trade-off between modeling accuracy and speed, which can be widely used in complex system analysis based on simulation.
机译:模型复杂度和大小的增加一直是改进仿真系统分析瓶颈的有效途径,决策者认识到复杂系统。解决此问题的有效方法之一是用简单的模拟元模型代替复杂的物理模型。针对传统神经网络和其他基于机器学习的模拟元模型算法缓慢建模的速度和难以有效更新问题,降低建模精度和泛化等问题的缺点,提出了一种新的基于全局优化的选择性集成策略。并使用具有随机权重的单隐藏层前馈网络(SLFNrw)来构建仿真元模型。首先,分析了在复杂系统仿真中使用的仿真元建模技术。然后,详细阐明了基于全局优化的选择性集成SLFNrw仿真元建模策略和算法。最后,使用综合函数和基准数据对所提出的算法进行了测试。结果表明,该算法可以在建模精度和速度之间取得良好的折衷,可广泛应用于基于仿真的复杂系统分析中。

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