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Performance of global metamodeling techniques in solution of structural reliability problems

机译:全局元建模技术在解决结构可靠性问题中的性能

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摘要

Solution of structural reliability and uncertainty propagation problems can be a computationally intensive task, since complex mechanical models have to be solved thousands or millions of times. In this context, surrogate models can be employed in order to reduce the computational burden. This article compares the performance of three global surrogate modeling techniques in the solution of structural reliability problems. The paper addresses artificial neural networks, polynomial chaos expansions and Kriging metamodeling. Analytical and numerical problems of increasingly complexity are addressed, including an eight-hundred bar, 3D steel lattice tower. Implementation strategies concerning data mapping and optimization of Kriging hyper parameters are proposed and discussed. Advantages and limitations of each technique are addressed. Results show that the three techniques explored herein are reliable tools for approximating the response of complex mechanical models.
机译:解决结构可靠性和不确定性传播问题可能是一项计算量大的任务,因为复杂的机械模型必须解决数千或数百万次。在这种情况下,可以采用代理模型以减少计算负担。本文比较了在解决结构可靠性问题时三种全局代理建模技术的性能。本文介绍了人工神经网络,多项式混沌扩展和Kriging元模型。解决了日益复杂的分析和数值问题,其中包括八百根3D钢格架塔。提出并讨论了有关数据映射和Kriging超参数优化的实现策略。解决了每种技术的优点和局限性。结果表明,本文探讨的三种技术是用于逼近复杂机械模型响应的可靠工具。

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