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A new directional simulation method for system reliability. Part Ⅱ: application of neural networks

机译:一种新的系统可靠性定向仿真方法。第二部分:神经网络的应用

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摘要

A challenge in directional importance sampling is in identifying the location and the shape of the importance sampling density function when a realistic limit state for a structural system is considered in a finite element-supported reliability analysis. Deterministic point refinement schemes, previously studied in place of directional importance sampling, can be improved by prior knowledge of the limit state. This paper introduces two types of neural networks that identify the location and shape of the limit state quickly and thus facilitate directional simulation-based reliability assessment using the deterministic Fekete point sets introduced in the companion paper. A set of limit states composed of linear functions are used to test the efficiency and possible directional preference of the networks. These networks are shown in the tests and examples to reduce the simulation effort in finite element-based reliability assessment.
机译:在有限元支持的可靠性分析中考虑结构系统的实际极限状态时,定向重要性抽样的挑战在于识别重要性抽样密度函数的位置和形状。可以通过对极限状态的先验知识来改进先前确定性的点精化方案,以代替方向性重要性抽样。本文介绍了两种类型的神经网络,它们可以快速识别极限状态的位置和形状,从而可以使用随同论文中介绍的确定性Fekete点集促进基于方向仿真的可靠性评估。一组由线性函数组成的极限状态用于测试网络的效率和可能的方向偏好。这些网络显示在测试和示例中,以减少基于有限元的可靠性评估中的仿真工作。

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