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Dimensionality reduction enhances data-driven reliability-based design optimize

机译:降维增强了数据驱动的基于可靠性的设计优化

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A recently proposed data-driven approach to reliability-based design optimization of structures constructs a sufficient condition that the target reliability is guaranteed with the specified confidence level, without relying on any assumptions on statistical information of random variables. In general, there exists a gap between this sufficient condition and the original confidence-level constraint. This paper presents a simple dimensionality reduction technique that can possibly mitigate this gap. This technique is applied to the compliance constraint with the uncertain external load. Numerical experiments on truss and continuum examples demonstrate that the proposed method can drastically reduce the over-conservativeness of the original method.
机译:最近提出的基于数据的驱动方法对结构的基于可靠性的设计优化构造了一个充分的条件,即可以在不依赖于随机变量统计信息的任何假设的情况下,以指定的置信度确保目标可靠性。通常,此充分条件与原始的置信度约束之间存在差距。本文提出了一种简单的降维技术,可以减少这种差距。将该技术应用于具有不确定外部负载的顺应性约束。桁架和连续体实例的数值实验表明,该方法可以大大降低原始方法的过度保守性。

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