Probabilistic modeling of discrete structural response with application to composite plate penetration models.

Anindya Bhaduri, C. Meyer, J. Gillespie, B. Haque, M. Shields, L. Graham‐Brady
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引用次数: 9

Abstract

Discrete response of structures is often a key probabilistic quantity of interest. For example, one may need to identify the probability of a binary event, such as, whether a structure has buckled or not. In this study, an adaptive domain-based decomposition and classification method, combined with sparse grid sampling, is used to develop an efficient classification surrogate modeling algorithm for such discrete outputs. An assumption of monotonic behaviour of the output with respect to all model parameters, based on the physics of the problem, helps to reduce the number of model evaluations and makes the algorithm more efficient. As an application problem, this paper deals with the development of a computational framework for generation of probabilistic penetration response of S-2 glass/SC-15 epoxy composite plates under ballistic impact. This enables the computationally feasible generation of the probabilistic velocity response (PVR) curve or the $V_0-V_{100}$ curve as a function of the impact velocity, and the ballistic limit velocity prediction as a function of the model parameters. The PVR curve incorporates the variability of the model input parameters and describes the probability of penetration of the plate as a function of impact velocity.
离散结构响应的概率建模及其在复合材料板侵彻模型中的应用。
结构的离散响应通常是我们感兴趣的关键概率量。例如,可能需要识别二元事件的概率,例如,结构是否已经屈曲。本研究采用基于自适应域的分解分类方法,结合稀疏网格采样,对此类离散输出开发了一种高效的分类代理建模算法。基于问题的物理性质,假设输出相对于所有模型参数的单调行为,有助于减少模型评估的数量,使算法更有效。作为一个应用问题,本文研究了S-2玻璃/SC-15环氧复合材料板在弹道冲击下概率侵彻响应生成的计算框架。这使得生成概率速度响应(PVR)曲线或作为冲击速度函数的$V_0-V_{100}$曲线以及作为模型参数函数的弹道极限速度预测在计算上可行。PVR曲线包含了模型输入参数的可变性,并将板的穿透概率描述为冲击速度的函数。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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