首页> 外文会议>ASME(American Society of Mechanical Engineers) Turbo Expo vol.5; 20070514-17; Montreal(CA) >APPLICATION OF BAYESIAN BELIEF NETS FOR MODELING UNCERTAINTY IN STRUCTURAL DYNAMICS
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APPLICATION OF BAYESIAN BELIEF NETS FOR MODELING UNCERTAINTY IN STRUCTURAL DYNAMICS

机译:贝叶斯信网络在结构动力学建模不确定性中的应用

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摘要

The quality of modeling and performance prediction for any structural system is affected and limited by an inherent presence of various sources of uncertainty. To date, uncertainty has been usually quantified by means of uncertainty propagation techniques (e.g. Monte Carlo simulations), where a statistical realization of the system's input parameters is propagated through a (usually) numerical model to construct the statistics of the system's outputs. This approach works well for sensitivity studies, but some limitations arise when data is available at the output level (as in the case of experiments) or at some intermediate stage within the analysis. The primary objective of this paper is to investigate the feasibility of using Bayesian Belief Networks (BBN) to model multi-directional uncertainty propagation in a process where experimental data can be introduced as evidence. The problem under consideration has the objective of estimating the modal parameters of a structural system with uncertain parameters. The estimation is based on a model of the system, but it is assumed that a limited set of experimental data may be available on input or output parameters. The procedure is first applied to the simple case of a beam structure, for which a number of natural frequencies are evaluated in the presence of uncertainty. Next, it is extended to the estimation of modal quantities of a turbine engine Haded disk sector, which provides themotivation for these investigations.
机译:任何结构系统的建模和性能预测质量都会受到各种不确定性因素固有影响的影响和限制。迄今为止,不确定性通常通过不确定性传播技术(例如蒙特卡洛模拟)进行量化,其中通过(通常)数值模型传播系统输入参数的统计实现,以构建系统输出的统计信息。这种方法适用于敏感性研究,但是当在输出级别(如在实验的情况下)或在分析的某个中间阶段有可用数据时,会出现一些限制。本文的主要目的是研究在可以引入实验数据作为证据的过程中,使用贝叶斯信念网络(BBN)建模多向不确定性传播的可行性。所考虑的问题的目的是估计具有不确定参数的结构系统的模态参数。该估计是基于系统模型的,但是假设输入或输出参数上可能有一组有限的实验数据。该程序首先应用于梁结构的简单情况,在存在不确定性的情况下评估其固有频率。接下来,将其扩展到涡轮发动机Haded disk行业的模态量的估计,这为这些研究提供了动力。

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