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Quantifying Uncertainties during the Early Design Stage of a Gas Turbine Disc by Utilizing a Bayesian Framework

机译:利用贝叶斯框架量化在燃气轮机盘早期设计阶段的不确定性

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Quantifying uncertainties regarding the grain size of the turbine disk has been identified as a crucial aspect for the preliminary design stage. The reason for that is because the grain size is correlated to the life of the component which should preferably be maximized or at least quantified to the best of the designer's abilities. In the grand scheme of things, this ultimately translates into a potential competitive advantage for the aero engine company. The prime focus of this paper is the investigation of material properties which was done by combining simulation and experimental data within a Bayesian framework in order to enhance the decision making process during the preliminary design stage. The aim of the case study presented here was to show how the physical processes can be modelled using a Bayesian network which updates prior probability distributions with real data in order to obtain more accurate predictors of reality. The first part of the paper explains the theory behind the framework, while the latter half shows some results as well as some conclusions which can be drawn.
机译:量化有关涡轮盘晶粒尺寸的不确定性已被确定为初步设计阶段的关键方面。这样做的原因是,晶粒尺寸与部件的寿命有关,而部件的寿命最好应最大化或至少量化,以达到设计者的最佳能力。在宏伟的计划中,这最终将转化为航空发动机公司的潜在竞争优势。本文的主要重点是材料性能的研究,该研究是通过在贝叶斯框架内结合模拟和实验数据来完成的,以增强初步设计阶段的决策过程。这里提出的案例研究的目的是展示如何使用贝叶斯网络对物理过程进行建模,该贝叶斯网络用真实数据更新先验概率分布,以获得更准确的现实预测指标。本文的第一部分解释了框架背后的理论,而后半部分则显示了一些结果以及可以得出的结论。

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