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BAYESIAN INFERENCE OF EXPERIMENTAL DATA FOR AXIAL COMPRESSOR PERFORMANCE ASSESSMENT

机译:贝叶斯轴压缩机性能评估的实验数据推断

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As the next generation of turbomachinery components becomes more sensitive to instrumentation intrusiveness, a reduction of the number of measurement devices required for the evaluation of performance is a possible and cost-effective way to mitigate the arising of non-mastered experimental errors. A first approach to a data assimilation methodology based on Bayesian inference is developed with the aim of reducing the instrumentation effort. A numerical model is employed to provide an initial belief of the flow, that is then updated based on experimental observations, using an ensemble Kalman filter algorithm for inverse problems. Validation of the algorithm is achieved with the usage of experimental measurements not used in the data assimilation process. The methodology is tested for a low aspect ratio axial compressor stage, showing a good prediction of the corrected compressor map, as well as a promising prediction of the inter-row radial pressure distribution and 2D flow field.
机译:由于下一代涡轮机械组件对仪器侵入性更敏感,因此减少了评估性能所需的测量装置的数量是可能的和经济有效的方法,以减轻非掌握实验误差的产生。 基于贝叶斯推理的基于贝叶斯推理的数据同化方法的第一种方法,目的是降低仪器效力。 使用数值模型来提供流量的初始信念,然后根据实验观察更新,使用集合Kalman滤波器算法进行逆问题。 通过使用在数据同化过程中未使用的实验测量来实现算法的验证。 该方法测试了低纵横比轴向压缩机级,显示了校正的压缩机图的良好预测,以及对行间径向压力分布和2D流场的有希望预测。

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