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A Multidimensional Extension of Balje Chart for Axial Flow Turbomachinery Using Artificial Intelligence-Based Meta-Models

机译:基于人工智能的元模型对轴流涡轮机械Balje图的多维扩展

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The main intent of this work is the exploration of the rotor-only fan design space to identify the correlations between fan performance and enriched geometric and kinematic parameters. In particular, the aim is to derive a multidimensional "Balje chart," where the main geometric and operational parameters are taken into account in addition to the specific speed and diameter, to guide a fan designer toward the correct choice of parameters such as hub solidity, blade number, hub-to-tip ratio (HR). This multidimensional chart was built using performance data derived from a quasi-3D in-house software for axisymmetric blade analysis and then explored by means of machine learning techniques suitable for big data analysis. Principal component analysis (PCA) and projection to latent structure (PLS) allowed finding optimal values of the main geometric parameters required by each specific speed/specific diameter pair.
机译:这项工作的主要目的是探索仅转子的风扇设计空间,以识别风扇性能与丰富的几何和运动学参数之间的相关性。特别是,其目的是获得一个多维的“ Balje图表”,其中除了特定的速度和直径外,还应考虑主要的几何和操作参数,以指导风扇设计人员正确选择诸如轮毂坚固性等参数,刀片编号,轮毂对齿尖比(HR)。此多维图表是使用从准3D内部软件获得的性能数据构建的,用于轴对称刀片分析,然后通过适用于大数据分析的机器学习技术进行探索。主成分分析(PCA)和对潜在结构的投影(PLS)允许找到每个特定速度/特定直径对所需的主要几何参数的最佳值。

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