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A dynamics-based tool for the analysis of experimental two-phase flows

机译:基于动力学的工具,用于分析实验两相流

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This paper aims at presenting a novel approach for the analysis of experimental void fraction time series detected from two phase flows and to flow pattern identification. The main scope is to address the complexity of the observed dynamics on the basis of the representation in phase space of the attractors of the experimental time series, allowing an appropriate description of the complex structure of the nonlinear behaviours of the process and, eventually, a systematic research of hints of a possible chaotic source of the system dynamics. The first step of the proposed approach is the reconstruction of an n-dimensional representation state space on the basis of Takens' theorem; the complex but regular attractors obtained in this way are noisy, mainly as a consequence of the high order dynamics associated to the secondary flow of small dispersed bubbles. Therefore, as a second step, Principal Component Analysis (PCA), also called Singular Value Decomposition (SVD), has been applied to the n-dimensional state space in order to determine the singular values of the state space and to project the attractor onto a new space spanned by the principal vectors. In this way it is possible to separate the dominant features of the system dynamics from noise-like dynamics, and to obtain unfolded phase portraits of the various flow patterns. As a final step, in order to achieve a deeper understanding, the attractors in the principal component phase portrait has been analysed by means of Poincare maps, which have led to the observation of low order system dynamics.
机译:本文旨在提出一种新颖的方法,用于分析从两相流中检测到的实验空隙率时间序列并进行流型识别。主要范围是根据实验时间序列的吸引子在相空间中的表示来解决观察到的动力学的复杂性,从而可以适当地描述过程的非线性行为的复杂结构,并最终描述对潜在的系统动力学混沌源进行系统研究。该方法的第一步是在Takens定理的基础上重建n维表示状态空间。以这种方式获得的复杂但规则的吸引子是嘈杂的,主要是由于与小的分散气泡的二次流动相关的高阶动力学的结果。因此,作为第二步,主成分分析(PCA)(也称为奇异值分解(SVD))已应用于n维状态空间,以确定状态空间的奇异值并将吸引子投影到由主向量跨越的新空间。通过这种方式,可以将系统动力学的主要特征与类似噪声的动力学分开,并获得各种流型的展开相图。最后,为了更深入地理解,已经通过Poincare映射分析了主成分相画像中的吸引子,从而观察了低阶系统动力学。

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