自编码
奇异值分解
降维
非线性系统
模型降阶
动态模态分解
人工神经网络
还原(数学)
维数之咒
物理
人工智能
算法
机械
模式识别(心理学)
应用数学
计算机科学
数学
投影(关系代数)
量子力学
几何学
作者
Hamidreza Eivazi,Hadi Veisi,Mohammad Hossein Naderi,Vahid Esfahanian
出处
期刊:Physics of Fluids
[American Institute of Physics]
日期:2020-10-01
卷期号:32 (10)
被引量:123
摘要
Unsteady fluid systems are nonlinear high-dimensional dynamical systems that may exhibit multiple complex phenomena both in time and space. Reduced Order Modeling (ROM) of fluid flows has been an active research topic in the recent decade with the primary goal to decompose complex flows to a set of features most important for future state prediction and control, typically using a dimensionality reduction technique. In this work, a novel data-driven technique based on the power of deep neural networks for reduced order modeling of the unsteady fluid flows is introduced. An autoencoder network is used for nonlinear dimension reduction and feature extraction as an alternative for singular value decomposition (SVD). Then, the extracted features are used as an input for long short-term memory network (LSTM) to predict the velocity field at future time instances. The proposed autoencoder-LSTM method is compared with non-intrusive reduced order models based on dynamic mode decomposition (DMD) and proper orthogonal decomposition (POD). Moreover, an autoencoder-DMD algorithm is introduced for reduced order modeling, which uses the autoencoder network for dimensionality reduction rather than SVD rank truncation. Results show that the autoencoder-LSTM method is considerably capable of predicting fluid flow evolution, where higher values for coefficient of determination $R^{2}$ are obtained using autoencoder-LSTM compared to other models.
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