Data-Driven Modal Decomposition Methods as Feature Detection Techniques for Flow Fields in Hydraulic Machinery: A Mini Review
Abstract
:1. Introduction
2. Mathematical Principles and Enhancements
2.1. The Dynamic Mode Decomposition Method
2.1.1. The Mathematical Principles of the DMD
2.1.2. The Improvements of the DMD
2.2. The Proper Orthogonal Decomposition Method
2.2.1. The Mathematical Principles of POD
2.2.2. The Improvements of POD
2.3. The Spectral Proper Orthogonal Decomposition Method
2.3.1. The Mathematical Principles of SPOD
2.3.2. The Improvements of SPOD
2.4. Comparison
3. Application
3.1. Application of DMD
3.2. Application of POD
3.3. Application of SPOD
3.4. The Combined Application of Modal Decomposition Methods
4. Conclusions and Outlook
- The DMD method can seize the dynamic characteristics of cavitating flow fields and provides relatively accurate modal decomposition results in effect. It not only identifies the primary vortex structures but also reveals their spatiotemporal evolution patterns. The modes obtained by DMD have single frequencies and growth rates, thus offering significant advantages in analyzing the dynamics of linear and periodic flows. Since the development of DMD is based on linear dynamic assumptions, future research in DMD algorithms will focus on how to select appropriate observation quantities and integrate high-precision nonlinear system identification techniques for better analysis of nonlinear problems.
- The POD method also plays a significant role in analyzing cavitating flow fields. By performing spatial modal decomposition on flow field data, it obtains the primary vibration modes within the flow field, revealing the spatial structure of cavitation phenomena and the distribution pattern of energy. With increasing demand for artificial intelligence, there has been relatively little research, both domestically and internationally, on the application of the POD method in data-driven approaches, particularly in deep learning. In the future, the combination of the POD method with deep learning techniques could lead to more effective methods for flow field data analysis and mode extraction.
- The SPOD method expands the understanding of cavitating flow fields. By performing spectral decomposition on flow field data, it extracts the primary frequency components within the flow field, the structures on other modes complement and reinforce the dominant mode structure, making the flow field information more realistic. However, the computational complexity of SPOD is typically high, and further improvements in data processing techniques are needed to enhance the applicability and accuracy of the SPOD method for experimental or simulation data in the future.
Author Contributions
Funding
Data Availability Statement
Conflicts of Interest
References
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Improvement Method | Reference |
---|---|
Optimized DMD | Chen et al. [20] |
A sparsity-promoting variant of the standard DMD algorithm | Jovanović et al. [21] |
The multiresolution DMD | Kutz et al. [22] |
Recursive dynamic mode decomposition | Noack et al. [23] |
DMD with control | Proctor et al. [24] |
Higher order dynamic mode decomposition | Le Clainche et al. [25] |
A reduced-order analysis using optimized DMD | Statnikov et al. [26] |
A randomized algorithm for computing the near-optimal low-rank DMD | Erichson et al. [27] |
A regularization term for the forward and backward dynamics | Azencot et al. [28] |
Robust dynamic mode decomposition | Abolmasoumi et al. [29] |
Discarding the characteristic functions | Rosenfeld et al. [30] |
Non-stationary DMD | Ferre et al. [31] |
DMD with memory | Anzaki et al. [32] |
The mode amplitude criterion | Schmid [33] |
The mode energy criterion | Tissot [34] |
A criterion for selecting dominant modes from DMD technique | Kou et al. [35] |
The clustering method | Wu et al. [36] |
Improvement Method | Reference |
---|---|
Reduced-order models | Hall et al. [38] |
Optimality systems–POD | Kunisch et al. [39] |
Hierarchical approximate POD | Himpe et al. [40] |
Structure-preserved POD | Yan et al. [41] |
Adaptive POD | Kastian et al. [42] |
Zonal POD | Butcher et al. [43] |
Cross POD | Cavalieri et al. [44] |
POD deep convolutional generative adversarial networks | Long et al. [45] |
POD–Radial Basis Function | Peng et al. [46] |
Further improvement of POD-ANN method | Rageh et al. [47] |
POD–Artificial Neural Network | Jacquier et al. [48] |
POD–Deep Belief Network | Shi et al. [49] |
Improvement of POD–Galerkin reduced-order model | Zhang et al. [50] |
A hybrid method based on POD and DNNs | Zhao et al. [51] |
A multiple POD | Ying et al. [52] |
Improvement Method | Reference |
---|---|
Streaming algorithm for SPOD | Schmidt et al. [53] |
Improved convergence of the SPOD SPOD through time shifting | Blanco et al. [54] |
Extended SPOD | Zhang et al. [55] |
Gappy SPOD | Nekkanti et al. [56] |
Improvement of Gappy SPOD | Brothers, Ethan [57] |
Application Field | Specific Application | References |
---|---|---|
Hydrofoil | The unsteady flow field around a pitching airfoil was investigated using the DMD method. | Mariappan et al. [67] |
The velocity field of the unsteady cavitating flow around the NACA66 airfoil was decomposed using the DMD method, further obtaining the dynamic characteristics of the flow field and the structural features of cavitation. | Xie et al. [19] | |
The unsteady cavitating flow over the Clark-Y hydrofoil was numerically investigated by DMD using an improved PANS model and a simplified Zwart–Gerber–Belamri cavitation model based on the R-P equation. | Qiu et al. [68] | |
Using the DMD method, the cavitating flow field of the NACA0015 hydrofoil was analyzed. | Wu et al. [36] | |
Pump | The transient velocity field of unsteady two-phase flow in a helical axial flow pump was decomposed by DMD. | Zhang et al. [69] |
DMD was utilized to explore the intricate transient behavior of two-phase flow within a multiphase pump operating at inlet gas volume fractions (GVFs) of 10% and 20%. | Liu et al. [70] | |
To delve deeper into the gas–liquid flow characteristics of a three-stage multiphase pump, the method of DMD and reconstruction was introduced. | Liu et al. [71] | |
The velocity distribution and oscillation characteristics of the volute under nominal and low flow-rate conditions were obtained using DMD | Li et al. [72] | |
The DMD method was applied to analyze pressure fluctuations within the volute, taking into account the unsteady flow conditions in centrifugal pumps with varying trailing edge shapes. | Song et al. [73] | |
The DMD method was employed to decouple and reconstruct the flow in the centrifugal pump. | Yu et al. [74] | |
The complex non-stationary flow in centrifugal pumps with varying Inlet Gas Volume Fractions (IGVFs) was analyzed using numerical simulation and the DMD method. | Zhang et al. [75] | |
Turbine | FFT and DMD methods are used to analyze the dynamics of the near wake region. | Wu et al. [76] |
Pump turbine | The DMD method was employed to investigate both incipient and critical cavitation of a model pump turbine, accurately extracting runner characteristics in pump mode under cavitation conditions. | Wu et al. [77] |
In this paper, DMD is used for the first time to decompose and reconstruct the tip leakage vortex (TLV) in a mixed flow pump operating as a turbine at pump mode. | Han et al. [78] | |
Propeller | The transient eddy current structure obtained by LES is analyzed by DMD, which expands understanding of propeller wake dynamics. | Zhi et al. [79] |
The wake dynamics of a pump-jet propulsor (PJP) and a ducted propeller (DP) were investigated using DMD analysis, to understand the influence of the pre-swirl stator on the PJP system. | Zhao et al. [80] |
Application Field | Specific Application | References |
---|---|---|
Hydrofoil | This study aims to uncover how the wedge-type cavitating-bubble generator (WCG), a passive control method, affects the cloud cavitation dynamics of the NACA 66 hydrofoil, utilizing the POD method to extract the dominant flow structures. | Hong et al. [81] |
PIV was used to study the vortex structures of a hydrofoil with leading-edge tubercles, compared to a standard hydrofoil. PIV velocity field data from water tunnel tests were analyzed using the POD technique. | Wei et al. [82] | |
Proposed the use of an inlet V-groove to investigate cavitating flow around NACA66 hydrofoil and applied POD to study the coherent structures of cavitation. | Jia et al. [83] | |
The implementation of POD theory analyzed the cavitating flow around the NACA0015 hydrofoil, delving into the fundamental mechanisms of the hydrofoil’s reattachment jet behavior and pressure gradient mechanism. | Yu et al. [84] | |
Pump | The POD method was used to decompose and reconstruct the flow field at the tongue plate of the centrifugal pump. | Lu et al. [85] |
The utilization of the POD method further elucidated the intricate relationship between the shape of centrifugal pump blades and their corresponding hydraulic performance, uncovering the impact of optimized blade shapes on flow solutions. | Zhang et al. [86] | |
The POD method elucidates the emergence and evolution of the predominant unsteady flow structures within a vanless centrifugal pump impeller. | Liao et al. [87] | |
To examine the unsteady flow field evolving in a centrifugal pump, the POD method is utilized to separate and reconstruct the coherent flow structures. | Chen et al. [88] | |
Given the intricacy of the two-phase flow field within the liquid ring pump, the POD method is utilized to decompose the transient two-phase flow field within the pump. | Guo et al. [89] | |
The POD method is used to analyze the TLV structure in axial flow pump. | Fei et al. [90] | |
The spatiotemporal characteristics of multiscale flow structures in the diffuser of a water jet pump were obtained through statistical analysis and the POD method. | Zhang et al. [91] | |
Turbine | The POD is applied to the antisymmetric and symmetric components of the turbulent fluctuating velocity field in the draft tube to distinguish the dynamics of azimuthal instabilities. | Litvinov et al. [92] |
The study employed the POD method to investigate the unsteady cavitating spiral vortex, extracting dominant modes and frequencies, thus providing insights for enhancing the design and performance of hydraulic turbines. | Stefan et al. [93] | |
Pump turbine | The coherent structures within the intricate flow field in the runner area of the pump turbine were isolated and analyzed employing the Finite-Time Lyapunov Exponent (FTLE) and POD methods. | Guang et al. [94] |
Utilizing the POD method, they investigated the frequency characteristics and spatial intensity distribution of the stall cell in the pump turbine. | Yang et al. [95] | |
The simplified turbine model underwent POD analysis to examine individual modes. | Skripkin et al. [96] | |
Propeller | Applying the POD method for marine propeller shape optimization has been validated in the case of the INSEAN-E779A propeller. | Gaggero et al. [97] |
The POD method is applied to the non-steady wall pressure field to analyze the unsteady flow characteristics and its associated hydroacoustic emission, utilizing both POD methodology and experimental approaches. | Witte et al. [98] | |
The method of combining POD with Wavelet Transform is employed to investigate how the dominant structures mutually influence each other. | Nargi et al. [99] | |
The POD method can identify the dominant flow structures, providing a quantitative means to analyze the flow mechanism. | Wei et al. [100] |
Application Field | Specific Application | References |
---|---|---|
Hydrofoil | The SPOD method was introduced to study the interaction between Internal Solitary Waves (ISWs) and hydrofoil ships. This method provides comprehensive frequency-domain flow field information and principal frequency modes. | Zou et al. [101] |
Pump | The coherent structure of the noise characteristic signals induced by cavitation in the centrifugal pump was established using the SPOD method. | Lu et al. [102] |
Turbine | The turbulent coherent structure in the draft tube of the bulb turbine was identified by the SPOD of the velocity field to correlate the change in its topological structure with the decrease in efficiency. | Buron et al. [103] |
To extract the dominant structure of the endwall flow field and its unsteady behavior, the SPOD method is used to analyze and compare the PIV measurement and numerical results | Donovan et al. [104] | |
The study utilized the SPOD method to decompose the modal structures of vertical-axis turbine wakes into different frequencies. | Wang et al. [105] |
Application Field | Specific Application | References |
---|---|---|
Hydrofoil | The dominant coherent structures around a Clark-Y hydrofoil were identified using the POD and DMD methods. Additionally, the DMD method was capable of predicting transient cavitating flows. | Liu et al. [63] |
The dynamic characteristics of sheet/cloud cavitation under flow–structure interaction were investigated on an improved NACA66 hydrofoil. | Liu et al. [106] | |
The DMD and POD methods were employed to extract coherent structures in the cavitating flow around the ALE-15 hydrofoil. | Liu et al. [107] | |
Pump | The morphology and evolutionary characteristics were investigated using the SPOD and DMD methods. | Li et al. [108] |
DMD and SPOD are utilized to decouple the complex coherent structure of high-speed jets in liquid ring pump ejectors. | Jiang et al. [109] | |
The POD and SPOD methods were introduced to analyze the complex spatiotemporal evolution of the flow field in the liquid ring pump injector. | Jiang et al. [110] | |
Propeller | The utilization of POD and DMD to identify the dominant modes in the physics of propeller wake instability has further enhanced our understanding of the inception mechanisms under heavy loading conditions. | Wang et al. [111] |
To decompose the wake field, the POD and DMD methods were used. | Shi et al. [112] |
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Xu, B.; Zhang, L.; Zhang, W.; Deng, Y.; Wong, T.N. Data-Driven Modal Decomposition Methods as Feature Detection Techniques for Flow Fields in Hydraulic Machinery: A Mini Review. J. Mar. Sci. Eng. 2024, 12, 813. https://doi.org/10.3390/jmse12050813
Xu B, Zhang L, Zhang W, Deng Y, Wong TN. Data-Driven Modal Decomposition Methods as Feature Detection Techniques for Flow Fields in Hydraulic Machinery: A Mini Review. Journal of Marine Science and Engineering. 2024; 12(5):813. https://doi.org/10.3390/jmse12050813
Chicago/Turabian StyleXu, Bin, Liwen Zhang, Weibin Zhang, Yilin Deng, and Teck Neng Wong. 2024. "Data-Driven Modal Decomposition Methods as Feature Detection Techniques for Flow Fields in Hydraulic Machinery: A Mini Review" Journal of Marine Science and Engineering 12, no. 5: 813. https://doi.org/10.3390/jmse12050813
APA StyleXu, B., Zhang, L., Zhang, W., Deng, Y., & Wong, T. N. (2024). Data-Driven Modal Decomposition Methods as Feature Detection Techniques for Flow Fields in Hydraulic Machinery: A Mini Review. Journal of Marine Science and Engineering, 12(5), 813. https://doi.org/10.3390/jmse12050813