Physics-informed recurrent super-resolution generative reconstruction in rotating detonation combustor

被引:0
|
作者
Wang, Xutun [1 ]
Wen, Haocheng [1 ]
Wen, Quan [1 ]
Wang, Bing [1 ]
机构
[1] Tsinghua Univ, Sch Aerosp Engn, Beijing 100084, Peoples R China
关键词
Flow-field reconstruction; Physics-informed machine learning; Generative adversarial network; Recurrent neural network; Rotating detonation combustor; ADVERSARIAL NETWORKS;
D O I
10.1016/j.proci.2024.105649
中图分类号
O414.1 [热力学];
学科分类号
摘要
The high-resolution flow field information is crucial for understanding flow systems. Nevertheless, due to limitations in sensor technology and measurement methods, it is challenging to obtain high-resolution data in engineering applications. This study introduces a novel model called physics-informed recurrent generative adversarial network (PIRGAN) to obtain super-resolution results from low-resolution inputs, which is an inverse problem that is difficult to solve using traditional computational fluid dynamics (CFD) methods. The model integrates recurrent framework and embedding physical constraints into its architecture to perform superresolution generative reconstruction. During the generation process, this model calculates temporal derivatives based on low-resolution inputs and then updates the previous timestep's results by temporal derivatives to obtain the current timestep's results. The proposed PIRGAN model is demonstrated through its application to the reconstruction of flow fields in Rotating Detonation Combustors (RDC). Notably, PIRGAN successfully reconstructs detailed flow structure inside RDC, which is often indiscernible in low-resolution or interpolated results. Besides, the introduction of a recurrent framework offers the model's ability to capture the temporal characteristics and handle noisy inputs. As a surrogate model that extends the measurement capabilities within reactive flow systems, the model introduced in this study holds noticeable engineering significance.
引用
收藏
页数:7
相关论文
共 50 条
  • [31] Deep learning methods for super-resolution reconstruction of temperature fields in a supersonic combustor
    Kong, Chen
    Chang, Jun-Tao
    Li, Yun-Fei
    Chen, Ruo-Yu
    AIP ADVANCES, 2020, 10 (11)
  • [32] Physics-informed deep learning framework to model intense precipitation events at super resolution
    B. Teufel
    F. Carmo
    L. Sushama
    L. Sun
    M. N. Khaliq
    S. Bélair
    A. Shamseldin
    D. Nagesh Kumar
    J. Vaze
    Geoscience Letters, 10
  • [33] Physics-informed deep learning framework to model intense precipitation events at super resolution
    Teufel, B.
    Carmo, F.
    Sushama, L.
    Sun, L.
    Khaliq, M. N.
    Belair, S.
    Shamseldin, A.
    Kumar, D. Nagesh
    Vaze, J.
    GEOSCIENCE LETTERS, 2023, 10 (01)
  • [34] PhySRNet: Physics informed super-resolution network for application in computational solid mechanics
    Arora, Rajat
    2022 IEEE/ACM INTERNATIONAL WORKSHOP ON ARTIFICIAL INTELLIGENCE AND MACHINE LEARNING FOR SCIENTIFIC APPLICATIONS (AI4S), 2022, : 13 - 18
  • [35] Physics-informed surrogate modeling for a damaged rotating shaft
    Panagiotopoulou, Vasiliki
    Vlachas, Konstantinos
    Chatzi, Eleni
    Giglio, Marco
    Sbarufatti, Claudio
    e-Journal of Nondestructive Testing, 2024, 29 (07):
  • [36] Single-image super-resolution reconstruction via generative adversarial network
    Ju, Chunwu
    Su, Xiuqin
    Yang, Haoyuan
    Ning, Hailong
    9TH INTERNATIONAL SYMPOSIUM ON ADVANCED OPTICAL MANUFACTURING AND TESTING TECHNOLOGIES: OPTOELECTRONIC MATERIALS AND DEVICES FOR SENSING AND IMAGING, 2019, 10843
  • [37] A novel hybrid generative adversarial network for CT and MRI super-resolution reconstruction
    Xiao, Yueyue
    Chen, Chunxiao
    Wang, Liang
    Yu, Jie
    Fu, Xue
    Zou, Yuan
    Lin, Zhe
    Wang, Kunpeng
    PHYSICS IN MEDICINE AND BIOLOGY, 2023, 68 (13):
  • [38] Computational Integral Imaging Reconstruction Based on Generative Adversarial Network Super-Resolution
    Wu, Wei
    Wang, Shigang
    Chen, Wanzhong
    Qi, Zexin
    Zhao, Yan
    Zhong, Cheng
    Chen, Yuxin
    APPLIED SCIENCES-BASEL, 2024, 14 (02):
  • [39] A Transformer-Unet Generative Adversarial Network for the Super-Resolution Reconstruction of DEMs
    Zheng, Xin
    Xu, Zhaoqi
    Yin, Qian
    Bao, Zelun
    Chen, Zhirui
    Wang, Sizhu
    REMOTE SENSING, 2024, 16 (19)
  • [40] Single Face Image Super-resolution Reconstruction with Wasserstein Generative Adversarial Networks
    Gao, Yuquan
    Sun, Guoxi
    Zhao, Xinzhuo
    2024 IEEE 4TH INTERNATIONAL CONFERENCE ON SOFTWARE ENGINEERING AND ARTIFICIAL INTELLIGENCE, SEAI 2024, 2024, : 63 - 67