PREDICTION METHOD FOR STALL AND SURGE OF AXIAL COMPRESSOR BASED ON DEEP LEARNING

    公开(公告)号:US20220092428A1

    公开(公告)日:2022-03-24

    申请号:US17312278

    申请日:2020-09-28

    Abstract: The present invention relates to a prediction method for stall and surge of an axial compressor based on deep learning. The method comprises the following steps: firstly, preprocessing data with stall and surge of an aeroengine, and partitioning a test data set and a training data set from experimental data. Secondly, constructing an LR branch network module, a WaveNet branch network module and a LR-WaveNet prediction model in sequence. Finally, conducting real-time prediction on the test data: preprocessing test set data in the same manner, and adjusting data dimension according to input requirements of the LR-WaveNet prediction model; giving surge prediction probabilities of all samples by means of the LR-WaveNet prediction model according to time sequence; and giving the probability of surge that data with noise points changes over time by means of the LR-WaveNet prediction model, to test the anti-interference performance of the model.

    SPATIOTEMPORAL DYNAMIC SYSTEM SOFT SENSING METHOD FOR AUTOMATICALLY DETERMINING PARTIAL DIFFERENTIAL EQUATION (PDE) STRUCTURE

    公开(公告)号:US20250045347A1

    公开(公告)日:2025-02-06

    申请号:US18713854

    申请日:2023-08-17

    Abstract: The present invention provides a spatiotemporal dynamic system soft sensing method for automatically determining a partial differential equation (PDE) structure and belongs to the technical field of soft sensing of neural networks. Firstly, a loss function for training a coupled physics-informed neural network with a recurrent prediction mechanism is constructed to obtain a solution and a driving source which satisfy a PDE used for describing spatiotemporal industrial processes; secondly, differential operator candidates are obtained by an automatic differentiation method, and an appropriate PDE structure is selected from the differential operator candidates to accurately describe the spatiotemporal industrial processes; and finally, the soft sensing result is verified using heat diffuse phenomena and actual vibration processes. The CPINNRP-AIC is suitable for soft sensing methods of multi-class dynamic systems with spatiotemporal dependence, can achieve the effective acquisition of key variable values for high-end complex equipment such as an aero-engine in operation processes.

    COUPLED PHYSICS-INFORMED NEURAL NETWORK FOR SOLVING DISPLACEMENT DISTRIBUTION OF BOUNDED VIBRATION STRING UNDER UNKNOWN EXTERNAL DRIVING FORCE

    公开(公告)号:US20250036935A1

    公开(公告)日:2025-01-30

    申请号:US18280581

    申请日:2023-05-17

    Abstract: A coupled physics-informed neural network for solving displacement distribution of a bounded vibration string under an unknown external driving force is provided. A novel PINN is proposed, called C-PINN, used for solving the displacement distribution of the bounded vibration string under an external driving force with little or even no priori information. It comprises two neural networks: NetU and NetG. NetU is used for approximating satisfying the displacement distribution of the bounded vibration string under study. NetG is used for regularizing u in the NetU to satisfy the displacement distribution of the approximation of NetU. The two networks are integrated into a data-physics-hybrid loss function. In addition, a proposed hierarchical training strategy is used for optimizing the loss function and realizing the coupling of the two networks. Finally, the performance of the C-PINN in solving the displacement distribution of the bounded vibration string under the external driving force is verified.

    OPTIMIZATION ALGORITHM FOR AUTOMATICALLY DETERMINING VARIATIONAL MODE DECOMPOSITION PARAMETERS BASED ON BEARING VIBRATION SIGNALS

    公开(公告)号:US20240068907A1

    公开(公告)日:2024-02-29

    申请号:US18021493

    申请日:2022-05-11

    CPC classification number: G01M13/045 G06N3/126

    Abstract: The present invention provides an optimization algorithm for automatically determining variational mode decomposition parameters based on bearing vibration signals. First, mode energy is used to reflect bandwidth, a bandwidth optimization sub-model is established to automatically obtain optimal bandwidth parameter αopt. Secondly, energy loss optimization sub-model is established to avoid under-decomposition. Thirdly, a mode mean position distance optimization sub-model is established to prevent the generation of too much K and avoid the phenomenon of over-decomposition. Finally, considering the interaction between the bandwidth parameter α and the total number of modes K, the interaction between mode components and the integrity of reconstruction information, nonlinear transformation is performed by a logarithmic function, so as to make the values of three optimization sub-models form similar scales, obtain an optimization model that can automatically determine optimal VMD parameters αopt and Kopt, and establish a quantitative evaluation index for the decomposition performance of a VMD algorithm.

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