研究目的
To enhance the capability of resolving thin marine protective coating layers using terahertz pulsed imaging (TPI) based on a neural network-based hybrid signal processing method for in-line painting applications.
研究成果
The neural network-based hybrid signal processing approach, particularly combining wavelet analysis with BP neural network, provides accurate prediction of thin coating thickness, outperforming traditional methods like Fourier deconvolution, FFT, and multiple-regression analysis. It enhances TPI's capability for non-destructive testing of marine protective coatings, suitable for in-line applications.
研究不足
The study is based on numerical simulation, not experimental data; noise added is Gaussian white noise which may not fully represent real-world interference; dispersion and conductivity effects of coatings are neglected in simulations.
1:Experimental Design and Method Selection:
Numerical simulation using finite difference time domain (FDTD) method to obtain terahertz detected signals. Signal pre-processing techniques (Fourier deconvolution, FFT, wavelet analysis) and neural network (BP network) for quantification.
2:Sample Selection and Data Sources:
Models of marine protective coatings with different structures (antifouling and anticorrosive paint layers on steel substrate) simulated via FDTD. Data points: 512 per waveform.
3:List of Experimental Equipment and Materials:
Remcom XFDTD commercial software for simulations; MATLAB for signal processing and neural network implementation.
4:Experimental Procedures and Operational Workflow:
Simulate terahertz signals with FDTD, add Gaussian white noise (SNR 32 dB), apply pre-processing methods, use processed signals as input to optimized BP neural network for training and prediction of coating thickness.
5:Data Analysis Methods:
Root mean square error (RMSE), regression coefficient (RC), average normalized error (ANE) for performance evaluation; comparison with multiple-regression analysis.
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