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WAVELET DENOISING OF DERIVATIVE NEAR INFRARED SPECTRA (NIR)

机译:小波去噪近红外光谱(NIR)

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摘要

Although derivative can correct drift of spectra, it also brings on noise. The application of wavelet denoising (WD) to near infrared derivative spectra was investigated. The parameters such as wavelet function, threshold calculation and scale level were studied in detail. The WD performance was evaluated by means of ratio of signal-noise (S/N) and the predictive ability for RON (Research Octane Number) of gasoline. The results show that wavelet function and scale level have great effects on WD performance. WD can reduce markedly the noise from near infrared derivative spectra; improve effectively S/N and RON analysis accuracy. WD methods were compared with Fourier Transform denoising (FTD) and S-G smoothing (SGS) respectively. Wavelet methods are better than others are.
机译:尽管导数可以校正频谱漂移,但也会带来噪声。研究了小波去噪(WD)在近红外导数光谱中的应用。详细研究了小波函数,阈值计算和尺度水平等参数。通过信噪比(S / N)和汽油RON(研究辛烷值)的预测能力来评估WD性能。结果表明,小波函数和尺度水平对WD性能有很大影响。 WD可以显着降低来自近红外导数光谱的噪声;有效提高信噪比和RON分析精度。将WD方法分别与傅里叶变换降噪(FTD)和S-G平滑(SGS)进行了比较。小波方法优于其他方法。

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