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An Entropy-Based Method of Background and Noise Removal for Analysis of Near-Infrared Spectra

机译:基于熵的背景和噪声消除方法用于近红外光谱分析

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A new algorithm (WFCE) was proposed for simultaneously eliminating background and noise based on wavelet packet transform (WPT) and information entropy theory. At first, WPT algorithm and reconstruction algorithm were employed to split the raw spectra into different frequency components. Then the information entropy of each frequency component was calculated, showing the uncertainty to the measured analyte concentration. At last, based on comparison of information entropy, the importance of each frequency component to the whole spectra was evaluated and the suitable wavelet components representing background and noise can be determined for removal. WFCE algorithm was validated by measuring the original extract concentration of beer using the NIR spectra. The results show that the prediction ability and robustness of models obtained in subsequent partial least squares calibration using WFCE were superior to those obtained using other algorithm, and the root mean square errors of prediction can decrease by up to 38.6%, indicating that WFCE is an effective method for elimination of background and noise.
机译:基于小波包变换(WPT)和信息熵理论,提出了一种同时消除背景和噪声的新算法(WFCE)。首先,采用WPT算法和重构算法将原始频谱划分为不同的频率分量。然后,计算每个频率分量的信息熵,从而显示出所测分析物浓度的不确定性。最后,基于信息熵的比较,评估了各个频率分量对整个频谱的重要性,并确定了适合去除背景和噪声的小波分量。通过使用NIR光谱测量啤酒的原始提取物浓度来验证WFCE算法。结果表明,在随后使用WFCE进行的局部最小二乘校准中获得的模型的预测能力和鲁棒性优于使用其他算法获得的模型,并且预测的均方根误差最多可降低38.6%,表明WFCE是消除背景和噪音的有效方法。

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