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Long-term robust identification potential of a wavelet packet decomposition based recursive drift correction of E-nose data for Chinese spirits

机译:基于小波包分解的长期鲁棒识别电位基于电子鼻子数据的递归漂移校正

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摘要

The drift of electronic nose (E-nose) is always yielded, and makes it does not possess long-term robust detection ability, so that the detection accuracy of the same samples tested in the subsequent period will be reduced. In order to enhance the long-term identification robustness of six kinds of Chinese spirits, a recursive identification model was established. Firstly, E-nose data were decomposed by a wavelet packet and generated decomposition coefficients. Then a relative deviation threshold function was constructed to handle these coefficients. And then, the E-nose data with little drift or not were obtained by reconstructing the corrected coefficients. Finally, a concept of "sample test time window" (SMTW) was introduced for building the recursive identification model. The six kinds of spirit samples were discontinuously tested for 16 months, and the SMTW was determined as 6 months. As SMTW moves forward for 2 months every time, the recursive identification model based on Fisher discriminant analysis (FDA) was also built and the correct identification rate was 96.5%, namely the tested samples in 2 months of following SMTW could be accurately identified. This illustrates that the proposed methods are very effective. (C) 2019 Elsevier Ltd. All rights reserved.
机译:始终产生电子鼻子(E-鼻子)的漂移,并且使其不具有长期鲁棒的检测能力,从而降低了在随后的时段中测试的相同样本的检测精度。为了提高六种中国精神的长期识别稳健性,建立了递归识别模型。首先,通过小波包分解电子鼻数据并产生分解系数。然后构造相对偏差阈值函数以处理这些系数。然后,通过重建校正的系数来获得具有很小漂移或不漂移的电子鼻数据。最后,引入了“样本测试时间窗口”(SMTW)的概念,用于构建递归识别模型。六种精神样品被不连续测试16个月,SMTW确定为6个月。由于SMTW每次向前移动2个月时,还构建了基于Fisher判别分析(FDA)的递归识别模型,并且正确的识别率为96.5%,即在后续SMTW的2个月内测试的样品可以准确识别。这说明所提出的方法非常有效。 (c)2019年elestvier有限公司保留所有权利。

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