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首页> 外文期刊>Sensors and Actuators >A drift correction method of E-nose data based on wavelet packet decomposition and no-load data: Case study on the robust identification of Chinese spirits
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A drift correction method of E-nose data based on wavelet packet decomposition and no-load data: Case study on the robust identification of Chinese spirits

机译:基于小波包分解和空载数据的电子鼻数据的漂移校正方法:案例研究中国烈酒的鲁棒识别

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摘要

Due to sensor aging, environmental changes and other factors, the drift of electronic nose (E-nose) signal is inevitable, and make E-nose does not own long-term robust detection capability. In order to improve the long-term detection capability of E-nose, a drift correction method based on wavelet packet decomposition and no-load data acquisition is proposed. Firstly, a no-load threshold function (NLTF) was proposed by decomposing the no-load data of the E-nose using wavelet packet decomposition, and then the NLTF was converted into a threshold function suiting for sample data (i.e. sample threshold function, STF). Secondly, Based on a concept of "sample measurement time window" (SMTW), the STF was employed to process the sample data within the SMTW; so that the drift contained in the sample data could be corrected. Finally, when the SMTW was recursively moved forward, the drift in all sample data corresponding to different time (or SMTW) could be corrected. As a study case, to realize the long-term robust detection of 6 kinds of Chinese spirits, the six kinds of Chinese spirits samples were tested intermittently for 12 months. When the SMTW was 3 months and the SMTW moved recursively forward 1 month every time, and after the above-mentioned drift correction method was applied to deal with these samples data within the SMTW, a long-term robust detection model based on Fisher discriminant analysis (FDA) was constructed with help of the idea of recursive correction. The model was able to carry out long-term robust detection for the six spirits samples; the correct identification rate could reach 100%. In addition, we also believe that the drift correction method has certain reference value for other E-nose data.
机译:由于传感器老化,环境变化和其他因素,电子鼻子(电子鼻)信号的漂移是不可避免的,使电子鼻子不具有长期鲁棒的检测能力。为了提高电子鼻的长期检测能力,提出了一种基于小波分组分解和空载数据采集的漂移校正方法。首先,通过使用小波分组分解分解电子鼻的空载数据来提出无负载阈值函数(NLTF),然后将NLTF转换为适用于采样数据的阈值函数(即采样阈值函数, STF)。其次,基于“样本测量时间窗”(SMTW)的概念,使用STF来处理SMTW内的样本数据;因此可以校正样本数据中包含的漂移。最后,当SMTW向前移动时,可以校正与不同时间(或SMTW)对应的所有样本数据中的漂移。作为一项学习案例,为了实现6种中国精神的长期稳健检测,六种中国烈酒样品间歇地测试了12个月。当SMTW为3个月并且SMTW每次递归移动1个月时,并且在应用上述漂移校正方法以处理SMTW内的这些样本数据之后,基于Fisher判别分析的长期鲁棒检测模型(FDA)在递归修正的帮助下构建。该模型能够对六个烈酒样品进行长期鲁棒检测;正确的识别率可以达到100%。此外,我们还认为漂移校正方法对其他电子鼻数据具有一定的参考值。

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