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電子鼻鑒別白酒信號小波去漂移方法
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國家自然科學(xué)基金項(xiàng)目(31571923、31171685)


Drift Elimination Method of Electronic Nose Signals Based on Wavelet Analysis and Discrimination of White Spirit Samples
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    摘要:

    為提高電子鼻長期鑒別的穩(wěn)健性,,提出了一種基于小波分析的電子鼻信號去漂移方法,。對含漂移信號的電子鼻數(shù)據(jù)進(jìn)行小波分解,,獲得分解系數(shù),;構(gòu)造一種相對偏差閾值濾波函數(shù)對小波逼近系數(shù)進(jìn)行閾值處理,,獲得修正的小波系數(shù),;運(yùn)用小波逆變換對修正后的小波系數(shù)進(jìn)行重構(gòu),,得到去除漂移或少漂移的電子鼻信號。對6種白酒樣本隨機(jī)生成的5組樣本訓(xùn)練集與對應(yīng)的測試集進(jìn)行去漂移處理與信號重構(gòu),,提取去漂移處理前后的電子鼻信號積分值特征,,并運(yùn)用Fisher判別分析(FDA)和BP神經(jīng)網(wǎng)絡(luò)分別對5組數(shù)據(jù)集進(jìn)行鑒別分析。FDA鑒別結(jié)果顯示,,無論是訓(xùn)練集還是測試集,5組樣本的鑒別正確率由去漂移前的最高值45%提升至去漂移后的100%,。BP神經(jīng)網(wǎng)絡(luò)鑒別結(jié)果顯示,,5組樣本的鑒別正確率由去漂移前的最高值31.7%提升至去漂移后的98.3%,。這說明所給出的去漂移方法在白酒電子鼻的鑒別中是穩(wěn)健有效的。同時,,也為電子鼻鑒別其他物品提供了一種可借鑒的去漂移方法,。

    Abstract:

    In order to enhance the longterm identification accuracy and robustness of enose, a drift elimination method of electronic nose (enose) signals based on wavelet analysis was proposed. Firstly, wavelet decomposition was used to decompose the enose data contained drift and generated decomposition coefficients. Secondly, a relative deviation threshold filtering function was constructed to threshold wavelet coefficients and then the corrected wavelet coefficients were obtained. Finally, the enose signals which had less or not drift signals were obtained by reconstructing the corrected coefficients. For six kinds of discriminated white spirit samples, five groups of training set samples and corresponding test set samples which were randomly generated were carried out the drift elimination processing and signal reconstruction by the proposed method. After the integral values (INV) selected as a feature of the original/reconstructed enose signals were extracted, Fisher discriminant analysis (FDA) and BP neural network were employed to deal with these feature arrays of the five groups of data patterns. The FDA results clearly showed that the highest correct identification rate of five groups of training set and test set samples was 45% before drift eliminating and up to all 100% after drift eliminating, respectively. Meanwhile, BP neural network results also showed that the highest correct identification rate of the five group samples was 31.7% before drift eliminating, and the correct identification rate was up to 98.3% after drift eliminating. The two kinds of identification results illustrated the proposed method was very effective and robust for white spirit samples identification. In addition, the drift elimination method also had the reference value for the identification of other food samples.

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殷勇,白玉,于慧春,郝銀鳳,王潤博.電子鼻鑒別白酒信號小波去漂移方法[J].農(nóng)業(yè)機(jī)械學(xué)報(bào),2016,47(11):219-223. Yin Yong, Bai Yu, Yu Huichun, Hao Yinfeng, Wang Runbo. Drift Elimination Method of Electronic Nose Signals Based on Wavelet Analysis and Discrimination of White Spirit Samples[J]. Transactions of the Chinese Society for Agricultural Machinery,2016,47(11):219-223.

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  • 收稿日期:2016-04-14
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  • 在線發(fā)布日期: 2016-11-10
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