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Discriminant Analysis of Liquor Brands Based on Moving-Window Waveband Screening Using Near-Infrared Spectroscopy 被引量:4
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作者 Jie Zhong Jiemei Chen +1 位作者 Lijun Yao Tao Pan 《American Journal of Analytical Chemistry》 2018年第3期124-133,共10页
Partial least squares discriminant analysis (PLS-DA) with integrated moving-window (MW) waveband screening was applied to the discriminant analysis of liquor brands with near-infrared (NIR) spectroscopy. Luzhou Laojia... Partial least squares discriminant analysis (PLS-DA) with integrated moving-window (MW) waveband screening was applied to the discriminant analysis of liquor brands with near-infrared (NIR) spectroscopy. Luzhou Laojiao, a popular liquor with strong fragrant flavor, was used as the identified liquor brand (160 samples, negative, 52 vol alcoholicity). Liquors of 10 other brands with strong fragrant flavor were used as the interferential brands (200 samples, positive, 52 vol alcoholicity). The Kennard-Stone algorithm was used for the division of modeling samples to achieve uniformity and representativeness. Based on the MW-PLS-DA, a simplified optimal model set with 157 wavebands was further proposed. This set contained five types of wavebands corresponding to the NIR absorption bands of water, ethanol, and other micronutrients (i.e., acids, aldehydes, phenols, and aromatic compounds) in liquor for practical choice. Using five selected simple models with 4775 - 4239, 7804 - 6569, 6264 - 5844, 9435 - 7896, and 12066 - 10373 cm-1, the validation recognition rates were obtained as 99.3% or higher. Results show good prediction performance and low model complexity, and also provided a valuable reference for designing small dedicated instruments. The proposed method is a promising tool for large-scale inspection of liquor food safety. 展开更多
关键词 LIQUOR Brands NEAR-INFRARED Spectroscopy PARTIAL Least SQUARES DISCRIMINANT Analysis moving-window waveband screening Simplified Optimal Model Set
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对截取波段处理的室性早搏分类方法研究 被引量:1
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作者 王霞 王姗 +1 位作者 唐予军 李兵兵 《现代电子技术》 北大核心 2020年第11期63-67,共5页
以往检测室性早搏多是直接对整个心电周期进行处理,噪声干扰大,分类准确率难以提高,分类效率较低,文中直接处理截取波段从而提高检测准确率。用小波变换对心电信号进行预处理,标记R波,计算RR间期,将心电信号周期短的信号(不含P波)筛选出... 以往检测室性早搏多是直接对整个心电周期进行处理,噪声干扰大,分类准确率难以提高,分类效率较低,文中直接处理截取波段从而提高检测准确率。用小波变换对心电信号进行预处理,标记R波,计算RR间期,将心电信号周期短的信号(不含P波)筛选出来,根据医生的建议及医学统计规律自动截取包含R波和T波的候选波段,用卷积神经网络对候选波段进行训练和分类。将候选波段输入卷积神经网络进行训练,识别率达到了预期效果。使用MIT-BIH心电数据库中的数据验证,其自动检测识别率达到97.3%,能够对医生的诊断提供有效帮助。 展开更多
关键词 室性早搏 截取波段处理 心电信号预处理 候选波段截取 信号筛选 候选波段训练
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