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首页> 外文期刊>African Journal of Agricultural Research >Integration of modified uninformative variable elimination and successive projections algorithm for determination harvest time of laver by using visible and near infrared spectra
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Integration of modified uninformative variable elimination and successive projections algorithm for determination harvest time of laver by using visible and near infrared spectra

机译:结合改进的无信息变量消除和连续投影算法,通过可见和近红外光谱确定紫菜的收获时间

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In order to quickly and accurately determine the laver’s harvest time, we adopt combination of modified uninformative variable elimination, successive projection algorithm and visible-near infrared spectroscopy (Vis-NIR) technology to achieve this goal; as mass of spectral data with noise cannot build a stable and efficient recognition model, the effective wavelength should be extracted from the whole spectra. Modified uninformative variable elimination (Muve) algorithm was used to eliminate uninformative variable and noise, successive projection algorithm (SPA) was used to eliminate relevant redundant information, and the remaining variables of 19 were obtained. Finally, the remaining 19 variables were used to establish recognition model using partial least squares vector machine (LS-SVM), and satisfactory prediction rate of 96.67% was obtained. Meanwhile, compared to other traditional variable selection algorithms, such as genetic algorithm (GA) and simulated annealing (SA) algorithm, the proposed algorithms have more advantages.
机译:为了快速,准确地确定紫菜的收获时间,我们采用了改进的无信息变量消除,连续投影算法和可见近红外光谱技术(Vis-NIR)的组合来实现此目标;由于带有噪声的大量光谱数据无法建立稳定有效的识别模型,因此应从整个光谱中提取有效波长。采用改进的非信息变量消除(Muve)算法消除非信息变量和噪声,采用连续投影算法(SPA)消除相关的冗余信息,得到剩余的19个变量。最后,利用偏最小二乘向量机(LS-SVM),利用剩余的19个变量建立识别模型,预测满意率达到96.67%。同时,与遗传算法(GA)和模拟退火算法(SA)相比,该算法具有更多的优势。

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