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首页> 外文期刊>Applied Spectroscopy: Society for Applied Spectroscopy >Optimizing Rice Near-Infrared Models Using Fractional Order Savitzky-Golay Derivation (FOSGD) Combined with Competitive Adaptive Reweighted Sampling (CARS)
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Optimizing Rice Near-Infrared Models Using Fractional Order Savitzky-Golay Derivation (FOSGD) Combined with Competitive Adaptive Reweighted Sampling (CARS)

机译:使用分数顺序优化稻米近红外模型,Savitzky-Golay推导(FOSGD)与竞争自适应重新免除采样(汽车)相结合

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摘要

Developing a rapid and stable method for analyzing the quality parameters of rice is important. Near-infrared (NIR) spectroscopy combined with chemometric techniques have been used to predict the critical contents of rice and shown its accuracy and stability. To further improve the predictive ability, we combine the derivative method of fractional order Savitzky-Golay derivation (FOSGD) with the wavelength selection method of competitive adaptive reweighted sampling (CARS). Compared with the traditional integer order Savitzky-Golay derivation (IOSGD), the FOSGD could improve the resolution ratio of the raw spectra more effectively. The wavelength selection method, CARS, could further extract the informative variables from the processed spectra. Four key contents of rice samples, including moisture, amylose, chalkiness degree, and gel consistency, were utilized to validate this method. The prediction results indicated that partial least squares (PLS) models optimized with FOSGD-CARS own higher accuracy and stability with smaller the root mean squared error of cross validations (RMSECVs) and root mean squared error of predictions (RMSEPs). The proposed method is convenient and provides a practical alternative for rice analysis.
机译:开发快速稳定的分析水稻质量参数的方法很重要。近红外(NIR)光谱结合化学计量技术已经用于预测水稻的关键含量,并显示其精度和稳定性。为了进一步提高预测能力,我们将分数顺序的衍生方式与竞争自适应重新加工(汽车)的波长选择方法相结合。与传统整数秩序Savitzky-Golay推导(IOSGD)相比,FOSGD可以更有效地提高原始光谱的分辨率。波长选择方法,汽车,可以进一步提取来自处理的光谱的信息变量。使用水稻样品的四个关键含量,包括水分,直链淀粉,粉状度和凝胶稠度,以验证该方法。预测结果表明,使用FOSGD-CARS优化的部分最小二乘(PLS)模型拥有更高的精度和稳定性,其横向验证(RMSECVS)的根均方误差越小,并且预测的根均比误差(RMSEPS)。该方法方便,提供了水稻分析的实用替代方案。

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