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首页> 外文期刊>Transactions of the ASABE >UV/Visible/Near-Infrared Reflectance Models for the Rapid and Non-Destructive Prediction and Classification of Cotton Color and Physical Indices
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UV/Visible/Near-Infrared Reflectance Models for the Rapid and Non-Destructive Prediction and Classification of Cotton Color and Physical Indices

机译:紫外线/可见光/近红外反射率模型,用于棉花颜色和物理指标的快速,无损预测和分类

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摘要

HVI, utilized in the cotton industry to determine the qualities and classifications of cotton fibers, is time consuming and sometimes destructive. UV/visible/NIR spectroscopy, a rapid and easy sampling technique, was investigated as a potential method for the prediction of such key cotton color and physical attributes as reflectance (Rd), yellowness (+b), micronaire, strength, mean length, upper-half mean length, short fiber index, and uniformity index. Cotton fibers were scanned in the region of 220-2200 nm, and HVI values were measured as the references. PLS regression models were individually developed and then compared for each property in three spectral ranges. The best performances for nearly all properties were obtained from the region covering the UV/visible absorptions, which was in consistent agreement with Pearson correlations from HVI data alone. On the basis of RPD value in the validation set, the suitability of UV/visible/NIR predictive models could be in the descending order of micronaire, +b, Rd, mean length, upper-half mean length, uniformity index, short fiber index, and strength. In addition, to limit the possibility of misclassification for boundary samples from the micronaire PLS model, a 3-class SIMCA/PCA model was developed and the classification efficiency was compared. The comparison indicated that the discrimination model utilizing the UV/visible region could assign one cotton fiber to an appropriate micronaire class of "Discount Range," "Base Range," or "Premium Range" with a success rate of 100% for the samples under investigation. Both prediction and classification results suggested that the UV/visible/NIR technique is an accurate means of determining fiber micronaire for cotton quality grading and classification
机译:HVI在棉花行业用于确定棉纤维的质量和分类,既耗时,有时也会造成破坏。紫外/可见/近红外光谱技术是一种快速简便的采样技术,已被研究为预测​​关键棉花颜色和物理属性(如反射率(Rd),黄度(+ b),马克隆值,强度,平均长度,上半部平均长度,短纤维指数和均匀度指数。在220-2200nm的范围内扫描棉纤维,并测量HVI值作为参考。分别开发PLS回归模型,然后在三个光谱范围内比较每个属性。从覆盖紫外线/可见光的区域获得了几乎所有性能的最佳性能,这与仅从HVI数据获得的Pearson相关性是一致的。根据验证集中的RPD值,UV /可见/ NIR预测模型的适用性可以按照马克隆尼值,+ b,Rd,平均长度,上半部平均长度,均匀度指数,短纤维指数的降序排列和力量。此外,为了限制马克隆PLS模型对边界样本进行错误分类的可能性,开发了3类SIMCA / PCA模型并比较了分类效率。比较表明,利用紫外线/可见光区域的判别模型可以将一根棉纤维分配给适当的马克隆值类别:“折扣范围”,“基本范围”或“高级范围”,在此条件下,样本的成功率为100%调查。预测结果和分类结果均表明,紫外/可见/近红外技术是确定棉花品质分级和分类的纤维马克隆值的准确方法

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