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首页> 外文期刊>Wood material science & engineering >Multivariate product adapted grading of Scots Pine sawn timber for an industrial customer, part 2: Robustness to disturbances
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Multivariate product adapted grading of Scots Pine sawn timber for an industrial customer, part 2: Robustness to disturbances

机译:面向工业客户的苏格兰松木锯材的多元产品适应等级,第2部分:抗扰性

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摘要

Holistic-subjective automatic grading (HSAG) of sawn timber by an industrial customer's product outcome is possible through the use of multivariate partial least squares discriminant analysis (PLS-DA), shown by part one of this two-part study. This second part of the study aimed at testing the robustness to disturbances of such an HSAG system when grading Scots Pine sawn timber partially covered in dust. The set of 308 clean planks from part one of this study, and a set of 310 dusty planks, that by being stored inside a sawmill accumulated a layer of dust, were used. Cameras scanned each plank in a sawmill's automatic sorting system that detected selected feature variables. The planks were then split and processed at a planing mill, and the product grade was correlated to the measured feature variables by partial least squares regression. Prediction models were tested using 5-fold cross-validation in four tests and compared to the reference result of part one of this study. The tests showed that the product adapted HSAG could grade dusty planks with similar or lower grading accuracy compared to grading clean planks. In tests grading dusty planks, the disturbing effect of the dust was difficult to capture through training.
机译:这项由两部分研究组成的第一部分显示,通过使用多元偏最小二乘判别分析(PLS-DA),可以根据工业客户的产品结果对锯材进行整体主观自动分级(HSAG)。该研究的第二部分旨在测试对部分覆盖有灰尘的苏格兰松木锯材进行分级时,这种HSAG系统对干扰的鲁棒性。使用了本研究第一部分中的308块干净木板,以及310块尘土木板,这些木板通过存放在锯木厂内会积聚一层灰尘。照相机在锯木厂的自动分类系统中扫描每个木板,该系统可以检测到选定的特征变量。然后将木板分开并在刨平机上进行处理,然后通过偏最小二乘回归将产品等级与测得的特征变量关联起来。在四项测试中使用5倍交叉验证对预测模型进行了测试,并将其与本研究第一部分的参考结果进行了比较。测试表明,与分级清洁木板相比,采用HSAG的产品可以对粉尘木板进行分级,分级精度相似或更低。在对多尘木板进行分级的测试中,很难通过训练来捕获尘埃的干扰效果。

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