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A hyperspectral imaging sensor for on-line quality control of extruded polymer composite products

机译:高光谱成像传感器,用于挤出聚合物复合材料产品的在线质量控制

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摘要

This study examines the ability of chemometrics methods, namely multivariate image analysis (MIA) and Grey Level Co-occurrence Matrix analysis (GLCM), to extract meaningful information from visible and near-infrared spectral images of extruded wood/plastic composite materials for predicting spatio-temporal variations in their properties. The samples were produced under varying process and feed conditions according to designed experiments. Mechanical properties of the samples were measured using standard analytical methods both during steady-state and dynamic transition periods. A Bootstrap-PLS regression technique was first used for selecting the spectral bands (i.e. wavelengths) that were the most highly correlated with the material properties. In a second step, a more parsimonious PLS regression model was built between the spectral and textural features extracted from the lower dimensional spectral images and the corresponding quality properties of each sample. The imaging sensor was able to simultaneously monitor 7 properties in both steady-state operation and during transitions.
机译:这项研究检验了化学计量学方法(即多元图像分析(MIA)和灰度共生矩阵分析(GLCM))从挤压的木材/塑料复合材料的可见和近红外光谱图像中提取有意义的信息以预测空间分布的能力。的时间变化。根据设计的实验,样品在不同的工艺和进料条件下生产。在稳态和动态过渡期间,均使用标准分析方法测量了样品的机械性能。首先使用Bootstrap-PLS回归技术来选择与材料特性最相关的光谱带(即波长)。第二步,在从低维光谱图像中提取的光谱特征和纹理特征与每个样品的相应质量特性之间建立了更简约的PLS回归模型。成像传感器能够在稳态操作和转换期间同时监视7个属性。

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