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Classification of polyolefins from building and construction waste using NIR hyperspectral imaging system

机译:使用NIR高光谱成像系统对建筑和建筑废料中的聚烯烃进行分类

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摘要

This work was carried out to develop a hyperspectral imaging system in the near infrared (NIR) range (1000-1700 nm) to classify polyolefin particles from complex waste streams in order to improve their recovery, producing high purity polypropylene (PP) and polyethylene (PE) granulates, according to market requirements. In particular, hyperspectral images were acquired for polyolefins coming from building & construction waste (B&CW), divided into 9 different density fractions, ranging from <0.88 g/cm ~3 up to 0.96 g/cm ~3 and in different color classes. Spectral data were analyzed using principal component analysis (PCA) to reduce the high dimensionality of data and for selecting some effective wavelengths. Results showed that it was possible to recognize PP and PE waste particles and to define the "real cut density" between PP and PE from B&CW, to be utilized in the recycling process based on magnetic density separation (MDS). The results revealed the potentiality of NIR hyperspectral imaging as an objective and non-destructive method for classification and quality control purposes in the recycling chain of polyolefins.
机译:开展这项工作以开发近红外(NIR)范围(1000-1700 nm)中的高光谱成像系统,以对复杂废物流中的聚烯烃颗粒进行分类,以提高其回收率,从而生产出高纯度的聚丙烯(PP)和聚乙烯( PE)颗粒,根据市场要求。特别是,从建筑废料(B&CW)获得的聚烯烃的高光谱图像分为9个不同的密度部分,范围从<0.88 g / cm〜3到0.96 g / cm〜3,并且具有不同的颜色类别。使用主成分分析(PCA)分析了光谱数据,以减少数据的高维数并选择一些有效波长。结果表明,可以识别B和CW中的PP和PE废物颗粒,并定义PP和PE之间的“实际切割密度”,将其用于基于磁密度分离(MDS)的回收过程中。结果表明,NIR高光谱成像技术作为聚烯烃回收链分类和质量控制目的的客观,无损方法的潜力。

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