Monitoring CaCO 3 Content in Recycled Polypropylene with Raman Spectrometry

As a commonly used filler, CaCO frequently finds its way into recycled polypropylene (rPP) as a contaminant during the mechanical recycling process. Given the substantial impact of CaCO on the properties of PP materials, close monitoring of their content is important to ensure the quality of rPP. In...

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Veröffentlicht in:ACS omega 2024-06, Vol.9 (22), p.23462
Hauptverfasser: Wang, Pixiang, Long, Dayne M, Zhan, Ke, Peng, Yucheng, Wang, Yifen, Liu, Shaoyang
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Long, Dayne M
Zhan, Ke
Peng, Yucheng
Wang, Yifen
Liu, Shaoyang
description As a commonly used filler, CaCO frequently finds its way into recycled polypropylene (rPP) as a contaminant during the mechanical recycling process. Given the substantial impact of CaCO on the properties of PP materials, close monitoring of their content is important to ensure the quality of rPP. In the present work, Raman spectrometry was employed to develop a rapid, accurate, and convenient method for determining CaCO content in rPP. Partial least-squares (PLS) regression was used to construct prediction models. Various spectrum pretreatment methods, including multivariate scatter correction (MSC), standard normal variate transformation (SNV), smoothing, and first derivative, were investigated to improve the model performance. In independent validation, the optimal PLS model reached an of 0.9735 and a root-mean-square error of prediction (RMSEP) of 2.7786 CaCO wt %. Furthermore, linear and second-order polynomial regressions, utilizing the intensity ratios of characteristic CaCO and PP Raman peaks, were conducted. The most effective quadratic regression curve demonstrated superior independent validation performance with an of 0.9926 and an RMSEP of 1.6999 CaCO wt %. Validation with recycled PP samples confirmed that the quadratic regression was more accurate and reliable to quantify CaCO in rPP. The observed quadratic relationship between the CaCO and PP Raman peak intensity ratio and the CaCO wt % can be attributed to the significant difference in the densities of the two components. The outcomes of this research will help to facilitate the proper recycling of PP materials.
doi_str_mv 10.1021/acsomega.4c00414
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