Femtosecond laser-induced breakdown spectroscopy studies for the identification of plastics
Abstract
We report the identification of five extensively used post-consumer plastics using the femtosecond laser-induced breakdown spectroscopy (fs-LIBS) technique. All the samples were obtained from a local recycling unit. An ultra-fast amplifier system delivering pulses of ∼50 fs duration was used for the investigation. Initially, a 2D scatter plot approach was employed in which a pair of selected spectral features was utilized to discriminate the samples. H–CN and C2–CN plots have shown promising discrimination. Apart from bivariate studies, principal component analysis (PCA) has been employed for the exploratory analysis where excellent segregation was achieved. Further, data were analysed using a supervised algorithm, artificial neural network (ANN). For efficient identification, an ANN model was constructed and evaluated by exploiting five different spectral windows/regions. The average identification rates obtained for all samples are in the range of 97 to 99% depending on the spectral window. The correct prediction rates with 100% accuracy were achieved when 10 prominent spectral features were employed. These findings demonstrate that the fs-LIBS combined with multivariate techniques can work as an efficient spectroscopic tool for the identification of post-consumer plastics.