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A Novel LIBS-MachineLearning Strategy for MultimetalDetection in Microsized PMMA Particles: Efficient Quantification forComposite Pollution

Figshare 2025 Score: 38 ? 0–100 AI score estimating relevance to the microplastics field. Papers below 30 are filtered from public browse.
Rongling Zhang (10035448), Chenjia Song (21625669), Jingzhong Liu (2213368), Tianlong Zhang (9920561), Hongsheng Tang (407746), Hua Li (46469)

Summary

Researchers developed a novel approach combining laser-induced breakdown spectroscopy (LIBS) with machine learning to simultaneously detect and quantify three heavy metals (chromium, lead, and copper) in 2-micrometer PMMA microplastic particles, finding that partial least-squares calibration models with spectral preprocessing achieved R-squared values above 0.90 for all three metals. The study demonstrates that microplastics can serve as vectors for composite metal contamination, and that optimized LIBS-ML pipelines substantially outperform univariate calibration methods for this detection task.

Polymers

Microplastics (MPs) have emerged as a critical environmental pollutant, causing composite pollution through their widespread production, usage, and disposal, as well as their capacity to carry other contaminants such as heavy metals. This study presents a novel approach combining laser-induced breakdown spectroscopy (LIBS) with machine learning for the simultaneous quantitative detection of three metals (Cr, Pb, and Cu) in 25 contaminated poly(methyl methacrylate) (PMMA) samples with a diameter of 2 μm. The effects of different preprocessing methods and variable selection techniques on the predictive performance of partial least-squares (PLS) calibration models were investigated. Based on optimized input variables and model parameters, PLS calibration models were developed using mean relative error (MRE), root-mean-square error (RMSE), and coefficient of determination (R2) as evaluation metrics. The models of standard normal variate-competitive adaptive reweighted sampling-PLS (SNV-CARS-PLS) for Cr and Pb, and wavelet transform-CARS-PLS (WT-CARS-PLS) for Cu, demonstrated superior correlation relationships (Cr: Rp2 = 0.9750, Pb: Rp2 = 0.9759, Cu: Rp2 = 0.9088) compared to univariate calibration methods. The values of RMSEp for Cr, Pb, and Cu decreased by 5.495, 9.170, and 3.765 ppm, respectively, while values of MREp decreased by 71.73%, 65%, and 66.81%, respectively. The values of ratio of prediction to deviation (RPD) for three models in -leave-one-out cross-validation (LOOCV) were 20.4, 31.6, and 31.6 respectively. Furthermore, the limits of detection (LODs) for the three heavy metal elements were ≤1.534 ppm. The SNV/WT-CARS-PLS method significantly improved quantitative analysis accuracy, providing essential theoretical and technical support for composite pollution monitoring and prevention in MPs.

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