微塑料
支持向量机
聚丙烯
检出限
聚烯烃
介电谱
人工智能
分析化学(期刊)
材料科学
计算机科学
色谱法
化学
环境化学
复合材料
电极
图层(电子)
电化学
物理化学
作者
Luca Bifano,Valentin Meiler,Ronny Peter,Gerhard Fischerauer
出处
期刊:Tm-technisches Messen
[R. Oldenbourg Verlag]
日期:2023-03-29
卷期号:90 (6): 374-387
被引量:9
标识
DOI:10.1515/teme-2022-0095
摘要
Abstract The detection of microplastics in water requires a series of processes (sample collection, purification, and preparation) until a sample can be analyzed in the laboratory. To shorten this process chain, we are investigating whether electrical impedance spectroscopy (EIS) enhanced by a classifier based on support vector machine (SVM) can be applied to the problem of microplastics detection. Results with suspensions of polypropylene (PP) and polyolefin (PO) in deionized water proved promising: The relative permittivities extracted from the measured impedances agree with literature data. The subsequent classification of measured impedances by SVM shows that the three classes “no plastic” (below the detection limit of 1 g plastic per filling), “PP” and “PO” can be distinguished securely independent of the background medium water. Mixtures of PO and PP were not examined, i.e. either PO or PP was filled into the measuring cell. An SVM regression performed after the SVM classification yields the microplastic concentration of the respective sample. Further tests with varying salinity and content of organic or biological material in the water confirmed the good results. We conclude that EIS in combination with machine learning (MLEIS) seems to be a promising approach for in situ detection of microplastics and certainly warrants further research activities.
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