2022
DOI: 10.1007/s11270-022-05847-8
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Differentiating and Quantifying Carbonaceous (Tire, Bitumen, and Road Marking Wear) and Non-carbonaceous (Metals, Minerals, and Glass Beads) Non-exhaust Particles in Road Dust Samples from a Traffic Environment

Abstract: Tires, bitumen, and road markings are important sources of traffic-derived carbonaceous wear particles and microplastic (MP) pollution. In this study, we further developed a machine-learning algorithm coupled to an automated scanning electron microscopy/energy dispersive X-ray spectroscopy (SEM/EDX) analytical approach to classify and quantify the relative number of the following subclasses contained in environmental road dust: tire wear particles (TWP), bitumen wear particles (BiWP), road markings, reflecting… Show more

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Cited by 23 publications
(5 citation statements)
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“…Elemental tracers have been selected, despite organic alternatives being available (Goßmann et al, 2021), as it allows for the use of x-ray fluorescence detectors, that are already used in the air quality monitoring network (Hicks et al, 2021). Scanning electron microscopy with energy dispersive X-ray spectroscopy methods have been developed and validated with machine learning to identify tyre wear particles based on elemental composition, however these too are not able to integrate with already existing metal infrastructure (Järlskog et al, 2022a(Järlskog et al, , 2022b.…”
Section: Introductionmentioning
confidence: 99%
“…Elemental tracers have been selected, despite organic alternatives being available (Goßmann et al, 2021), as it allows for the use of x-ray fluorescence detectors, that are already used in the air quality monitoring network (Hicks et al, 2021). Scanning electron microscopy with energy dispersive X-ray spectroscopy methods have been developed and validated with machine learning to identify tyre wear particles based on elemental composition, however these too are not able to integrate with already existing metal infrastructure (Järlskog et al, 2022a(Järlskog et al, , 2022b.…”
Section: Introductionmentioning
confidence: 99%
“…The annual average mass fraction of tyres in PM 10 was 1.8% at an urban background site in Switzerland and 10.5% at an urban kerbside site [102]. Road dust samples from a highway in Sweden contained more than 10% tyre particles [103]. A study with a single-particle aerosol mass spectrometer roadside of a port highway in China found a 6.6% contribution of tyres to the total PM [104].…”
Section: Tyres Contribution To Ambient Particulate Matter (Pm)mentioning
confidence: 98%
“…The surface of markings constructed with this coating is rough, and it has a high porosity, making it easy for pollutants to adhere to the gaps [23]. In some cities with severe pollution and little rainfall, the color of white thermoplastic markings is almost indistinguishable from the asphalt pavement, resulting in severe marking pollution [40].…”
Section: Adhesive Pollutionmentioning
confidence: 99%