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  4. An all-in-one nanoprinting approach for the synthesis of a nanofilm library for unclonable anti-counterfeiting applications
 
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An all-in-one nanoprinting approach for the synthesis of a nanofilm library for unclonable anti-counterfeiting applications

Publikationstyp
Journal Article
Date Issued
2023-09-01
Sprache
English
Author(s)
Zhang, Junfang  
Liu, Yuxin  
Njel, Christian  
Ronneberger, Sebastian  
Tarakina, Nadezda V.  
Loeffler, Felix F.  
TORE-URI
https://hdl.handle.net/11420/60767
Journal
Nature nanotechnology  
Volume
18
Issue
9
Start Page
1027
End Page
1035
Citation
Nature Nanotechnology 18 (9): 1027-1035 (2023)
Publisher DOI
10.1038/s41565-023-01405-3
Scopus ID
2-s2.0-85160817490
ISSN
17483387
In addition to causing trillion-dollar economic losses every year, counterfeiting threatens human health, social equity and national security. Current materials for anti-counterfeiting labelling typically contain toxic inorganic quantum dots and the techniques to produce unclonable patterns require tedious fabrication or complex readout methods. Here we present a nanoprinting-assisted flash synthesis approach that generates fluorescent nanofilms with physical unclonable function micropatterns in milliseconds. This all-in-one approach yields quenching-resistant carbon dots in solid films, directly from simple monosaccharides. Moreover, we establish a nanofilm library comprising 1,920 experiments, offering conditions for various optical properties and microstructures. We produce 100 individual physical unclonable function patterns exhibiting near-ideal bit uniformity (0.492 ± 0.018), high uniqueness (0.498 ± 0.021) and excellent reliability (>93%). These unclonable patterns can be quickly and independently read out by fluorescence and topography scanning, greatly improving their security. An open-source deep-learning model guarantees precise authentication, even if patterns are challenged with different resolutions or devices.
DDC Class
600: Technology
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