Zhang Junfang, Creamer Adam, Xie Kai, Tang Jiaqing, Salter Luke, Wojciechowski Jonathan P, Stevens Molly M
Department of Materials, Department of Bioengineering, Institute of Biomedical Engineering Imperial College London, London, UK.
Department of Physiology, Anatomy and Genetics, University of Oxford, Oxford, UK.
Nat Commun. 2025 Jan 8;16(1):502. doi: 10.1038/s41467-024-55646-4.
Physical unclonable functions (PUFs) are considered the most promising approach to address the global issue of counterfeiting. Current PUF devices are often based on a single stochastic process, which can be broken, especially since their practical encoding capacities can be significantly lower than the theoretical value. Here we present stochastic PUF devices with features across multiple length scales, which incorporate semiconducting polymer nanoparticles (SPNs) as fluorescent taggants. The SPNs exhibit high brightness, photostability and size tunability when compared to the current state-of-the-art taggants. As a result, they are easily detectable and highly resilient to UV radiation. By embedding SPNs in photoresists, we generate PUFs consisting of nanoscale (distribution of SPNs within microspots), microscale (fractal edges on microspots), and macroscale (random microspot array) designs. With the assistance of a deep-learning model, the resulting PUFs show both near-ideal performance and accessibility for general end users, offering a strategy for next-generation security devices.
物理不可克隆函数(PUF)被认为是解决全球假冒问题最有前景的方法。当前的PUF设备通常基于单一随机过程,这可能会被破解,特别是因为它们的实际编码能力可能远低于理论值。在此,我们展示了具有多种长度尺度特征的随机PUF设备,其将半导体聚合物纳米颗粒(SPN)用作荧光标记物。与当前最先进的标记物相比,SPN具有高亮度、光稳定性和尺寸可调性。因此,它们易于检测且对紫外线辐射具有高度抗性。通过将SPN嵌入光刻胶中,我们生成了由纳米级(微点内SPN的分布)、微米级(微点上的分形边缘)和宏观级(随机微点阵列)设计组成的PUF。在深度学习模型的辅助下,所得的PUF显示出近乎理想的性能且普通终端用户也可使用,为下一代安全设备提供了一种策略。