Ximendes Erving, Marin Riccardo, Carlos Luis Dias, Jaque Daniel
NanoBIG, Departamento de Fısica de Materiales, Facultad de Ciencias, Universidad Autónoma de Madrid, C/Francisco Tomás y Valiente 7, Madrid, 28049, Spain.
NanoBIG, Instituto Ramón y Cajal de Investigación Sanitaria (IRYCIS), Ctra. Colmenar km. 9.100, Madrid, 28034, Spain.
Light Sci Appl. 2022 Jul 27;11(1):237. doi: 10.1038/s41377-022-00932-3.
Thermal resolution (also referred to as temperature uncertainty) establishes the minimum discernible temperature change sensed by luminescent thermometers and is a key figure of merit to rank them. Much has been done to minimize its value via probe optimization and correction of readout artifacts, but little effort was put into a better exploitation of calibration datasets. In this context, this work aims at providing a new perspective on the definition of luminescence-based thermometric parameters using dimensionality reduction techniques that emerged in the last years. The application of linear (Principal Component Analysis) and non-linear (t-distributed Stochastic Neighbor Embedding) transformations to the calibration datasets obtained from rare-earth nanoparticles and semiconductor nanocrystals resulted in an improvement in thermal resolution compared to the more classical intensity-based and ratiometric approaches. This, in turn, enabled precise monitoring of temperature changes smaller than 0.1 °C. The methods here presented allow choosing superior thermometric parameters compared to the more classical ones, pushing the performance of luminescent thermometers close to the experimentally achievable limits.
热分辨率(也称为温度不确定度)确定了发光温度计能够感知的最小可分辨温度变化,是对其进行排名的关键性能指标。通过探头优化和读出伪像校正,人们已经做了很多工作来尽量降低其数值,但在更好地利用校准数据集方面投入的努力却很少。在此背景下,这项工作旨在利用近年来出现的降维技术,为基于发光的测温参数的定义提供一个新的视角。将线性(主成分分析)和非线性(t分布随机邻域嵌入)变换应用于从稀土纳米颗粒和半导体纳米晶体获得的校准数据集,与更传统的基于强度和比率的方法相比,热分辨率得到了提高。这反过来又能够精确监测小于0.1°C的温度变化。与更传统的方法相比,这里提出的方法允许选择更优的测温参数,将发光温度计的性能提升至接近实验可实现的极限。