Improving the Accuracy of Carbon Dot Temperature Sensing Using Multi-Dimensional Machine Learning

Aaron Döring, Yuqing Qiu, Andrey L. Rogach*

*Corresponding author for this work

Research output: Journal Publications and ReviewsRGC 21 - Publication in refereed journalpeer-review

7 Citations (Scopus)

Abstract

Optical sensing methods offer a convenient noncontact approach to monitor different environmental parameters with a high spatial resolution and fast response times. Temperature monitoring can benefit from optical sensing using luminescent nanoprobes, but many of those substances are toxic or expensive. Carbon dots are a class of luminescent colloidal nanoparticles that have recently gained recognition as optical probes, which are easy to produce by environmentally friendly synthesis, nontoxic, and stable. While carbon dots show temperature-dependent optical properties, their broad emission profiles may constitute a challenge for optical sensing. In this study, three types of carbon dots with different emission profiles were tested as optical probes for intensity-, spectral-shift-, intensity-ratio-, bandwidth-, and lifetime-based temperature sensing. Depending on the optical characteristics of the specific probe, either intensity- or lifetime-based sensing was shown to be the most accurate, with accuracies of up to 1.65 and 0.70 K, respectively. Employing Gaussian fits improved accuracies of the intensity-ratio-based sensing to 1.24 K, with the additional benefit of greater stability against excitation fluctuations. Finally, a multiple linear regression model combining steady-state and time-resolved luminescence data of carbon dots has been applied to further increase the sensing accuracies with carbon dots to 0.54 K. Our study demonstrates how multidimensional machine learning methods can greatly improve temperature sensing with optical probes. © 2024 American Chemical Society.
Original languageEnglish
Pages (from-to)2258-2269
JournalACS Applied Nano Materials
Volume7
Issue number2
Online published5 Jan 2024
DOIs
Publication statusPublished - 26 Jan 2024

Funding

This work was supported by Research Grant Council of Hong Kong S.A.R. (GRF project CityU 11200923), and by the Global Experts project funded by the Moravian-Silesian Region and VSB-TUO (contract 00734/2023/RRC).

Research Keywords

  • carbon dots
  • linear regression
  • luminescence
  • multi-dimensional machine learning
  • optical sensing
  • temperature

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