Artificial‐Intelligence‐Enhanced Mid‐infrared Lab‐on‐a‐Chip for Mixture Spectroscopy Analysis

Author:

Zhou Jingkai12,Liu Xinmiao12,Zhou Hong12,Xu Siyu12,Xie Junsheng12,Xu Cheng12,Liu Weixin12,Zhang Zixuan12,Lee Chengkuo123ORCID

Affiliation:

1. Department of Electrical and Computer Engineering National University of Singapore Singapore 117583 Singapore

2. Center for Intelligent Sensors and MEMS (CISM) National University of Singapore Singapore 117608 Singapore

3. NUS Graduate School Integrative Sciences and Engineering Programme (ISEP) National University of Singapore Singapore 119077 Singapore

Abstract

AbstractBio/chemical mixture sensing in a water environment is of great importance in sensing applications. Relying on plentiful molecular fingerprints in mid‐infrared (MIR) and high integration potential, nanophotonic waveguide‐based MIR lab‐on‐a‐chip (LoC) provides a miniaturized and versatile solution for specific and label‐free bio/chemical detection. However, it is still challenging to implement an MIR LoC with on‐chip photodetection for chemical sensing in water, due to the strong MIR water absorption and limited MIR on‐chip photodetector scheme, let alone the spectral overlap issue in mixture analysis. Here, a MIR LoC integrating zero‐bias graphene photodetector is reported and the real‐time monitoring of three analytes in water leveraging the MIR LoC is demonstrated. Besides, using machine learning, the on‐chip collected spectra of the ternary mixture in water with 27 mixing ratios are successfully classified with an accuracy of 95.77%. Moreover, concentration prediction of individual analytes in a mixture is performed by developing a convolution regression network for mixture spectrum decomposition: 83.33% of the single‐component concentration predictions are within the 1 vol% error range, and an average root‐mean‐squared error of 1 vol% for mixture concentration predictions is achieved. The MIR LoC offers new opportunities for highly integrated intelligent sensing systems in various sensing scenarios in the Internet of Things era.

Funder

Agency for Science, Technology and Research

National Research Foundation Singapore

Ministry of Education - Singapore

Publisher

Wiley

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