Issue 36, 2021

Smartphone-based handheld Raman spectrometer and machine learning for essential oil quality evaluation

Abstract

We present a method, utilising a smartphone-based miniaturized Raman spectrometer and machine learning for the fast identification and discrimination of adulterated essential oils (EOs). Firstly, the approach was evaluated for discrimination of pure EOs from those adulterated with solvent, namely benzyl alcohol. In the case of ylang–ylang EO, three different types of adulteration were examined, adulteration with solvent, cheaper vegetable oil and a lower price EO. Random Forest and partial least square discrimination analysis (PLS-DA) showed excellent performance in discriminating pure from adulterated EOs, whilst the same time identifying the type of adulteration. Also, utilising partial least squares regression analysis (PLS) all adulterants, namely benzyl alcohol, vegetable oil and lower price EO, were quantified based on spectra recorded using the smartphone Raman spectrometer, with relative error of prediction (REP) being between 2.41–7.59%.

Graphical abstract: Smartphone-based handheld Raman spectrometer and machine learning for essential oil quality evaluation

Supplementary files

Article information

Article type
Paper
Submitted
26 May 2021
Accepted
12 Aug 2021
First published
13 Aug 2021

Anal. Methods, 2021,13, 4055-4062

Smartphone-based handheld Raman spectrometer and machine learning for essential oil quality evaluation

L. Lebanov and B. Paull, Anal. Methods, 2021, 13, 4055 DOI: 10.1039/D1AY00886B

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