Handheld UV fluorescence spectrophotometer device for the classification and analysis of petroleum oil samples
Author
Bills, Matthew VLoh, Andrew
Sosnowski, Katelyn
Nguyen, Brandon T
Ha, Sung Yong
Yim, Un Hyuk
Yoon, Jeong-Yeol

Affiliation
Univ Arizona, Dept Biomed EngnIssue Date
2020-07-01Keywords
Fluorescence spectroscopyOil spill
Raspberry Pi
Saturate, aromatic, resin, and asphaltene contents
Support vector machine
Ultraviolet light emitting diode
Metadata
Show full item recordPublisher
ELSEVIER ADVANCED TECHNOLOGYCitation
Bills, M. V., Loh, A., Sosnowski, K., Nguyen, B. T., Ha, S. Y., Yim, U. H., & Yoon, J. Y. (2020). Handheld UV fluorescence spectrophotometer device for the classification and analysis of petroleum oil samples. Biosensors and Bioelectronics, 112193. https://doi.org/10.1016/j.bios.2020.112193Journal
BIOSENSORS & BIOELECTRONICSRights
Copyright © 2020 Elsevier B.V. All rights reserved.Collection Information
This item from the UA Faculty Publications collection is made available by the University of Arizona with support from the University of Arizona Libraries. If you have questions, please contact us at repository@u.library.arizona.edu.Abstract
Oil spills can be environmentally devastating and result in unintended economic and social consequences. An important element of the concerted effort to respond to spills includes the ability to rapidly classify and characterize oil spill samples, preferably on-site. An easy-to-use, handheld sensor is developed and demonstrated in this work, capable of classifying oil spills rapidly on-site. Our device uses the computational power and affordability of a Raspberry Pi microcontroller and a Pi camera, coupled with three ultraviolet light emitting diodes (UV-LEDs), a diffraction grating, and collimation slit, in order to collect a large data set of UV fluorescence fingerprints from various oil samples. Based on a 160-sample (in 5x replicates each with slightly varied dilutions) database this platform is able to classify oil samples into four broad categories: crude oil, heavy fuel oil, light fuel oil, and lubricating oil. The device uses principal component analysis (PCA) to reduce spectral dimensionality (1203 features) and support vector machine (SVM) for classification with 95% accuracy. The device is also able to predict some physiochemical properties, specifically saturate, aromatic, resin, and asphaltene percentages (SARA) based off linear relationships between different principal components (PCs) and the percentages of these residues. Sample preparation for our device is also straightforward and appropriate for field deployment, requiring little more than a Pasteur pipette and not being affected by dilution factors. These properties make our device a valuable field-deployable tool for oil sample analysis.Note
24 month embargo; published online: 10 April 2020ISSN
0956-5663EISSN
1873-4235PubMed ID
32364941Version
Final accepted manuscriptae974a485f413a2113503eed53cd6c53
10.1016/j.bios.2020.112193
Scopus Count
Collections
Related articles
- Characterization of Nitrogen-Containing Polycyclic Aromatic Heterocycles in Crude Oils and Refined Petroleum Products.
- Authors: Zhang G, Yang C, Serhan M, Koivu G, Yang Z, Hollebone B, Lambert P, Brown CE
- Issue date: 2018
- Rapid fingerprinting of spilled petroleum products using fluorescence spectroscopy coupled with parallel factor and principal component analysis.
- Authors: Mirnaghi FS, Soucy N, Hollebone BP, Brown CE
- Issue date: 2018 Oct
- Chemometric techniques in oil classification from oil spill fingerprinting.
- Authors: Ismail A, Toriman ME, Juahir H, Kassim AM, Zain SM, Ahmad WKW, Wong KF, Retnam A, Zali MA, Mokhtar M, Yusri MA
- Issue date: 2016 Oct 15
- Oil species identification technique developed by Gabor wavelet analysis and support vector machine based on concentration-synchronous-matrix-fluorescence spectroscopy.
- Authors: Wang C, Shi X, Li W, Wang L, Zhang J, Yang C, Wang Z
- Issue date: 2016 Mar 15
- The comparison of naturally weathered oil and artificially photo-degraded oil at the molecular level by a combination of SARA fractionation and FT-ICR MS.
- Authors: Islam A, Cho Y, Yim UH, Shim WJ, Kim YH, Kim S
- Issue date: 2013 Dec 15