Abstract

While low-cost air quality sensor quantification has improved tremendously in recent years, speciated hydrocarbons have received little attention beyond total lumped volatile organic compounds (VOCs) or total non-methane hydrocarbons (TNMHCs). In this work, we attempt to use two broad response metal oxide VOC sensors to quantify a host of speciated hydrocarbons as well as smaller groups of hydrocarbons thought to be emanating from the same source or sources. For sensors deployed near oil and gas facilities, we utilize artificial neural networks (ANNs) to calibrate our low-cost sensor signals to regulatory-grade measurements of benzene, toluene, and formaldehyde. We also use positive matrix factorization (PMF) to group these hydrocarbons along with others by source, such as wet and dry components of oil and gas operations. The two locations studied here had different sets of reference hydrocarbon species measurements available, helping us determine which specific hydrocarbons and VOC mixtures are best suited for this approach. Calibration fits on the upper end reach above R2 values of 0.6 despite the parts per billion (ppb) concentration ranges of each, which are magnitudes below the manufacturer’s prescribed detection limits for the sensors. The sensors generally captured the baseline trends in the data, but failed to quantitatively estimate larger spikes that occurred intermittently. While compounds with high variability were not suited for this method, its success with several of the compounds studied represents a crucial first step in low-cost VOC speciation. This work has important implications in improving our understanding of the links between health and environment, as different hydrocarbons will have varied consequences in the human body and atmosphere.

Highlights

  • IntroductionSince myriad volatile organic compounds (VOCs) sources, including oil and gas operations, may exist within a community, it is crucial to disentangle them to determine which emit the highest concentrations or most harmful compounds so that risks can be addressed by local organizations in order of importance [9,10,11,12]

  • Based on previous success in using artificial neural networks (ANNs) to quantify pollutants with low-cost sensors [26], we focused our efforts on this machine learning technique, which has not been used previously for this specific hydrocarbon application

  • In developing sensor calibrations for each pollutant using ANNs, we found that varying the inputs to the ANN, such as the sensors, interactions between sensors, and electrical signals, was just as impactful as parameter tuning

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Summary

Introduction

Since myriad VOC sources, including oil and gas operations, may exist within a community, it is crucial to disentangle them to determine which emit the highest concentrations or most harmful compounds so that risks can be addressed by local organizations in order of importance [9,10,11,12]. This has important implications on secondary pollutants generated in the troposphere, as the exact hydrocarbon makeup of emissions will determine their subsequent reaction pathways and byproducts [13]

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