Quantitative Natural Gas Discrimination For Pipeline Leak Detection Through Time-Series Analysis of an MOS Sensor Response

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Authors

Barriault, Matthew
Montazeri, Mahyar Mohaghegh
O'Brien, Allen
Najjaran, Homayoun
Hoorfar, Mina

Journal Title

Journal ISSN

Volume Title

Publisher

CSME-SCGM

Abstract

In order to detect natural gas pipeline leaks, ethane in the natural gas must be discriminated from background methane emissions. Our gas detection apparatus is well-suited for this application due to its flexibility and low cost. We present a comparison of machine learning models for quantitative estimation of concentrations of both methane and ethane in a target gas sample, using a response over time from a single sensor in our apparatus. We also demonstrate that the use of synthetic data is very effective for training a model to discriminate between methane and ethane.

Description

Paper presented at 2018 Canadian Society of Mechanical Engineers International Congress, 27-30 May 2018.

Keywords

Microtechnology and Nanotechnology, Machine learning, Gas detection, Microfluidic, Diffusion simulation, Pipeline leak detection

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