An improved set of electron-THFA cross sections refined through a neural network-based analysis of swarm data

P. W. Stokes, S. P. Foster, M. J.E. Casey, D. G. Cocks, O. González-Magaña, J. De Urquijo, G. García, M. J. Brunger, R. D. White

Research output: Contribution to journalArticlepeer-review

2 Citations (Scopus)

Abstract

We review experimental and theoretical cross sections for electron transport in α-tetrahydrofurfuryl alcohol (THFA) and, in doing so, propose a plausible complete set. To assess the accuracy and self-consistency of our proposed set, we use the pulsed-Townsend technique to measure drift velocities, longitudinal diffusion coefficients, and effective Townsend first ionization coefficients for electron swarms in admixtures of THFA in argon, across a range of density-reduced electric fields from 1 to 450 Td. These measurements are then compared to simulated values derived from our proposed set using a multi-term solution of Boltzmann's equation. We observe discrepancies between the simulation and experiment, which we attempt to address by employing a neural network model that is trained to solve the inverse swarm problem of unfolding the cross sections underpinning our experimental swarm measurements. What results from our neural network-based analysis is a refined set of electron-THFA cross sections, which we confirm is of higher consistency with our swarm measurements than that which we initially proposed. We also use our database to calculate electron transport coefficients in pure THFA across a range of reduced electric fields from 0.001 to 10 000 Td.

Original languageEnglish
Article number084306
Number of pages18
JournalJournal of Chemical Physics
Volume154
Issue number8
Early online date24 Feb 2021
DOIs
Publication statusE-pub ahead of print - 24 Feb 2021

Keywords

  • electron transport
  • α-tetrahydrofurfuryl alcohol (THFA)

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