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An Unmanned Aerial System (UAS) based methodology for measuring biomass burning emission factors

An Unmanned Aerial System (UAS) based methodology for measuring biomass burning emission factors
An Unmanned Aerial System (UAS) based methodology for measuring biomass burning emission factors
Biomass burning (BB) emits large quantities of greenhouse gases (GHG) and aerosols that impact climate and adversely affect human health. Although much research has focused on quantifying BB emissions on regional to global scales, field measurements of BB emission factors (EFs) are sparse, clustered and indicate high spatio-temporal variability. EFs are generally calculated from ground- or aeroplane measurements with respective potential biases towards smouldering or flaming combustion products. Unmanned aerial systems (UAS) have the potential to measure BB EFs in fresh smoke, targeting different parts of the plume at relatively low cost. We propose a light-weight UAS-based method to measure EFs for carbon monoxide (CO), carbon dioxide (CO2), methane (CH4) and nitrous oxide (N2O), as well as PM2.5 (TSI Sidepak AM520) and equivalent black carbon (eBC, microAeth AE51) using a combination of a sampling system with Tedlar bags which can be analysed on the ground and airborne aerosol sensors. In this study, we address the main uncertainties associated with this approach (1) the degree to which taking a limited number of samples is representative for the integral smoke plume and including (2) the reliability of the lightweight aerosol sensors. This was done for prescribed burning experiments in the Kruger national park, South Africa where we compared fire-averaged EF from UAS-sampled bags for savanna fires to integrated EFs from co-located mast measurements. Both measurements matched reasonably well with linear R2 ranging from 0.81 to 0.94. Both aerosol sensors are not factory calibrated for BB particles and therefore require additional calibration. In a series of smoke chamber experiments, we compared the lightweight sensors to high-fidelity equipment to empirically determine specific calibration factors (CF) for measuring BB particles. For the PM mass concentration from a TSI Sidepak AM520, we found an optimal CF of 0.27, using a scanning mobility particle sizer and gravimetric reference methods, albeit that the CF varied for different vegetation fuel types. Measurements of eBC from the Aethlabs AE51 aethalometer agreed well with the multi-wavelength aethalometer (AE33) (linear R2 of 0.95 at λ = 880 nm) and the wavelength corrected Multi-Angle Absorption Photometer (MAAP, R2 0.83 measuring at λ = 637 nm). However, the high variability in observed BB mass absorption cross-section (MAC) values (5.2 ± 5.1 m2 g-1) suggested re-calibration may be required for individual fires. Overall, our results indicate that the proposed UAS setup can obtain representative BB EFs for individual savanna fires if proper correction factors are applied and operating limitations are well understood.
1867-8548
Vernooij, Roland
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Winiger, Patrik
2eb6fe1b-e934-4a2c-9bb1-9323a0b0e811
Roberts, Gareth
fa1fc728-44bf-4dc2-8a66-166034093ef2
Wooster, Martin
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Strydom, Tercia
3f472368-9bd2-4282-8a50-97db69d2f87d
Poulain, Laurent
2770eb7c-2525-4921-b88a-974ebfc2774c
Dusek, Ulkrike
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Grosvenor, Mark
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Schutgens, Nick
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van der Werf, Guido
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Vernooij, Roland
ba3ffd3a-8d45-4cfc-8e6d-9fc2bb125373
Winiger, Patrik
2eb6fe1b-e934-4a2c-9bb1-9323a0b0e811
Roberts, Gareth
fa1fc728-44bf-4dc2-8a66-166034093ef2
Wooster, Martin
5046c5aa-601e-48a4-ab71-d0b365de7ccc
Strydom, Tercia
3f472368-9bd2-4282-8a50-97db69d2f87d
Poulain, Laurent
2770eb7c-2525-4921-b88a-974ebfc2774c
Dusek, Ulkrike
304bf182-5d84-4c37-ae79-89bbbf1d7d62
Grosvenor, Mark
05fe9384-c977-4954-9e7f-1673df96c143
Schutgens, Nick
051ca2dc-e377-4d4b-afa1-06888b344b6b
van der Werf, Guido
7cdaeb97-a052-4d0e-8b2d-415ca38a8ac9

Vernooij, Roland, Winiger, Patrik, Roberts, Gareth, Wooster, Martin, Strydom, Tercia, Poulain, Laurent, Dusek, Ulkrike, Grosvenor, Mark, Schutgens, Nick and van der Werf, Guido (2022) An Unmanned Aerial System (UAS) based methodology for measuring biomass burning emission factors. Atmospheric Measurement Techniques. (doi:10.5194/amt-2022-77). (In Press)

Record type: Article

Abstract

Biomass burning (BB) emits large quantities of greenhouse gases (GHG) and aerosols that impact climate and adversely affect human health. Although much research has focused on quantifying BB emissions on regional to global scales, field measurements of BB emission factors (EFs) are sparse, clustered and indicate high spatio-temporal variability. EFs are generally calculated from ground- or aeroplane measurements with respective potential biases towards smouldering or flaming combustion products. Unmanned aerial systems (UAS) have the potential to measure BB EFs in fresh smoke, targeting different parts of the plume at relatively low cost. We propose a light-weight UAS-based method to measure EFs for carbon monoxide (CO), carbon dioxide (CO2), methane (CH4) and nitrous oxide (N2O), as well as PM2.5 (TSI Sidepak AM520) and equivalent black carbon (eBC, microAeth AE51) using a combination of a sampling system with Tedlar bags which can be analysed on the ground and airborne aerosol sensors. In this study, we address the main uncertainties associated with this approach (1) the degree to which taking a limited number of samples is representative for the integral smoke plume and including (2) the reliability of the lightweight aerosol sensors. This was done for prescribed burning experiments in the Kruger national park, South Africa where we compared fire-averaged EF from UAS-sampled bags for savanna fires to integrated EFs from co-located mast measurements. Both measurements matched reasonably well with linear R2 ranging from 0.81 to 0.94. Both aerosol sensors are not factory calibrated for BB particles and therefore require additional calibration. In a series of smoke chamber experiments, we compared the lightweight sensors to high-fidelity equipment to empirically determine specific calibration factors (CF) for measuring BB particles. For the PM mass concentration from a TSI Sidepak AM520, we found an optimal CF of 0.27, using a scanning mobility particle sizer and gravimetric reference methods, albeit that the CF varied for different vegetation fuel types. Measurements of eBC from the Aethlabs AE51 aethalometer agreed well with the multi-wavelength aethalometer (AE33) (linear R2 of 0.95 at λ = 880 nm) and the wavelength corrected Multi-Angle Absorption Photometer (MAAP, R2 0.83 measuring at λ = 637 nm). However, the high variability in observed BB mass absorption cross-section (MAC) values (5.2 ± 5.1 m2 g-1) suggested re-calibration may be required for individual fires. Overall, our results indicate that the proposed UAS setup can obtain representative BB EFs for individual savanna fires if proper correction factors are applied and operating limitations are well understood.

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amt-2022-77 - Author's Original
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Accepted/In Press date: 11 March 2022

Identifiers

Local EPrints ID: 467601
URI: http://eprints.soton.ac.uk/id/eprint/467601
ISSN: 1867-8548
PURE UUID: 55acd346-7580-4f91-9a32-4fb3e2ceb2ad
ORCID for Gareth Roberts: ORCID iD orcid.org/0009-0007-3431-041X

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Date deposited: 14 Jul 2022 17:20
Last modified: 17 Mar 2024 03:24

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Contributors

Author: Roland Vernooij
Author: Patrik Winiger
Author: Gareth Roberts ORCID iD
Author: Martin Wooster
Author: Tercia Strydom
Author: Laurent Poulain
Author: Ulkrike Dusek
Author: Mark Grosvenor
Author: Nick Schutgens
Author: Guido van der Werf

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