Combining real-time airborne bioaerosol spectrometry with neural network algorithms to quantify different bioaerosol emissions from agriculture
Lead Research Organisation:
University of Manchester
Department Name: Earth Atmospheric and Env Sciences
Abstract
This studentship will combine state of the art real-time single particle integrated optoelectronic bio-aerosol and dust-aerosol spectrometry combined with neural net data analysis and micrometeorological flux measurement techniques, augmented by laboratory wind tunnel studies, and high resolution dispersion models, to transform our understanding and quantification of bioaerosol emission fluxes from agricultural landscapes under different atmospheric conditions and due to the influence from agricultural activities. Experiments will be carried out at the Rothamsted Institutes agricultural sites who will provide access to multi-site turbulence and meteorological measurement systems.
Questions addressed will include understanding the contributions of different farming activities to airborne bioaerosol dispersion and deposition for different agricultural ecosystems.
Below canopy transmission, deposition and airborne dispersion of bioaerosol particulates will be measured using novel, field deployable optoelectronic instruments comprising multi band UV excitation-fluorescence spectrometers to identify bioaerosol classes, single particle fluorescence lifetime to discriminate between biological and non-biological as well as bio-dust mixtures from soils and plants. This work will support ongoing collaboration with bioaerosol instrument manufacturers including DMT-USA, PLAIR CH and Swisens-CH as well as instruments developed by the University of Hertfordshire with which we have long-standing collaboration.
The results will be used to improve quantification of bioaerosol emissions generated by different farming activities compared to natural emission mechanisms and their inter-relationships with different environmental factors by applying novel dimensional reduction algorithms combined with robust, outlier resistant AI clustering techniques. The aim will be, for the first time, to include directly measured bioaerosol fluxes into new multi-dimensional bioaerosol and micrometeorological databases that may be used for testing a range of new analytical approaches to monitoring emissions from agricultural ecosystems.
Questions addressed will include understanding the contributions of different farming activities to airborne bioaerosol dispersion and deposition for different agricultural ecosystems.
Below canopy transmission, deposition and airborne dispersion of bioaerosol particulates will be measured using novel, field deployable optoelectronic instruments comprising multi band UV excitation-fluorescence spectrometers to identify bioaerosol classes, single particle fluorescence lifetime to discriminate between biological and non-biological as well as bio-dust mixtures from soils and plants. This work will support ongoing collaboration with bioaerosol instrument manufacturers including DMT-USA, PLAIR CH and Swisens-CH as well as instruments developed by the University of Hertfordshire with which we have long-standing collaboration.
The results will be used to improve quantification of bioaerosol emissions generated by different farming activities compared to natural emission mechanisms and their inter-relationships with different environmental factors by applying novel dimensional reduction algorithms combined with robust, outlier resistant AI clustering techniques. The aim will be, for the first time, to include directly measured bioaerosol fluxes into new multi-dimensional bioaerosol and micrometeorological databases that may be used for testing a range of new analytical approaches to monitoring emissions from agricultural ecosystems.
Organisations
People |
ORCID iD |
| Zhuo Chen (Student) |
Studentship Projects
| Project Reference | Relationship | Related To | Start | End | Student Name |
|---|---|---|---|---|---|
| EP/S023593/1 | 31/03/2019 | 29/09/2027 | |||
| 2878964 | Studentship | EP/S023593/1 | 30/09/2023 | 29/09/2027 | Zhuo Chen |