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Using task farming to optimise a street-scale resolution air quality model of the West Midlands (UK)

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Using task farming to optimise a street-scale resolution air quality model of the West Midlands (UK). / Zhong, J.; Hood, C.; Johnson, K. et al.
In: Atmosphere, Vol. 12, No. 8, 983, 30.07.2021.

Research output: Contribution to Journal/MagazineJournal articlepeer-review

Harvard

Zhong, J, Hood, C, Johnson, K, Stocker, J, Handley, J, Wolstencroft, M, Mazzeo, A, Cai, X & Bloss, WJ 2021, 'Using task farming to optimise a street-scale resolution air quality model of the West Midlands (UK)', Atmosphere, vol. 12, no. 8, 983. https://doi.org/10.3390/atmos12080983

APA

Zhong, J., Hood, C., Johnson, K., Stocker, J., Handley, J., Wolstencroft, M., Mazzeo, A., Cai, X., & Bloss, W. J. (2021). Using task farming to optimise a street-scale resolution air quality model of the West Midlands (UK). Atmosphere, 12(8), Article 983. https://doi.org/10.3390/atmos12080983

Vancouver

Zhong J, Hood C, Johnson K, Stocker J, Handley J, Wolstencroft M et al. Using task farming to optimise a street-scale resolution air quality model of the West Midlands (UK). Atmosphere. 2021 Jul 30;12(8):983. doi: 10.3390/atmos12080983

Author

Zhong, J. ; Hood, C. ; Johnson, K. et al. / Using task farming to optimise a street-scale resolution air quality model of the West Midlands (UK). In: Atmosphere. 2021 ; Vol. 12, No. 8.

Bibtex

@article{905da00595d74a31bb8b1b60ef0a6d5f,
title = "Using task farming to optimise a street-scale resolution air quality model of the West Midlands (UK)",
abstract = "High resolution air quality models combining emissions, chemical processes, dispersion and dynamical treatments are necessary to develop effective policies for clean air in urban environments, but can have high computational demand. We demonstrate the application of task farming to reduce runtime for ADMS-Urban, a quasi-Gaussian plume air dispersion model. The model represents the full range of source types (point, road and grid sources) occurring in an urban area at high resolution. Here, we implement and evaluate the option to automatically split up a large model domain into smaller sub-regions, each of which can then be executed concurrently on multiple cores of a HPC or across a PC network, a technique known as task farming. The approach has been tested for a large model domain covering the West Midlands, UK (902 km2), as part of modelling work in the WM-Air (West Midlands Air Quality Improvement Programme) project. Compared to the measurement data, overall, the model performs well. Air quality maps for annual/subset averages and percentiles are generated. For this air quality modelling application of task farming, the optimisation process has reduced weeks of model execution time to approximately 35 h for a single model configuration of annual calculations",
author = "J. Zhong and C. Hood and K. Johnson and J. Stocker and J. Handley and M. Wolstencroft and A. Mazzeo and X. Cai and W.J. Bloss",
year = "2021",
month = jul,
day = "30",
doi = "10.3390/atmos12080983",
language = "English",
volume = "12",
journal = "Atmosphere",
issn = "2073-4433",
publisher = "MDPI AG",
number = "8",

}

RIS

TY - JOUR

T1 - Using task farming to optimise a street-scale resolution air quality model of the West Midlands (UK)

AU - Zhong, J.

AU - Hood, C.

AU - Johnson, K.

AU - Stocker, J.

AU - Handley, J.

AU - Wolstencroft, M.

AU - Mazzeo, A.

AU - Cai, X.

AU - Bloss, W.J.

PY - 2021/7/30

Y1 - 2021/7/30

N2 - High resolution air quality models combining emissions, chemical processes, dispersion and dynamical treatments are necessary to develop effective policies for clean air in urban environments, but can have high computational demand. We demonstrate the application of task farming to reduce runtime for ADMS-Urban, a quasi-Gaussian plume air dispersion model. The model represents the full range of source types (point, road and grid sources) occurring in an urban area at high resolution. Here, we implement and evaluate the option to automatically split up a large model domain into smaller sub-regions, each of which can then be executed concurrently on multiple cores of a HPC or across a PC network, a technique known as task farming. The approach has been tested for a large model domain covering the West Midlands, UK (902 km2), as part of modelling work in the WM-Air (West Midlands Air Quality Improvement Programme) project. Compared to the measurement data, overall, the model performs well. Air quality maps for annual/subset averages and percentiles are generated. For this air quality modelling application of task farming, the optimisation process has reduced weeks of model execution time to approximately 35 h for a single model configuration of annual calculations

AB - High resolution air quality models combining emissions, chemical processes, dispersion and dynamical treatments are necessary to develop effective policies for clean air in urban environments, but can have high computational demand. We demonstrate the application of task farming to reduce runtime for ADMS-Urban, a quasi-Gaussian plume air dispersion model. The model represents the full range of source types (point, road and grid sources) occurring in an urban area at high resolution. Here, we implement and evaluate the option to automatically split up a large model domain into smaller sub-regions, each of which can then be executed concurrently on multiple cores of a HPC or across a PC network, a technique known as task farming. The approach has been tested for a large model domain covering the West Midlands, UK (902 km2), as part of modelling work in the WM-Air (West Midlands Air Quality Improvement Programme) project. Compared to the measurement data, overall, the model performs well. Air quality maps for annual/subset averages and percentiles are generated. For this air quality modelling application of task farming, the optimisation process has reduced weeks of model execution time to approximately 35 h for a single model configuration of annual calculations

U2 - 10.3390/atmos12080983

DO - 10.3390/atmos12080983

M3 - Journal article

VL - 12

JO - Atmosphere

JF - Atmosphere

SN - 2073-4433

IS - 8

M1 - 983

ER -