Moving beyond the noise: geospatial modelling of urban sound environments in a sub-Saharan African city

Sierra N. Clark, Raphael E. Arku, Majid Ezzati, James Bennett, Ricky Nathvani, Abosede Sarah Alli, James Nimo, Josephine Bedford Moses, Solomon Baah, Allison Hughes, Samuel Agyei-Mensah, George Owusu, Mireille Toledano, Michael Brauer

Research output: Contribution to journalArticlepeer-review

1 Citation (Scopus)

Abstract

Cities encompass a mixture of artificial, human, animal, and nature-based sounds, which through long and short-term exposures, can impact on physical and mental health. Yet, most epidemiological research has focused on only transportation noise, leaving a significant gap in understanding the health impacts of other urban sound types, especially in sub-Saharan Africa (SSA). We conducted a large-scale measurement campaign in Accra, Ghana, collecting audio recordings and sound levels from 129 locations between April 2019-June 2020. We classified sound types with a neural network model and then used Random Forest land use regression to predict prevalences of different sound types citywide. We then developed a composite metric integrating sound levels with the prevalence of sound types. Road traffic sounds dominated the urban core, while human and animal sounds were prominent in high-density and peri-urban areas, respectively. Our high-resolution approach provides a comprehensive characterization of the complexity of urban sounds in a major SSA city, paving the way for new epidemiological studies on the health impacts of exposure to diverse sound sources in the future.

Original languageEnglish
Article number21403
JournalScientific Reports
Volume15
Issue number1
DOIs
Publication statusPublished - Dec 2025

Keywords

  • Accra
  • Audio
  • Environmental public health
  • Ghana
  • Machine learning
  • Noise
  • Urban sounds

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