Abstract

Determining the land cover (LC) data requirements used as input to noise simulations is essential for planning sustainable urban densifications. This study examines how different LC datasets influence simulated environmental noise levels of road traffic using Nord2000 in an urban area of 1 km2 in southern Sweden. Four LC datasets were used. The first dataset was based on satellite data (spatial resolution 10 m) combined with various other datasets implementing an LC classification algorithm prioritizing vegetation. The second dataset was created by applying an LC majority priority rule over every cell of the first dataset. The third dataset was produced by applying a convolutional neural network over an orthophoto (0.08 m spatial resolution), while the fourth dataset was created by manually digitizing ground surfaces over the same orthophoto also utilizing data from the municipality’s basemap. The results show that LC data impact simulated noise levels, with priority rules in LC classification algorithms having a greater effect than spatial resolution. Statistically significant differences (up to 3 dB(A)) were found when comparing the simulated noise levels generated using the vegetation-prioritizing LC dataset compared to the simulated noise levels of the other LC datasets.
Original languageEnglish
JournalNoise Mapping
Volume12
Issue number1
DOIs
Publication statusPublished - 2025 Apr 21

Subject classification (UKÄ)

  • Multidisciplinary Geosciences
  • Other Computer and Information Science
  • Physical Geography
  • Artificial Intelligence

Free keywords

  • Noise Simulations
  • Nord2000
  • Convolutional Neural Networks (CNN)
  • Land Cover
  • Semantic 3D city models
  • sustainable urban planning

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