Environmental Data Science (Jan 2025)

Discovering effective policies for land-use planning with neuroevolution

  • Daniel Young,
  • Olivier Francon,
  • Elliot Meyerson,
  • Clemens Schwingshackl,
  • Jacob Bieker,
  • Hugo Cunha,
  • Babak Hodjat,
  • Risto Miikkulainen

DOI
https://doi.org/10.1017/eds.2025.18
Journal volume & issue
Vol. 4

Abstract

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How areas of land are allocated for different uses, such as forests, urban areas, and agriculture, has a large effect on the terrestrial carbon balance and, therefore, climate change. Based on available historical data on land-use changes and a simulation of the associated carbon emissions and removals, a surrogate model can be learned that makes it possible to evaluate the different options available to decision-makers efficiently. An evolutionary search process can then be used to discover effective land-use policies for specific locations. Such a system was built on the Project Resilience platform and evaluated with the Land-Use Harmonization dataset LUH2 and the bookkeeping model BLUE. It generates Pareto fronts that trade off carbon impact and amount of land-use change customized to different locations, thus providing a proof-of-concept tool that is potentially useful for land-use planning.

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