Large Landscape Conservation — Synthetic and Real-World Datasets

Authors

  • Bistra Dilkina Cornell University
  • Katherine Lai Cornell University
  • Ronan Le Bras Cornell University
  • Yexiang Xue Cornell University
  • Carla Gomes Cornell University
  • Ashish Sabharwal IBM Research
  • Jordan Suter Oberlin College
  • Kevin McKelvey US Forest Service
  • Michael Schwartz US Forest Service
  • Claire Montgomery Oregon State University

DOI:

https://doi.org/10.1609/aaai.v27i1.8489

Keywords:

dataset, conservation planning, sustainability, landscape, network design

Abstract

Biodiversity underpins ecosystem goods and services and hence protecting it is key to achieving sustainability. However, the persistence of many species is threatened by habitat loss and fragmentation due to human land use and climate change. Conservation efforts are implemented under very limited economic resources, and therefore designing scalable, cost-efficient and systematic approaches for conservation planning is an important and challenging computational task. In particular, preserving landscape connectivity between good habitat has become a key conservation priority in recent years. We give an overview of landscape connectivity conservation and some of the underlying graph-theoretic optimization problems. We present a synthetic generator capable of creating families of randomized structured problems, capturing the essential features of real-world instances but allowing for a thorough typical-case performance evaluation of different solution methods. We also present two large-scale real-world datasets, including economic data on land cost, and species data for grizzly bears, wolverines and lynx.

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Published

2013-06-29

How to Cite

Dilkina, B., Lai, K., Le Bras, R., Xue, Y., Gomes, C., Sabharwal, A., Suter, J., McKelvey, K., Schwartz, M., & Montgomery, C. (2013). Large Landscape Conservation — Synthetic and Real-World Datasets. Proceedings of the AAAI Conference on Artificial Intelligence, 27(1), 1369-1372. https://doi.org/10.1609/aaai.v27i1.8489

Issue

Section

Computational Sustainability and Artificial Intelligence