Dynamic Optimization of Landscape Connectivity Embedding Spatial-Capture-Recapture Information
Xue, Yexiang (Cornell University) | Wu, Xiaojian (Cornell University) | Morin, Dana (New York Cooperative Fish and Wildlife Research Unit) | Dilkina, Bistra (Georgia Institute of Technology) | Fuller, Angela (U.S. Geological Survey) | Royle, J. Andrew (U.S. Geological Survey) | Gomes, Carla P. (Cornell University)
Maintaining landscape connectivity is increasingly important in wildlife conservation, especially for species experiencing the effects of habitat loss and fragmentation. We propose a novel approach to dynamically optimize landscape connectivity. Our approach is based on a mixed integer program formulation, embedding a spatial capture-recapture model that estimates the density, space usage, and landscape connectivity for a given species. Our method takes into account the fact that local animal density and connectivity change dynamically and non-linearly with different habitat protection plans. In order to scale up our encoding, we propose a sampling scheme via random partitioning of the search space using parity functions. We show that our method scales to real-world size problems and dramatically outperforms the solution quality of an expectation maximization approach and a sample average approximation approach.
Feb-14-2017