connectivity modeling
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2021 ◽  
Vol 13 (6) ◽  
pp. 1138
Author(s):  
Pablo Cisneros-Araujo ◽  
Teresa Goicolea ◽  
María Cruz Mateo-Sánchez ◽  
Juan Ignacio García-Viñás ◽  
Miguel Marchamalo ◽  
...  

Ecological modeling requires sufficient spatial resolution and a careful selection of environmental variables to achieve good predictive performance. Although national and international administrations offer fine-scale environmental data, they usually have limited spatial coverage (country or continent). Alternatively, optical and radar satellite imagery is available with high resolutions, global coverage and frequent revisit intervals. Here, we compared the performance of ecological models trained with free satellite data with models fitted using regionally restricted spatial datasets. We developed brown bear habitat suitability and connectivity models from three datasets with different spatial coverage and accessibility. These datasets comprised (1) a Sentinel-1 and 2 land cover map (global coverage); (2) pan-European vegetation and land cover layers (continental coverage); and (3) LiDAR data and the Forest Map of Spain (national coverage). Results show that Sentinel imagery and pan-European datasets are powerful sources to estimate vegetation variables for habitat and connectivity modeling. However, Sentinel data could be limited for understanding precise habitat–species associations if the derived discrete variables do not distinguish a wide range of vegetation types. Therefore, more effort should be taken to improving the thematic resolution of satellite-derived vegetation variables. Our findings support the application of ecological modeling worldwide and can help select spatial datasets according to their coverage and resolution for habitat suitability and connectivity modeling.


2020 ◽  
Author(s):  
Donata Melaku Canu ◽  
Célia Laurent ◽  
Elisabetta B. Morello ◽  
Stefano Querin ◽  
Giuseppe Scarcella ◽  
...  

Author(s):  
Pramith Devulapalli ◽  
Bistra Dilkina ◽  
Yexiang Xue

Models capturing parameterized random walks on graphs have been widely adopted in wildlife conservation to study species dispersal as a function of landscape features. Learning the probabilistic model empowers ecologists to understand animal responses to conservation strategies. By exploiting the connection between random walks and simple electric networks, we show that learning a random walk model can be reduced to finding the optimal graph Laplacian for a circuit. We propose a moment matching strategy that correlates the model’s hitting and commuting times with those observed empirically. To find the best Laplacian, we propose a neural network capable of back-propagating gradients through the matrix inverse in an end-to-end fashion. We developed a scalable method called CGInv which back-propagates the gradients through a neural network encoding each layer as a conjugate gradient iteration. To demonstrate its effectiveness, we apply our computational framework to applications in landscape connectivity modeling. Our experiments successfully demonstrate that our framework effectively and efficiently recovers the ground-truth configurations.


Ecography ◽  
2020 ◽  
Vol 43 (4) ◽  
pp. 518-527 ◽  
Author(s):  
Andrew J. Marx ◽  
Chao Wang ◽  
Jorge A. Sefair ◽  
Miguel A. Acevedo ◽  
Robert J. Fletcher

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