Landscape allocation: stochastic generators and statistical inference
Patrizia Zamberletti, Julien Papa\"ix, Edith Gabriel, Thomas Opitz

TL;DR
This paper develops statistical tools and stochastic models to analyze, simulate, and infer the structure of agricultural landscapes with geometric elements, enhancing understanding of landscape patterns and their ecological impacts.
Contribution
It introduces a novel class of generative stochastic models combining multiplex networks and Gibbs energy for landscape analysis and scenario generation.
Findings
Models capture small-scale landscape patterns accurately.
Fitted models show strong deviation from random land allocation.
Simulations help understand landscape influence on ecological processes.
Abstract
In agricultural landscapes, the composition and spatial configuration of cultivated and semi-natural elements strongly impact species dynamics, their interactions and habitat connectivity. To allow for landscape structural analysis and scenario generation, we here develop statistical tools for real landscapes composed of geometric elements including 2D patches but also 1D linear elements such as hedges. We design generative stochastic models that combine a multiplex network representation and Gibbs energy terms to characterize the distributional behavior of landscape descriptors for land-use categories. We implement Metropolis-Hastings for this new class of models to sample agricultural scenarios featuring parameter-controlled spatial and temporal patterns (e.g., geometry, connectivity, crop-rotation). Pseudolikelihood-based inference allows studying the relevance of model components in…
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Taxonomy
TopicsLand Use and Ecosystem Services · Ecology and Vegetation Dynamics Studies · Wildlife-Road Interactions and Conservation
