2021
DOI: 10.3389/fevo.2021.653393
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A Step-by-Step Guide to Initialize and Calibrate Landscape Models: A Case Study in the Mediterranean Mountains

Abstract: The use of spatially interactive forest landscape models has increased in recent years. These models are valuable tools to assess our knowledge about the functioning and provisioning of ecosystems as well as essential allies when predicting future changes. However, developing the necessary inputs and preparing them for research studies require substantial initial investments in terms of time. Although model initialization and calibration often take the largest amount of modelers’ efforts, such processes are ra… Show more

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Cited by 5 publications
(5 citation statements)
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“…specific species-areas and harvesting regimes, post-harvest planting), the spatial level (i.e. the resolution of the cells) is user-defined, making it very flexible and adaptive to a large variety of simulation experiments (Suárez-Muñoz et al, 2021). In LANDIS-II, the terrain is divided into ecoregions, which are sub-regions sharing similar climatic conditions and soil characteristics.…”
Section: Fig 1 Geographic Location Map Of the Ourika Watershedmentioning
confidence: 99%
See 1 more Smart Citation
“…specific species-areas and harvesting regimes, post-harvest planting), the spatial level (i.e. the resolution of the cells) is user-defined, making it very flexible and adaptive to a large variety of simulation experiments (Suárez-Muñoz et al, 2021). In LANDIS-II, the terrain is divided into ecoregions, which are sub-regions sharing similar climatic conditions and soil characteristics.…”
Section: Fig 1 Geographic Location Map Of the Ourika Watershedmentioning
confidence: 99%
“…The aim is to define for each forest species composing the Ourika Forest massif, certain characteristics describing its behaviour with respect to well-defined ecological and climatic conditions. The identification of these characteristics is a combination of two sources of information, namely the bibliography as the first source (Pausas et al, 2004;Valladares, 2005;Niinemets et al, 2006;Serrada et al, 2008;Kattge et al, 2020;Suárez-Muñoz et al, 2021), local data (www.try-db.org/TryWeb/ home.php) and expert opinion as a second source to complete the bibliography.…”
Section: Fig 1 Geographic Location Map Of the Ourika Watershedmentioning
confidence: 99%
“…Applications of NFI data include ecological indicators of climate change (Horn et al, 2018; Knott et al, 2020; Will‐Wolf et al, 2017; Zhu et al, 2012); below‐ground mycorrhizal associations with tree species (Averill et al, 2022; Carteron et al, 2022; Jo et al, 2019); invasion biology of plants, pests and pathogens (Baer & Gray, 2022; Fei et al, 2019; Iannone et al, 2016); and biodiversity patterns and processes (Chirici et al, 2012; Fei et al, 2018; Winter et al, 2012; Zeller et al, 2018), among others. In addition to characterizing observed ecological patterns and processes, NFI data have also supported the parameterization of ecological models including spatially explicit landscape models (Purves et al, 2007; Suárez‐Muñoz et al, 2021; Wang et al, 2013), tree growth models (Lichstein et al, 2010; Giebink, DeRose, et al, 2022; Heilman et al, 2022) and species distribution models (Crookston et al, 2010; Iverson et al, 2019; Prasad et al, 2020), which aim to predict forest responses to changing climate and disturbances.…”
Section: Introductionmentioning
confidence: 98%
“…In addition to characterizing observed ecological patterns and processes, NFI data have also supported the parameterization of ecological models including spatially explicit landscape models (Purves et al, 2007;Suárez-Muñoz et al, 2021;Wang et al, 2013), tree growth models (Lichstein et al, 2010;Heilman et al, 2022) and species distribution models (Crookston et al, 2010;Iverson et al, 2019;Prasad et al, 2020), which aim to predict forest responses to changing climate and disturbances.…”
Section: Introductionmentioning
confidence: 99%
“…Thus, the most commonly used FLMs require information about tree species and age classes. Collecting such information of acceptable accuracy over large areas is a complex task, often requiring a combination of data from different sources [19]. With the increase in the study area size, it becomes more difficult to collect field data, and sometimes inaccessible due to the geographical characteristics and low transport accessibility of the territory.…”
Section: Introductionmentioning
confidence: 99%