2020
DOI: 10.1186/s40663-020-00225-4
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Gap models across micro- to mega-scales of time and space: examples of Tansley’s ecosystem concept

Abstract: Background: Gap models are individual-based models for forests. They simulate dynamic multispecies assemblages over multiple tree-generations and predict forest responses to altered environmental conditions. Their development emphases designation of the significant biological and ecological processes at appropriate time/space scales. Conceptually, they are with consistent with A.G. Tansley's original definition of "the ecosystem". Results: An example microscale application inspects feedbacks among terrestrial … Show more

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Cited by 15 publications
(9 citation statements)
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“…Linearly increasing posterior estimates for the process covariance matrix degrees of freedom over time (Figure 4 left) provided evidence that the estimation of the process covariance matrix was increasingly constrained over time and could continue to be constrained by a longer time series of data. The values associated with the biomass of each species, along the diagonal of the process covariance matrix, were estimated to be small (Table 3 column 3), indicating that annual species biomass accumulation process was well represented by the forest gap model (Shugart et al, 2020), once we accounted for uncertainty in the data. Similarly, the species correlations in the process covariance matrix were estimated to be small with the most significant correlation between species being a small negative relationship between beech and red oak (correlation = −0.125, Figure 4).…”
Section: Resultsmentioning
confidence: 99%
“…Linearly increasing posterior estimates for the process covariance matrix degrees of freedom over time (Figure 4 left) provided evidence that the estimation of the process covariance matrix was increasingly constrained over time and could continue to be constrained by a longer time series of data. The values associated with the biomass of each species, along the diagonal of the process covariance matrix, were estimated to be small (Table 3 column 3), indicating that annual species biomass accumulation process was well represented by the forest gap model (Shugart et al, 2020), once we accounted for uncertainty in the data. Similarly, the species correlations in the process covariance matrix were estimated to be small with the most significant correlation between species being a small negative relationship between beech and red oak (correlation = −0.125, Figure 4).…”
Section: Resultsmentioning
confidence: 99%
“…Another issue is the emission of BVOCs. A highly complex species richness and vertical diversity through the forest canopy is required to prevent leaves from overheating and increasing BVOC production [ 194 ].…”
Section: Discussionmentioning
confidence: 99%
“…University of Virginia Forest Model Enhanced (UVAFME) is a forest gap model that was originally developed as an enhancement for alpine and boreal forests on previous forest gap models (Shugart et al, 2020 ). The basic principle underlying UVAFME is competition for light, water, and nutrients between individual trees.…”
Section: Methodsmentioning
confidence: 99%