Computational Model Library

Displaying 10 of 138 results for "Andreas Ihrig" clear search

A logging agent builds roads based on the location of high-value hotspots, and cuts trees based on road access. A forest monitor sanctions the logger on observed infractions, reshaping the pattern of road development.

Riparian forests are one of the most vulnerable ecosystems to the development of biological invasions, therefore limiting their spread is one of the main challenges for conservation. The main factors that explain plant invasions in these ecosystems are the capacity for both short- and long-distance seed dispersion, and the occurrence of suitable habitats that facilitate the establishment of the invasive species. Large floods constitute an abiotic filter for invasion.

This model simulates the spatio-temporal spread of the woody invader Gleditsia. triacanthos in the riparian forest of the National Park Esteros de Farrapos e Islas del Río Uruguay, a riparian system in the coast of the Uruguay river (South America). In this model, we represent different environmental conditions for the development of G. triacanthos, long- and short-distance spread of its fruits, and large floods as the main factor of mortality for fruit and early stages.

Field results show that the distribution pattern of this invasive species is limited by establishment, i.e. it spreads locally through the expansion of small areas, and remotely through new invasion foci. This model recreates this dispersion pattern. We use this model to derive management implications to control the spread of G. triacanthos

PopComp

Andre Costopoulos | Published Thursday, December 10, 2020

PopComp by Andre Costopoulos 2020
[email protected]
Licence: DWYWWI (Do whatever you want with it)

I use Netlogo to build a simple environmental change and population expansion and diffusion model. Patches have a carrying capacity and can host two kinds of populations (APop and BPop). Each time step, the carrying capacity of each patch has a given probability of increasing or decreasing up to a maximum proportion.

Agent-based modeling and simulation (ABMS) is a class of computational models for
simulating the actions and interactions of autonomous agents with the goal of assessing
their effects on a system as a whole. Several frameworks for generating parallel ABMS
applications have been developed taking advantage of their common characteristics,
but there is a lack of a general benchmark for comparing the performance of generated
applications. We propose and design a benchmark that takes into consideration the

Agent-based modeling and simulation (ABMS) is a class of computational models for
simulating the actions and interactions of autonomous agents with the goal of assessing
their effects on a system as a whole. Several frameworks for generating parallel ABMS
applications have been developed taking advantage of their common characteristics,
but there is a lack of a general benchmark for comparing the performance of generated
applications. We propose and design a benchmark that takes into consideration the

Benchmark for DMASON

Andreu Moreno Vendrell | Published Friday, November 22, 2024

Agent-based modeling and simulation (ABMS) is a class of computational models for
simulating the actions and interactions of autonomous agents with the goal of assessing
their effects on a system as a whole. Several frameworks for generating parallel ABMS
applications have been developed taking advantage of their common characteristics,
but there is a lack of a general benchmark for comparing the performance of generated
applications. We propose and design a benchmark that takes into consideration the

Contact Tracing agent model

Andreu Moreno Vendrell | Published Friday, November 22, 2024

Contact Tracing Repast HPC agent model

Mobility USA (MUSA)

Davide Natalini Giangiacomo Bravo | Published Sunday, December 08, 2013 | Last modified Monday, December 30, 2013

MUSA is an ABM that simulates the commuting sector in USA. A multilevel validation was implemented. Social network with a social-circle structure included. Two types of policies have been tested: market-based and preference-change.

Next generation of the CHALMS model applied to a coastal setting to investigate the effects of subjective risk perception and salience decision-making on adaptive behavior by residents.

RHEA aims to provide a methodological platform to simulate the aggregated impact of households’ residential location choice and dynamic risk perceptions in response to flooding on urban land markets. It integrates adaptive behaviour into the spatial landscape using behavioural theories and empirical data sources. The platform can be used to assess: how changes in households’ preferences or risk perceptions capitalize in property values, how price dynamics in the housing market affect spatial demographics in hazard-prone urban areas, how structural non-marginal shifts in land markets emerge from the bottom up, and how economic land use systems react to climate change. RHEA allows direct modelling of interactions of many heterogeneous agents in a land market over a heterogeneous spatial landscape. As other ABMs of markets it helps to understand how aggregated patterns and economic indices result from many individual interactions of economic agents.
The model could be used by scientists to explore the impact of climate change and increased flood risk on urban resilience, and the effect of various behavioural assumptions on the choices that people make in response to flood risk. It can be used by policy-makers to explore the aggregated impact of climate adaptation policies aimed at minimizing flood damages and the social costs of flood risk.

Displaying 10 of 138 results for "Andreas Ihrig" clear search

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