An Approach for Simulating Soil Loss from an Agro-Ecosystem Using Multi-Agent Simulation: A Case Study for Semi-Arid Ghana
Authored by Biola K Badmos, Sampson K Agodzo, Grace B Villamor, Samuel N Odai
Date Published: 2015
DOI: 10.3390/land4030607
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Platforms:
NetLogo
Model Documentation:
ODD
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Abstract
Soil loss is not limited to change from forest or woodland to other land
uses/covers. It may occur when there is agricultural land-use/cover
modification or conversion. Soil loss may influence loss of carbon from
the soil, hence implication on greenhouse gas emission. Changing land
use could be considered actually or potentially successful in adapting
to climate change, or may be considered maladaptation if it creates
environmental degradation. In semi-arid northern Ghana, changing
agricultural practices have been identified amongst other climate
variability and climate change adaptation measures. Similarly, some of
the policies aimed at improving farm household resilience toward climate
change impact might necessitate land use change. The heterogeneity of
farm household (agents) cannot be ignored when addressing land use/cover
change issues, especially when livelihood is dependent on land. This
paper therefore presents an approach for simulating soil loss from an
agro-ecosystem using multi-agent simulation (MAS). We adapted a
universal soil loss equation as a soil loss sub-model in the Vea-LUDAS
model (a MAS model). Furthermore, for a 20-year simulation period, we
presented the impact of agricultural land-use adaptation strategy (maize
cultivation credit i.e., maize credit scenario) on soil loss and
compared it with the baseline scenario i.e., business-as-usual. Adoption
of maize as influenced by maize cultivation credit significantly
influenced agricultural land-use change in the study area. Although
there was no significant difference in the soil loss under the tested
scenarios, the incorporation of human decision-making in a temporal
manner allowed us to view patterns that cannot be seen in single step
modeling. The study shows that opening up cropland on soil with a high
erosion risk has implications for soil loss. Hence, effective measures
should be put in place to prevent the opening up of lands that have high
erosion risk.
Tags
Agent-based models
Dynamics
systems
Protocol
Erosion rates
Loss equation
Erodibility