Title of article
Modeling biocomplexity e actors, landscapes and alternative futures
Author/Authors
John P. Bolte، نويسنده , , *، نويسنده , , David W. Hulse b، نويسنده , , Stanley V. Gregory، نويسنده , , Court Smith d، نويسنده ,
Issue Information
دوهفته نامه با شماره پیاپی سال 2006
Pages
10
From page
570
To page
579
Abstract
Increasingly, models (and modelers) are being asked to address the interactions between human influences, ecological processes, and landscape
dynamics that impact many diverse aspects of managing complex coupled human and natural systems. These systems may be profoundly
influenced by human decisions at multiple spatial and temporal scales, and the limitations of traditional process-level ecosystems modeling approaches
for representing the richness of factors shaping landscape dynamics in these coupled systems has resulted in the need for new analysis
approaches. New tools in the areas of spatial data management and analysis, multicriteria decision-making, individual-based modeling, and complexity
science have all begun to impact how we approach modeling these systems. The term ‘‘biocomplexity’’ has emerged as a descriptor of
the rich patterns of interactions and behaviors in human and natural systems, and the challenges of analyzing biocomplex behavior is resulting in
a convergence of approaches leading to new ways of understanding these systems. Important questions related to system vulnerability and resilience,
adaptation, feedback processing, cycling, non-linearities and other complex behaviors are being addressed using models employing new
representational approaches to analysis. The complexity inherent in these systems challenges the modeling community to provide tools that capture
sufficiently the richness of human and ecosystem processes and interactions in ways that are computationally tractable and understandable.
We examine one such tool, EvoLand, which uses an actor-based approach to conduct alternative futures analyses in the Willamette Basin,
Oregon.
Keywords
Complexity , adaptation , simulation , Resilience
Journal title
Environmental Modelling and Software
Serial Year
2006
Journal title
Environmental Modelling and Software
Record number
958697
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