In this research, we investigate whether real-world agricultural land-use systems can be meaningfully approximated by emergent - complex systems - behavior. We do so by constructing an innovative pattern-oriented individual-based land-use transition model. The model exhibits complex systems behavior by combining simple yet plausible temporal and spatial mechanisms. These operate on cellular automata - abstractions of farmers - and allow automata to maximize utility at varying levels of complexity, rationality, and foresight generated by using Markov chains. By systematically combining mechanisms, we construct different process-based filters generating different emergent behavior and land-use patterns in statistical equilibrium states. Results show that if automata have foresight, emergent behavior can be interpreted as intensification. Furthermore, two different types of intensification can emerge: increasing yield by increasing inputs at constant total agricultural area or increasing yield by substitution of land for inputs. Overall, the results suggest that real-world agricultural land-use systems can be meaningfully approximated by emergent - complex systems - behavior. © 2013 Taylor & Francis.
CITATION STYLE
Mandemaker, M., Bakker, M., Stoorvogel, J., & Veldkamp, A. (2014). A pattern-oriented individual-based land-use transition model: Utility maximization at varying levels of complexity and rationality (CORA). Journal of Land Use Science, 9(1), 59–81. https://doi.org/10.1080/1747423X.2012.751560
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