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Multi-scale analysis of a household level agent-based model of landcover change

机译:基于家庭一级代理的土地覆被变化模型的多尺度分析

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Scale issues have significant implications for the analysis of social and biophysical processes in complex systems. These same scale implications are likewise considerations for the design and application of models of landcover change. Scale issues have wide-ranging effects from the representativeness of data used to validate models to aggregation errors introduced in the model structure. This paper presents an analysis of how scale issues affect an agent-based model (ABM) of landcover change developed for a research area in the Midwest, USA. The research presented here explores how scale factors affect the design and application of agent-based landcover change models. The ABM is composed of a series of heterogeneous agents who make landuse decisions on a portfolio of cells in a raster-based programming environment. The model is calibrated using measures of fit derived from both spatial composition and spatial pattern metrics from multi-temporal landcover data interpreted from historical aerial photography. A model calibration process is used to find a best-fit set of parameter weights assigned to agents' preferences for different landuses (agriculture, pasture, timber production, and non-harvested forest). Previous research using this model has shown how a heterogeneous set of agents with differing preferences for a portfolio of landuses produces the best fit to landcover changes observed in the study area. The scale dependence of the model is explored by varying the resolution of the input data used to calibrate the model (observed landcover), ancillary datasets that affect land suitability (topography), and the resolution of the model landscape on which agents make decisions. To explore the impact of these scale relationships the model is run with input datasets constructed at the following spatial resolutions: 60, 90, 120,150,240, 300 and 480 m. The results show that the distribution of landuse-preference weights differs as a function of scale. In addition, with the gradient descent model fitting method used in this analysis the model was not able to converge to an acceptable fit at the 300 and 480 m spatial resolutions. This is a product of the ratio of the input cell resolution to the average parcel size in the landscape. This paper uses these findings to identify scale considerations in the design, development, validation and application of ABMs of landcover change.
机译:规模问题对复杂系统中社会和生物物理过程的分析具有重要意义。这些相同规模的含义同样是设计和应用土地覆被变化模型的考虑因素。从用于验证模型的数据的代表性到模型结构中引入的聚合误差,规模问题具有广泛的影响。本文对规模问题如何影响为美国中西部研究区开发的土地覆盖变化的基于主体的模型(ABM)进行了分析。此处进行的研究探讨了比例因子如何影响基于主体的土地覆被变化模型的设计和应用。 ABM由一系列异构代理组成,这些代理在基于栅格的编程环境中对单元组合进行土地使用决策。使用从空间成分和空间模式指标中得出的拟合度对模型进行校准,该拟合度是从历史航空摄影中得出的多时相土地覆盖数据得出的。使用模型校准过程来找到最合适的参数权重集,这些权重分配给代理商针对不同土地用途(农业,牧场,木材生产和未砍伐森林)的偏好。先前使用此模型的研究表明,对于土地利用组合具有不同偏好的一组不同类型的代理如何最适合研究区域内观察到的土地覆盖变化。通过改变用于校准模型的输入数据的分辨率(观测到的土地覆盖),影响土地适宜性的辅助数据集(地形)以及代理商做出决策的模型景观的分辨率,来探索模型的比例依赖性。为了探索这些比例关系的影响,使用以以下空间分辨率构建的输入数据集运行模型:60、90、120、150、240、300和480 m。结果表明,土地利用偏好权重的分布随规模而变化。另外,在此分析中使用梯度下降模型拟合方法时,模型无法在300和480 m空间分辨率下收敛到可接受的拟合。这是输入像元分辨率与景观中平均包裹大小之比的乘积。本文利用这些发现来确定土地覆被变化的ABM设计,开发,验证和应用中的规模考虑因素。

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