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EFForTS-LGraf: A landscape generator for creating smallholder-driven land-use mosaics

机译:EFForTS-LGraf:景观生成器,用于创建小农户驱动的土地利用马赛克

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摘要

Spatially-explicit simulation models are commonly used to study complex ecological and socio-economic research questions. Often these models depend on detailed input data, such as initial land-cover maps to set up model simulations. Here we present the landscape generator EFFortS-LGraf that provides artificially-generated land-use maps of agricultural landscapes shaped by small-scale farms. EFForTS-LGraf is a process-based landscape generator that explicitly incorporates the human dimension of land-use change. The model generates roads and villages that consist of smallholder farming households. These smallholders use different establishment strategies to create fields in their close vicinity. Crop types are distributed to these fields based on crop fractions and specialization levels. EFForTS-LGraf model parameters such as household area or field size frequency distributions can be derived from household surveys or geospatial data. This can be an advantage over the abstract parameters of neutral landscape generators. We tested the model using oil palm and rubber farming in Indonesia as a case study and validated the artificially-generated maps against classified satellite images. Our results show that EFForTS-LGraf is able to generate realistic land-cover maps with properties that lie within the boundaries of landscapes from classified satellite images. An applied simulation experiment on landscape-level effects of increasing household area and crop specialization revealed that larger households with higher specialization levels led to spatially more homogeneous and less scattered crop type distributions and reduced edge area proportion. Thus, EFForTS-LGraf can be applied both to generate maps as inputs for simulation modelling and as a stand-alone tool for specific landscape-scale analyses in the context of ecological-economic studies of smallholder farming systems.
机译:空间显式仿真模型通常用于研究复杂的生态和社会经济研究问题。通常,这些模型取决于详细的输入数据,例如用于建立模型模拟的初始土地覆盖图。在这里,我们介绍了景观生成器EFFortS-LGraf,它提供了人工生成的由小型农场塑造的农业景观的土地利用图。 EFForTS-LGraf是一个基于过程的景观生成器,明确纳入了土地使用变化的人为因素。该模型生成由小农户组成的道路和村庄。这些小农使用不同的建立策略来在其附近创建字段。作物类型根据作物比例和专业水平分配到这些领域。 EFForTS-LGraf模型参数(例如家庭区域或字段大小频率分布)可以从家庭调查或地理空间数据中得出。与中性景观生成器的抽象参数相比,这可能是一个优势。我们以印度尼西亚的油棕和橡胶种植为例,对该模型进行了测试,并针对分类的卫星图像验证了人工生成的地图。我们的结果表明,EFForTS-LGraf能够根据分类的卫星图像生成具有位于地貌边界内的属性的逼真的土地覆盖图。一项关于增加家庭面积和农作物专业化的景观水平影响的应用模拟实验表明,具有更高专业化水平的较大农户在空间上导致更均匀,零散的作物类型分布,并减少了边缘区域比例。因此,EFForTS-LGraf既可用于生成地图,作为模拟建模的输入,又可作为小农农业系统生态经济研究中特定景观尺度分析的独立工具。

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