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Estimation of Tree Cover in an Agricultural Parkland of Senegal Using Rule-Based Regression Tree Modeling

机译:基于规则回归树模型的塞内加尔农业园区树木覆盖率估算

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Field trees are an integral part of the farmed parkland landscape in West Africa and provide multiple benefits to the local environment and livelihoods. While field trees have received increasing interest in the context of strengthening resilience to climate variability and change, the actual extent of farmed parkland and spatial patterns of tree cover are largely unknown. We used the rule-based predictive modeling tool Cubist® to estimate field tree cover in the west-central agricultural region of Senegal. A collection of rules and associated multiple linear regression models was constructed from (1) a reference dataset of percent tree cover derived from very high spatial resolution data (2 m Orbview) as the dependent variable, and (2) ten years of 10-day 250 m Moderate Resolution Imaging Spectrometer (MODIS) Normalized Difference Vegetation Index (NDVI) composites and derived phenological metrics as independent variables. Correlation coefficients between modeled and reference percent tree cover of 0.88 and 0.77 were achieved for training and validation data respectively, with absolute mean errors of 1.07 and 1.03 percent tree cover. The resulting map shows a west-east gradient from high tree cover in the peri-urban areas of horticulture and arboriculture to low tree cover in the more sparsely populated eastern part of the study area. A comparison of current (2000s) tree cover along this gradient with historic cover as seen on Corona images reveals dynamics of change but also areas of remarkable stability of field tree cover since 1968. The proposed modeling approach can help to identify locations of high and low tree cover in dryland environments and guide ground studies and management interventions aimed at promoting the integration of field trees in agricultural systems.
机译:野外树木是西非农田绿地景观不可或缺的一部分,并为当地环境和生计提供多种好处。在增强对气候变化和变化的适应力的背景下,野外树木的兴趣日益浓厚,但农田的实际规模和树木覆盖的空间格局却鲜为人知。我们使用了基于规则的预测建模工具Cubist®来估算塞内加尔中西部农业地区的田间树木覆盖率。规则和相关的多个线性回归模型的集合是根据以下因素构建的:(1)从非常高的空间分辨率数据(2 m Orbview)作为因变量得出的树木覆盖率参考数据集,以及(2)10天的十年250 m中分辨率成像光谱仪(MODIS)归一化植被指数(NDVI)复合材料和导出的物候指标作为自变量。对于训练和验证数据,建模和参考树木覆盖率之间的相关系数分别为0.88和0.77,绝对平均误差为1.07和1.03%。生成的地图显示了从园艺和树木种植的近郊地区的高树覆盖率到研究区域人口稀少的东部地区的低树覆盖率的东西向梯度。将当前(2000年代)沿该坡度的树木覆盖率与Corona影像上看到的历史覆盖率进行比较,不仅可以发现变化的动态,而且还可以看出自1968年以来田间树木覆盖率具有显着稳定性。建议的建模方法可以帮助确定高低位置旱地环境中的树木覆盖,并指导地面研究和管理干预措施,以促进田间树木在农业系统中的融合。

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