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A Robust Technique for Mapping Vegetation Condition Across a Major River System

机译:跨越主要河流系统的植被状况映射的鲁棒技术

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Ecologists need to develop tools that allow characterization of vegetation condition over scales that are pertinent to species' persistence and appropriate for management actions. Our study shows that stand condition can be mapped accurately over the floodplain of a major river system (ca 100,000 ha of forest over 1600 km of river)--the Murray River in southeastern Australia. It demonstrates the value of using quantitative ground surveys in conjunction with remotely sensed data to model vegetation condition over very large spatial domains. A comparison of four modelling methods found that stand condition was best modelled using the multivariate adaptive regression spline (MARS) method (R po = 0.85), although there was little difference among the methods (R po = 0.77-0.85). However, a subsequent validation survey of condition at new locations showed that use of artificial neural networks had substantially higher predictive power (R po = 0.78) than the MARS model (R po = 0.28). This discrepancy demonstrates the value of using several modelling approaches to determine relationships among vegetation responses and environmental variables, and stresses the importance of validating ecological models with predictive surveys conducted after model building. The artificial neural network was used to produce a stand condition map for the whole floodplain, which predicted that only 30% of the area containing Eucalyptus camaldulensis stands is currently in good condition. There is a downstream decline in stand condition, which is related to more extreme declines in flooding, due to water harvesting, and drier climate found in the Lower Murray region. Rigorous surveying and modelling approaches, such as those used here, are necessary if vegetation health is to be effectively monitored and managed.
机译:生态学家需要开发工具,以在与物种的持久性有关并适合管理措施的尺度上表征植被状况。我们的研究表明,在澳大利亚东南部的墨累河(Murray River)-主要河流系统(约1600公里的河上约有100,000公顷的森林)的洪泛区上,可以准确地绘制林分状况。它证明了结合使用定量地面调查和遥感数据来模拟非常大的空间域上的植被状况的价值。四种建模方法的比较发现,用多元自适应回归样条(MARS)方法(R po = 0.85)可以最好地模拟林分状况,尽管方法之间差异很小(R po = 0.77-0.85)。但是,随后对新地点的状况进行的有效性调查表明,使用人工神经网络比MARS模型(R po = 0.28)具有更高的预测能力(R po = 0.78)。这种差异说明了使用几种建模方法确定植被响应与环境变量之间关系的价值,并强调了在模型构建后进行预测性调查来验证生态模型的重要性。人工神经网络用于生成整个洪泛区的林分状况图,该图预测目前只有30%的含有桉树林分的林区状况良好。林分状况在下游出现下降,这与由于集水和下穆里地区发现的较干燥的气候导致洪水更加极端地下降有关。如果要有效地监测和管理植被健康,则必须采用严格的调查和建模方法,例如此处使用的方法。

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