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APPLICATION OF SPATIAL MODELLING APPROACHES, SAMPLING STRATEGIES AND 3S TECHNOLOGY WITHIN AN ECOLGOCIAL FRAMWORK

机译:空间建模方法在生态框架中的应用,采样策略和3S技术

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How to effectively describe ecological patterns in nature over broader spatial scales and build a modeling ecological framework has become an important issue in ecological research. We test four modeling methods (MAXENT, DOMAIN, GLM and ANN) to predict the potential habitat of Schima superba (Chinese guger tree, CGT) with different spatial scale in the Huisun study area in Taiwan. Then we created three sampling design (from small to large scales) for model development and validation by different combinations of CGT samples from aforementioned three sites (Tong-Feng watershed, Yo-Shan Mountain, and Kuan-Dau watershed). These models combine points of known occurrence and topographic variables to infer CGT potential spatial distribution. Our assessment revealed that the method performance from highest to lowest was: MAXENT, DOMAIN, GLM and ANN on small spatial scale. The MAXENT and DOMAIN two models were the most capable for predicting the tree's potential habitat. However, the outcome clearly indicated that the models merely based on topographic variables performed poorly on large spatial extrapolation from Tong-Feng to Kuan-Dau because the humidity and sun illumination of the two watersheds are affected by their microterrains and are quite different from each other. Thus, the models developed from topographic variables can only be applied within a limited geographical extent without a significant error. Future studies will attempt to use variables involving spectral information associated with species extracted from high spatial, spectral resolution remotely sensed data, especially hyperspectral image data, for building a model so that it can be applied on a large spatial scale.
机译:如何在更广泛的空间尺度上有效地描述生态模式,并建立建模生态框架已成为生态研究的重要问题。我们测试四种建模方法(MaxEnt,Domain,GLM和ANN),以预测台湾的Huisun学习区的不同空间规模施马超标(中国人气树,CGT)的潜在栖息地。然后,我们创建了三种采样设计(从小到大尺度),通过来自上述三个地点的CGT样品的不同组合(通峰流域,洋山山和Kuan-dau流域)不同组合进行模型开发和验证。这些模型结合了已知的发生和地形变量的点来推断CGT潜在的空间分布。我们的评估表明,从最高到最低的方法性能是:MaxEnt,域,GLM和ANN小空间尺度。最大和域两个模型是最有能力预测树的潜在栖息地。然而,结果清楚地表明,该模型仅基于各种空间推断的地形变量,因为两个流域的湿度和太阳照射受到微射箭的影响,并且彼此完全不同。因此,从地形变量开发的模型只能在有限的地理范围内应用,而无需显着误差。未来的研究将尝试使用涉及与从高空间,光谱分辨率的远程感测的数据,特别是高光谱图像数据提取的物种相关联的频谱信息的变量,用于构建模型,以便它可以应用于大的空间尺度。

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