首页> 外文会议>ACRS 2011;Asian conference on remote sensing >ASSESSING GARP MODELING AND EFFECT OF PLANT SAMPLE POSITION ON PREDICTING SUITABLE HABITAT OF Brainea insignis
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ASSESSING GARP MODELING AND EFFECT OF PLANT SAMPLE POSITION ON PREDICTING SUITABLE HABITAT OF Brainea insignis

机译:评估GARP模型和植物样品位置对预测脑徽虫适宜生境的影响

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Forestry has begun to use 3S technologies (RS, GIS, and GPS) in routine inventory work and scientific research. Modeling ecological pattern of species needs to utilize the combination of 3S technologies and statistics, and it has become an important part in ecology. The study was intended to predict the suitable habitat of cycad-fern in the Huisun Forest Station by using multivariate statistics coupled with a GIS. The ecological pattern of the species was examined by overlaying the layer of cycad-fern samples collected with GPS on the layers of topographic variables and vegetation index derived from SPOT-5 images. We also combined easting and northing coordinates of grid cell with topographic variables to improve the accuracy of predictive models. Three models, decision tree (DT), Genetic Algorithm for Rule-set Prediction (GARP), and discriminant analysis (DA), were developed and validated. Accuracy assessment results indicated that the accuracies of DT with easting and northing added respectively were much greater than those of both GARP and DA with easting and northing added respectively, and GARP with easting and northing added respectively was also better than DA. More importantly, the accuracies of DT with easting and northing added respectively were greatly improved, those of DA with easting and/or northing added respectively were slightly improved, and the opposite was true with GARP. Easting was more effective than northing in improving model accuracy because of east-west distribution with cycad-ferns in the Kuan-Dau watershed of the Huisun area. However, easting and northing predictor variables were found to limit the ability of spatial extrapolation with models and make predictive results look more artificial. We shall attempt to incorporate predictor variables extracted from high spatial resolution, hyperspectral data into models to improve the ability of spatial extrapolation with models in a follow-up study.
机译:林业已开始在常规清查工作和科学研究中使用3S技术(RS,GIS和GPS)。对物种的生态模式进行建模需要结合3S技术和统计数据,这已成为生态学中的重要组成部分。这项研究旨在通过使用多元统计数据和GIS来预测惠顺森林站苏铁蕨的适宜生境。通过将用GPS收集的苏铁蕨样品层覆盖在源自SPOT-5图像的地形变量和植被指数层上,来检查该物种的生态模式。我们还将网格单元的东,北坐标与地形变量相结合,以提高预测模型的准确性。开发并验证了决策树(DT),规则集遗传算法(GARP)和判别分析(DA)这三种模型。准确性评估结果表明,分别添加东和北的DT的精度要远大于分别添加东和北的GARP和DA的精度,并且分别添加东和北的GARP的精度也要好于DA。更重要的是,分别增加了东移和北移的DT精度,分别增加了东移和/或北移的DA的精度有所改善,而GARP则相反。由于在惠顺地区关公道流域,苏铁蕨类植物呈东西向分布,因此东移比北移更有效地提高了模型精度。但是,发现东,北预测变量会限制使用模型进行空间外推的能力,并使预测结果看起来更人为。我们将尝试在后续研究中将从高空间分辨率,高光谱数据中提取的预测变量合并到模型中,以提高模型的空间外推能力。

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