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Predicting Vascular Plant Diversity in Anthropogenic Peatlands: Comparison of Modeling Methods with Free Satellite Data

机译:预测人为泥炭地维管束植物多样性:与免费卫星数据建模方法的比较

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摘要

Peatlands are ecosystems of great relevance, because they have an important number of ecological functions that provide many services to mankind. However, studies focusing on plant diversity, addressed from the remote sensing perspective, are still scarce in these environments. In the present study, predictions of vascular plant richness and diversity were performed in three anthropogenic peatlands on Chiloé Island, Chile, using free satellite data from the sensors OLI, ASTER, and MSI. Also, we compared the suitability of these sensors using two modeling methods: random forest (RF) and the generalized linear model (GLM). As predictors for the empirical models, we used the spectral bands, vegetation indices and textural metrics. Variable importance was estimated using recursive feature elimination (RFE). Fourteen out of the 17 predictors chosen by RFE were textural metrics, demonstrating the importance of the spatial context to predict species richness and diversity. Non-significant differences were found between the algorithms; however, the GLM models often showed slightly better results than the RF. Predictions obtained by the different satellite sensors did not show significant differences; nevertheless, the best models were obtained with ASTER (richness: R 2 = 0.62 and %RMSE = 17.2, diversity: R 2 = 0.71 and %RMSE = 20.2, obtained with RF and GLM respectively), followed by OLI and MSI. Diversity obtained higher accuracies than richness; nonetheless, accurate predictions were achieved for both, demonstrating the potential of free satellite data for the prediction of relevant community characteristics in anthropogenic peatland ecosystems.
机译:泥炭地是具有重要意义的生态系统,因为它们具有重要的生态功能,可以为人类提供许多服务。但是,在这些环境中,从遥感角度出发针对植物多样性的研究仍然很少。在本研究中,使用来自OLI,ASTER和MSI传感器的免费卫星数据,对智利奇洛埃岛上的三个人为泥炭地进行了维管束植物丰富性和多样性的预测。此外,我们使用两种建模方法(随机森林(RF)和广义线性模型(GLM))比较了这些传感器的适用性。作为经验模型的预测指标,我们使用了光谱带,植被指数和质地指标。使用递归特征消除(RFE)估算了变量的重要性。 RFE选择的17个预测因子中有14个是质构度量,证明了空间背景对于预测物种丰富度和多样性的重要性。发现算法之间的差异不显着;但是,GLM模型通常显示出比RF更好的结果。不同卫星传感器获得的预测没有显着差异。但是,最好的模型是使用ASTER获得的(丰富度:R 2 = 0.62和%RMSE = 17.2,多样性:R 2 = 0.71和%RMSE = 20.2,分别通过RF和GLM获得),然后是OLI和MSI。多样性获得的准确性高于丰富度;然而,两者均获得了准确的预测,证明了免费卫星数据在人为泥炭地生态系统中相关群落特征的预测方面的潜力。

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