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Contemporary Remotely Sensed Data Products Refine Invasive Plants Risk Mapping in Data Poor Regions

机译:当代的遥感数据产品完善了数据贫困地区的入侵植物风险图谱

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Invasive weeds are a serious problem worldwide, threatening biodiversity and damaging economies. Modeling potential distributions of invasive weeds can prioritize locations for monitoring and control efforts, increasing management efficiency. Forecasts of invasion risk at regional to continental scales are enabled by readily available downscaled climate surfaces together with an increasing number of digitized and georeferenced species occurrence records and species distribution modeling techniques. However, predictions at a finer scale and in landscapes with less topographic variation may require predictors that capture biotic processes and local abiotic conditions. Contemporary remote sensing (RS) data can enhance predictions by providing a range of spatial environmental data products at fine scale beyond climatic variables only. In this study, we used the Global Biodiversity Information Facility (GBIF) and empirical maximum entropy (MaxEnt) models to model the potential distributions of 14 invasive plant species across Southeast Asia (SEA), selected from regional and Vietnam’s lists of priority weeds. Spatial environmental variables used to map invasion risk included bioclimatic layers and recent representations of global land cover, vegetation productivity (GPP), and soil properties developed from Earth observation data. Results showed that combining climate and RS data reduced predicted areas of suitable habitat compared with models using climate or RS data only, with no loss in model accuracy. However, contributions of RS variables were relatively limited, in part due to uncertainties in the land cover data. We strongly encourage greater adoption of quantitative remotely sensed estimates of ecosystem structure and function for habitat suitability modeling. Through comprehensive maps of overall predicted area and diversity of invasive species, we found that among lifeforms (herb, shrub, and vine), shrub species have higher potential invasion risk in SEA. Native invasive species, which are often overlooked in weed risk assessment, may be as serious a problem as non-native invasive species. Awareness of invasive weeds and their environmental impacts is still nascent in SEA and information is scarce. Freely available global spatial datasets, not least those provided by Earth observation programs, and the results of studies such as this one provide critical information that enables strategic management of environmental threats such as invasive species.
机译:入侵性杂草在世界范围内是一个严重的问题,威胁着生物多样性并破坏了经济。对入侵性杂草的潜在分布进行建模可以优先确定用于监视和控制工作的位置,从而提高管理效率。随时可用的缩小气候表面以及越来越多的数字化和地理参考物种发生记录以及物种分布建模技术,可以预测区域到大陆范围的入侵风险。但是,在更精细的规模和地形变化较小的景观中进行预测可能需要预测器捕获生物过程和局部非生物条件。当代遥感(RS)数据可以通过提供超出气候变量的精细范围的一系列空间环境数据产品来增强预测。在这项研究中,我们使用了全球生物多样性信息基金(GBIF)和经验最大熵(MaxEnt)模型来建模东南亚(SEA)的14种入侵植物物种的潜在分布,这些物种选自区域和越南的优先杂草列表。用于绘制入侵风险图的空间环境变量包括生物气候层以及全球土地覆盖,植被生产力(GPP)和根据地球观测数据得出的土壤特性的最新表示。结果表明,与仅使用气候或RS数据的模型相比,将气候和RS数据相结合减少了合适栖息地的预测面积,而模型准确性没有损失。但是,RS变量的贡献相对有限,部分原因是土地覆盖数据的不确定性。我们强烈建议为栖息地适宜性建模更多地采用生态系统结构和功能的定量遥感估计。通过总体预测区域和入侵物种多样性的综合地图,我们发现,在生命形式(草本,灌木和藤本植物)中,灌木物种在SEA中具有更高的潜在入侵风险。在杂草风险评估中经常被忽视的本土入侵物种可能与非本土入侵物种一样严重。在东南亚,对侵入性杂草及其环境影响的意识仍处于萌芽状态,而信息却很少。免费提供的全球空间数据集,尤其是由地球观测计划提供的数据集,以及诸如此类的研究结果,提供了关键信息,可以对入侵物种等环境威胁进行战略管理。

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