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Predicting aquatic invasion in Adirondack lakes: a spatial analysis of lake and landscape characteristics

机译:预测阿迪朗达克湖水生生物入侵:湖泊和景观特征的空间分析

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Invasive species continue to pose major challenges for managing coupled human–environmental systems. Predictive tools are essential to maximize invasion monitoring and conservation efforts in regions reliant on abundant freshwater resources to sustain economic welfare, social equity, and ecological services. Past studies have revealed biotic and abiotic heterogeneity, along with human activity, can account for much of the spatial variability of aquatic invaders; however, improvements remain. This study was created to (1) examine the distribution of aquatic invasive species richness ( AISR ) across 126 lakes in the Adirondack Region of New York; (2) develop and compare global and local models between lake and landscape characteristics and AISR ; and (3) use geographically weighted regression ( GWR ) to evaluate non‐stationarity of local relationships, and assess its use for prioritizing lakes at risk to invasion. The evaluation index, AISR , was calculated by summing the following potential aquatic invaders for each lake: Asian Clam (Corbicula fluminea ), Brittle Naiad (Najas minor ), Curly‐leaf Pondweed (Potamogeton crispus ), Eurasian Watermilfoil (Myriophyllum spicatum ), European Frog‐bit (Hydrocharis morsus‐ranae ), Fanwort (Cabomba caroliniana ), Spiny Waterflea (Bythotrephes longimanus ), Variable‐leaf Milfoil (Myriophyllum heterophyllum ), Water Chestnut (Trapa natans ), Yellow Floating Heart (Nymphoides peltata ), and Zebra Mussel (Dreissena polymorpha ). The Getis‐Ord Gi* statistic displayed significant spatial hot and cold spots of AISR across Adirondack lakes. Spearman's rank (ρ) correlation coefficient test (r _(s)) revealed urban land cover composition, lake elevation, relative patch richness, and abundance of game fish were the strongest predictors of aquatic invasion. Five multiple regression global Poisson and GWR models were made, with GWR fitting AISR very well (R ~(2)?=?76–83%). Local pseudo‐t ‐statistics of key explanatory variables were mapped and related to AISR , confirming the importance of GWR for understanding spatial relationships of invasion. The top 20 lakes at risk to future invasion were identified and ranked by summing the five GWR predictive estimates. The results inform that inexpensive and publicly accessible lake and landscape data, typically available from digital repositories within local environmental agencies, can be used to develop predictions of aquatic invasion with remarkable agreement. Ultimately, this transferable modeling approach can improve monitoring and management strategies for slowing the spread of invading species.
机译:入侵物种继续对管理人类环境系统造成重大挑战。预测工具对于最大限度地依靠丰富的淡水资源来维持经济福利,社会公平和生态服务的地区的入侵监测和保护工作至关重要。过去的研究表明,生物和非生物异质性以及人类活动可以解释水生生物入侵者的大部分空间变异性。但是,改进仍然存在。开展这项研究的目的是(1)研究纽约阿迪朗达克地区126个湖泊中水生入侵物种丰富度(AISR)的分布; (2)开发和比较湖泊和景观特征与AISR之间的全球和局部模型; (3)使用地理加权回归(GWR)来评估局部关系的非平稳性,并评估其用于优先考虑有入侵风险的湖泊。通过对每个湖泊的以下潜在水生生物进行累加,得出评估指数AISR:亚洲蛤( Corbicula fluminea),脆性Naiad( Najas minor),卷叶蓬菜( Potamogeton crispus) ,欧亚水母( Myriophyllum spicatum),欧洲蛙科( Hydrocharis morsus-ranae),Fanwort( Cabomba caroliniana),多刺水蚤( Bythotrephes longimanus),可变叶小叶( i> Myriophyllum heterophyllum),菱角( Trapa natans),黄色浮心( Nymphoides peltata)和斑马贻贝( Dreissena polymorpha)。 Getis-Ord Gi *统计数据显示了阿迪朗达克湖中AISR的明显空间热点和冷点。 Spearman秩(ρ)相关系数检验(r_(s))显示,城市土地覆盖物组成,湖泊海拔,相对斑块丰富度和野味鱼类的丰富度是水生生物入侵的最强预测因子。制作了五个多元回归全局Poisson和GWR模型,其中GWR非常适合AISR(R〜(2)?=?76-83%)。映射了关键解释变量的局部伪统计并与AISR相关,从而确认了GWR对于理解入侵空间关系的重要性。通过对五个GWR预测性估计值求和,确定并确定了面临未来入侵风险的前20个湖泊。结果表明,通常可以从地方环境机构内部的数字存储库中获得的廉价且可公开获取的湖泊和景观数据,可以用于达成对水生生物入侵的预测,且具有显着的一致性。最终,这种可转移的建模方法可以改善监视和管理策略,以减缓入侵物种的扩散。

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