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首页> 外文期刊>Ecological indicators >Making choices that matter - Use of statistical regularization in species distribution modelling for identification of climatic indicators - A case study with Mikania micrantha Kunth in India
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Making choices that matter - Use of statistical regularization in species distribution modelling for identification of climatic indicators - A case study with Mikania micrantha Kunth in India

机译:做出重要的选择-在物种分布模型中使用统计正则化识别气候指标-以印度的薇甘菊(Mikania micrantha Kunth)为例

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Biological invasions by alien non-indigenous species are one of the major problems of the present era which impose massive environmental and socio-economic costs. In India about 40% of the floral species have long been recognized to be aliens, but the need for priority conservation efforts has only been felt since the turn of the century. Thus, it is now of utmost importance to predict the potential distribution of invasive alien species and identify suitable environmental conditions that allow the species to spread rapidly.The invasive plant Mikania micrantha was chosen as the test species. Native occurrence records (longitude and latitude) were obtained from the Global Biodiversity Information Facility (GBIF). For Indian occurrences, GBIF records were supplemented with occurrences from herbaria label data and information gathered from published literature. Nineteen climatic variables were obtained from World-Clim datable.To predict the potential distribution, species distribution models (SDMs) were built by using logistic regression and the climatic variables were chosen by using two cross-validated regularization methods induced by least absolute shrinkage and selection operator (lasso) and the ridge penalty function. This approach has twofold benefits; it deals with the multicollinearity problem efficiently and selects the raw environmental covariates. F-j3-score was utilized to measure the models' performance. Combining the data from both native and alien ranges, seven environmental predictors were selected using four different background choices. Using lasso penalty, mean diurnal range (mean of monthly (max temp min temp)) (BIO2), Isothermality (BIO2/BIO7) (x 100) (BIO3), Temperature Annual Range (BIOS-BIO6) (BIO7), Precipitation of Wettest Month (BIO13), Precipitation Seasonality (Coefficient of Variation) (BIO15) and Precipitation of Warmest Quarter (BIO18) were found to be strong correlates for all four backgrounds. The predicted probabilities from the model containing these seven selected variables, demonstrated higher invasion risk in the central part of India than the model containing all the predictors.Accurate analysis of present distributions and effective predictive modelling of future distributions of invasive alien species is of vital importance for the early detection of the invasion and rapid remedial actions downstream. This study may aid in the adoption of management initiatives like early detection and rapid response. This could result in identifying both new populations and established populations to be prioritized for management.
机译:外来非土著物种的生物入侵是当今时代的主要问题之一,这带来了巨大的环境和社会经济代价。在印度,大约40%的花卉物种早就被认为是外来物种,但是直到本世纪初,才意识到需要优先进行保护。因此,目前最重要的是预测外来入侵物种的潜在分布,并确定合适的环境条件以使该物种迅速传播。选择入侵植物薇甘菊(Mikania micrantha)作为试验物种。本地发生记录(经度和纬度)是从全球生物多样性信息机构(GBIF)获得的。对于印度发生的事件,GBIF记录补充了来自草本植物标签数据和从公开文献中收集的信息的事件。从World-Clim数据库获得19个气候变量,为预测潜在分布,通过Logistic回归建立物种分布模型(SDM),并使用两种由最小绝对收缩和选择引起的交叉验证正则化方法选择气候变量运算符(套索)和岭罚函数。这种方法有双重好处。它有效地处理了多重共线性问题,并选择了原始的环境协变量。 F-j3分数用于衡量模型的性能。结合本地和外来范围的数据,使用四个不同的背景选择选择了七个环境预测因子。使用套索罚分,平均日范围(每月的平均值(最高温度,最低温度))(BIO2),等温(BIO2 / BIO7)(x 100)(BIO3),温度年度范围(BIOS-BIO6)(BIO7),降水湿润月份(BIO13),降水季节(变异系数)(BIO15)和最暖季降水(BIO18)与这四个背景都有很强的相关性。包含这七个选定变量的模型的预测概率表明,与包含所有预测变量的模型相比,印度中部的入侵风险更高。准确分析当前分布以及对入侵外来物种的未来分布进行有效的预测建模至关重要以便及早发现入侵并迅速采取下游补救措施。这项研究可能有助于采用管理措施,例如及早发现和快速响应。这可能导致同时确定要优先管理的新种群和既定种群。

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