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首页> 外文期刊>Estuarine Coastal and Shelf Science >Predictive occurrence models for coastal wetland plant communities: Delineating hydrologic response surfaces with multinomial logistic regression
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Predictive occurrence models for coastal wetland plant communities: Delineating hydrologic response surfaces with multinomial logistic regression

机译:沿海湿地植物群落的预测发生模型:用多项逻辑回归描述水文响应面

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Understanding plant community zonation along estuarine stress gradients is critical for effective conservation and restoration of coastal wetland ecosystems. We related the presence of plant community types to estuarine hydrology at 173 sites across coastal Louisiana. Percent relative cover by species was assessed at each site near the end of the growing season in 2008, and hourly water level and salinity were recorded at each site Oct 2007-Sep 2008. Nine plant community types were delineated with k-means clustering, and indicator species were identified for each of the community types with indicator species analysis. An inverse relation between salinity and species diversity was observed. Canonical correspondence analysis (CCA) effectively segregated the sites across ordination space by community type, and indicated that salinity and tidal amplitude were both important drivers of vegetation composition. Multinomial logistic regression (MLR) and Akaike's Information Criterion (AIC) were used to predict the probability of occurrence of the nine vegetation communities as a function of salinity and tidal amplitude, and probability surfaces obtained from the MLR model corroborated the CCA results. The weighted kappa statistic, calculated from the confusion matrix of predicted versus actual community types, was 0.7 and indicated good agreement between observed community types and model predictions. Our results suggest that models based on a few key hydrologic variables can be valuable tools for predicting vegetation community development when restoring and managing coastal wetlands.
机译:了解沿河口应力梯度的植物群落分区对于有效保护和恢复沿海湿地生态系统至关重要。我们将路易斯安那州沿海173个地点的植物群落类型与河口水文学联系起来。在2008年生长季快要结束时,在每个地点评估了物种的相对覆盖率,​​并在2007年10月至2008年9月在每个地点记录了每小时的水位和盐度。使用k均值聚类法描绘了9种植物群落类型,通过指标种类分析为每种群落类型确定了指标种类。盐度与物种多样性之间存在反比关系。典型对应分析(CCA)按群落类型有效隔离了排序空间中的各个地点,并指出盐度和潮汐幅度都是植被组成的重要驱动力。多项逻辑回归(MLR)和Akaike的信息准则(AIC)用于预测9个植被群落的发生概率与盐度和潮汐振幅的函数关系,并且从MLR模型获得的概率面证实了CCA结果。从预测的社区类型与实际的社区类型的混淆矩阵计算得出的加权kappa统计量为0.7,表明观察到的社区类型与模型预测之间具有良好的一致性。我们的结果表明,在恢复和管理沿海湿地时,基于一些关键水文变量的模型可能是预测植被群落发展的有价值的工具。

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