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Quantifying a stress gradient: An objective approach to variable selection,standardization and weighting in ecosystem assessment

机译:量化压力梯度:生态系统评估中变量选择,标准化和加权的客观方法

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Quantifying relative habitat quality is an important means of ecosystem assessment, and an essential step in the development and validation of indices of biotic integrity (IBI). Variables included in multi-metric IBIs are selected on the basis of their correlation with a human disturbance gradient, and the IBI is tested by examining correlation between IBI scores and rankings on the human disturbance gradient for an independent suite of sites. We present an objective approach to develop a disturbance gradient that ranks sites based on local-level measurements of physical and chemical stress; however, it could equally be applied to GIS-derived data. We measured 52 variables at three types of wetland in Alberta: reference wetlands, oil sands reclamation wetlands exposed to mine tailings, and reclamation wetlands free from tailings contamination. We used the data's correlation structure to select a sub-set of variables that minimized redundancy while retaining sensitivity and interpretability. The optimal sub-set included eight variables: chloride, cation and nitrogen content of water; water and oil content of sediment; water depth and amplitude and Secchi depth/total depth. We combined these eight environmental variables using different combinations of standardization (conversion to a common unit) and weighting schemes to produce six multi-metric stress indices. We evaluated the stress indices on their ability to discriminate among our three wetland types. The indices differed in their sensitivity to stress. Standardization had greater influence on index score than weighting. While all stress indices detected a difference among the three wetland types, only two were able to discriminate between the two classes of reclamation wetlands, both of which used percentile binning to standardize variables. The optimal stress index was standardized by percentile binning and weighted such that water quality, sediment chemistry, physical structure, and the level of tailings contamination were weighted equally. The approach we developed is repeatable and produced a sensitive index of wetland condition that is easily interpreted and relies minimally on best professional judgment. It may be suitable for measuring restoration success or the impact of any anthropogenic disturbance in a variety of ecosystem types.
机译:量化相对栖息地质量是生态系统评估的重要手段,也是开发和验证生物完整性指数(IBI)的必不可少的步骤。基于多度量IBI中与人为干扰梯度的相关性来选择变量,然后通过检查IBI分数与独立站点集上的人为干扰梯度等级之间的相关性来测试IBI。我们提出了一种客观的方法来开发扰动梯度,该扰动梯度根据物理和化学应力的局部水平测量对站点进行排名;但是,它同样可以应用于GIS衍生的数据。我们在艾伯塔省的三种类型的湿地中测量了52个变量:参考湿地,暴露于矿山尾矿的油砂开垦湿地和没有尾矿污染的开垦湿地。我们使用数据的相关性结构来选择变量的子集,该子集可最大程度地减少冗余,同时保留敏感性和可解释性。最佳子集包括八个变量:水中的氯离子,阳离子和氮含量。沉积物的水和油含量;水深和振幅以及塞基深度/总深度。我们使用标准化(转换为通用单位)和加权方案的不同组合来组合这八个环境变量,以产生六个多度量应力指数。我们评估了压力指数对我们区分三种湿地类型的能力。这些指标对压力的敏感性不同。标准化对指数得分的影响比权重更大。尽管所有应力指数都检测出三种湿地类型之间的差异,但只有两种能够区分两类开垦湿地,这两种湿地均使用百分位分箱来标准化变量。最佳应力指数通过百分仓进行标准化,并进行加权,以便对水质,沉积物化学成分,物理结构和尾矿污染水平进行平均加权。我们开发的方法是可重复的,并且产生了湿地状况的敏感指数,该指数易于解释,并且最少依赖最佳专业判断。它可能适用于测量恢复成功或各种生态系统类型中任何人为干扰的影响。

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