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首页> 外文期刊>The Science of the Total Environment >Predicting risk of trace element pollution from municipal roads using site-specific soil samples and remotely sensed data
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Predicting risk of trace element pollution from municipal roads using site-specific soil samples and remotely sensed data

机译:使用特定地点的土壤样本和遥感数据预测市政道路中微量元素污染的风险

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Studies of environmental processes exhibit spatial variation within data sets. The ability to derive predictions of risk from field data is a critical path forward in understanding the data and applying the information to land and resource management. Thanks to recent advances in predictive modeling, open source software, and computing, the power to do this is within grasp. This article provides an example of how we predicted relative trace element pollution risk from roads across a region by combining site specific trace element data in soils with regional land cover and planning information in a predictive model framework. In the Kenai Peninsula of Alaska, we sampled 36 sites (191 soil samples) adjacent to roads for trace elements. We then combined this site specific data with freely-available land cover and urban planning data to derive a predictive model of landscape scale environmental risk. We used six different model algorithms to analyze the dataset, comparing these in terms of their predictive abilities and the variables identified as important. Based on comparable predictive abilities (mean R2from 30 to 35% and mean root mean square error from 65 to 68%), we averaged all six model outputs to predict relative levels of trace element deposition in soils—given the road surface, traffic volume, sample distance from the road, land cover category, and impervious surface percentage. Mapped predictions of environmental risk from toxic trace element pollution can show land managers and transportation planners where to prioritize road renewal or maintenance by each road segment's relative environmental and human health risk.
机译:对环境过程的研究显示出数据集内的空间变化。从现场数据得出风险预测的能力是理解数据并将信息应用于土地和资源管理的重要途径。得益于预测建模,开放源代码软件和计算领域的最新进展,执行此操作的能力已得到掌握。本文提供了一个示例,说明如何通过将土壤中特定地点的痕量元素数据与区域土地覆盖率相结合,并在预测模型框架中规划信息,来预测整个区域道路中相对微量元素的污染风险。在阿拉斯加的基奈半岛,我们对道路附近的36个地点(191个土壤样本)进行了采样,以获取微量元素。然后,我们将特定于站点的数据与可免费获得的土地覆盖率和城市规划数据相结合,以得出景观规模环境风险的预测模型。我们使用了六种不同的模型算法来分析数据集,并根据其预测能力和确定为重要的变量进行比较。基于可比较的预测能力(R2平均值为30%至35%,均方根均方根误差为65%至68%),我们对所有六个模型输出进行了平均,以预测土壤中微量元素的相对含量-给出路面,交通流量,与道路的距离,土地覆盖类别和不透水的表面百分比。对有毒微量元素污染造成的环境风险的映射预测可以向土地管理人员和运输规划人员显示,应根据每个路段的相对环境和人类健康风险来优先进行道路更新或维护。

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