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首页> 外文期刊>Journal of Environmental Management >Conceptual Bayesian networks for contaminated site ecological risk assessment and remediation support
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Conceptual Bayesian networks for contaminated site ecological risk assessment and remediation support

机译:概念性贝叶斯网络污染网站生态风险评估和修复支持

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摘要

The causal pathways of stressors that lead to impacts on individuals, populations, and communities of organisms are useful to know for designing alternatives that manage or remediate ecological risks. The ecological risk assessment (ERA) framework (USEPA, 1998b) can help to identify and prioritize management of risks. One key product of the problem formulation step in an ERA, that captures and represents causal knowledge, is the conceptual site model (CSM). The CSM is a graphical depiction of the risk environment that traces the fate and transport pathways of contaminants from sources of contamination (e.g., a leaking storage tank) to receptors (i. e., the ecological endpoints of concern in the risk assessment). The CSM guides the development of methods for assessing ecological risk scenarios and for remediation design alternatives. The qualitative and quantitative aspects of Bayesian networks may support CSM development and risk characterization. Bayesian networks provide a graphical platform geared toward probabilistic modeling making them important candidates for calculating risks in environmental assessments. The diagrammatic representation of causal Bayesian networks (i. e., the directed acyclic graphs) also adds explanatory depth for developing the evidence-base for risk characterization and remediation interventions. We call these qualitative graphs conceptual Bayesian networks (CBNs). The components of CBNs can be used to represent the variables and relationships between sources of contamination, media transfer, bioaccumulation, and risk. The connections help to compose, piece together, and explore hypothesized relationships that bring about high-risk scenarios. Causal pathway analysis of the CBNs provides visualizations of exposure pathways from initial and intermediate sources to receptors. Remediation options that would interrupt or stop the transport of contaminants to ecological receptors can then be identified. Even if the CBN is not quantified, the structures can support mechanistic and statistical designs for exposure and effects analysis and risk characterization and evaluate information needs for resolving uncertainties. This paper will examine these and other unexplored benefits of CBNs to assessment and management of contaminated sites.
机译:导致对人群,人群和生物体社区影响的压力渠道的因果途径可用于了解制定管理或修复生态风险的替代方案。生态风险评估(ERA)框架(USEPA,1998B)可以帮助识别和优先考虑风险管理。问题的一个关键产品在时代中的一个关键产品,捕获和代表因果知识,是概念网站模型(CSM)。 CSM是风险环境的图形描绘,其追踪来自污染污染物(例如,泄漏储罐)到受体的污染物的命运和运输途径(I. e。,风险评估中关注的生态终点)。 CSM指导开发用于评估生态风险情景和修复设计替代品的方法。贝叶斯网络的定性和量化方面可以支持CSM发展和风险特征。贝叶斯网络提供了一个图形平台,用于概率建模,使其成为计算环境评估中风险的重要候选者。因果贝叶斯网络的图解表示(即,指导的非循环图)也增加了开发风险表征和修复干预措施的证据基础的解释性深度。我们称这些定性图概念贝叶斯网络(CBNS)。 CBN的组件可用于表示污染源之间的变量和关系,介质转移,生物累积和风险之间的变量和关系。连接有助于撰写,拼凑,并探索带来高风险场景的假设关系。 CBN的因果途径分析提供了从初始和中间源到受体的暴露途径的可视化。可以识别将中断或停止将污染物传输到生态受体的修复选择。即使没有量化CBN,结构也可以支持机械和统计设计,用于暴露和效果分析和风险特征,并评估解决不确定性的信息需求。本文将研究CBN的这些和其他未开发的福利,以评估和管理受污染的地点。

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