Risk-based water quality decision-making under small data using Bayesian network  被引量:3

Risk-based water quality decision-making under small data using Bayesian network

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作  者:张庆庆 许月萍 田烨 张徐杰 

机构地区:[1]Institute of Hydrology and Water Resources,Civil Engineering,Zhejiang University

出  处:《Journal of Central South University》2012年第11期3215-3224,共10页中南大学学报(英文版)

基  金:Project(50809058)supported by the National Natural Science Foundation of China

摘  要:A knowledge-based network for Section Yidong Bridge,Dongyang River,one tributary of Qiantang River,Zhejiang Province,China,is established in order to model water quality in areas under small data.Then,based on normal transformation of variables with routine monitoring data and normal assumption of variables without routine monitoring data,a conditional linear Gaussian Bayesian network is constructed.A "two-constraint selection" procedure is proposed to estimate potential parameter values under small data.Among all potential parameter values,the ones that are most probable are selected as the "representatives".Finally,the risks of pollutant concentration exceeding national water quality standards are calculated and pollution reduction decisions for decision-making reference are proposed.The final results show that conditional linear Gaussian Bayesian network and "two-constraint selection" procedure are very useful in evaluating risks when there is limited data and can help managers to make sound decisions under small data.A knowledge-based network for Section Yidong Bridge, Dongyang River, one tributary of Qiantang River, Zhejiang Province, China, is established in order to model water quality in areas under small data. Then, based on normal transformation of variables with routine monitoring data and normal assumption of variables without routine monitoring data, a conditional linear Gaussian Bayesian network is constructed. A "two-constraint selection" procedure is proposed to estimate potential parameter values under small data. Among all potential parameter values, the ones that are most probable are selected as the "representatives". Finally, the risks of pollutant concentration exceeding national water quality standards are calculated and pollution reduction decisions for decision-making reference are proposed. The final results show that conditional linear Gaussian Bayesian network and "two-constraint selection" procedure are very useful in evaluating risks when there is limited data and can help managers to make sound decisions under small data.

关 键 词:water quality risk pollution reduction decisions Bayesian network conditional linear Gaussian Model small data 

分 类 号:X832[环境科学与工程—环境工程]

 

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