首页> 外文期刊>Hydrogeology journal >Optimal characterization of pollutant sources in contaminated aquifers by integrating sequential-monitoring-network design and source identification: methodology and an application in Australia
【24h】

Optimal characterization of pollutant sources in contaminated aquifers by integrating sequential-monitoring-network design and source identification: methodology and an application in Australia

机译:通过结合顺序监测网络设计和污染源识别,对受污染含水层中污染物源进行最佳表征:方法学和在澳大利亚的应用

获取原文
获取原文并翻译 | 示例
       

摘要

Often, when pollution is first detected in groundwater, very few spatiotemporal pollutant concentration measurements are available. The contaminant concentration measurement data initially available are generally sparse and insufficient for accurate source characterization. This requires development of a contaminant monitoring plan and its field implementation to collect more data. The location of scientifically chosen monitoring points and the number of measurements are important considerations in improving the source-characterization process, especially in a complex contamination scenario. In order to improve the efficiency of source characterization, a feedback-based methodology is implemented, integrating sequential-monitoring-network design and a source identification method. The simulated annealing (SA) optimization algorithm is used to solve the models for optimal source identification and the monitoring-network-design optimization. This sequence is repeated a few times to improve the accuracy of source characterization. The methodology is based on the premise that concentration measurements from a sequence of implemented monitoring networks provide feedback information on the actual concentration in the site. This additional information, obtained as feedback from monitoring networks designed and implemented based on intermediate source characterization, can result in sequential improvement in the resulting source characterization. The performance of this methodology is evaluated by application to a contaminated aquifer site in New South Wales, Australia, where source location, source-activity initiation time and source-flux (mass per unit time) release history are considered as unknown variables. The performance evaluation results demonstrate potential applicability of the proposed sequential methodology.
机译:通常,当首次在地下水中检测到污染时,很少有时空污染物浓度测量值。最初可获得的污染物浓度测量数据通常很少,并且不足以进行准确的源表征。这就需要制定污染物监测计划并在现场实施以收集更多数据。科学选择的监测点的位置和测量数量是改善源表征过程的重要考虑因素,尤其是在复杂的污染情况下。为了提高信源表征的效率,实现了一种基于反馈的方法,将顺序监视网络设计和信源识别方法相结合。模拟退火(SA)优化算法用于求解模型,以进行最佳源识别和监视网络设计优化。重复此序列几次以提高源表征的准确性。该方法基于以下前提:来自一系列已实施的监控网络的浓度测量值可提供有关现场实际浓度的反馈信息。从基于中间源特性设计和实施的监视网络获得的反馈信息中获得的这些附加信息,可以导致所得源特性的顺序改进。该方法的性能通过应用于澳大利亚新南威尔士州受污染的含水层站点进行评估,在该站点中,源位置,源活动起始时间和源通量(单位时间质量)释放历史被视为未知变量。性能评估结果证明了所提出的顺序方法的潜在适用性。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号