...
首页> 外文期刊>Water resources research >Backward probability model using multiple observations of contamination to identify groundwater contamination sources at the Massachusetts Military Reservation
【24h】

Backward probability model using multiple observations of contamination to identify groundwater contamination sources at the Massachusetts Military Reservation

机译:后向概率模型使用对污染的多次观测来确定马萨诸塞州军事保留区的地下水污染源

获取原文
获取原文并翻译 | 示例
           

摘要

Backward location and travel time probability density functions characterize the possible former locations (or the source location) of contamination that is observed in an aquifer. For an observed contaminant particle the backward location probability density function (PDF) describes its position at a fixed time prior to sampling, and the backward travel time probability density function describes the amount of time required for the particle to travel to the sampling location from a fixed upgradient position. The backward probability model has been developed for a single observation of contamination (e.g., Neupauer and Wilson, 1999). In practical situations, contamination is sampled at multiple locations and times, and these additional data provide information that can be used to better characterize the former position of contamination. Through Bayes' theorem we combine the individual PDFs for each observation to obtain a PDF for multiple observations that describes the possible source locations or release times of all observed contaminant particles, assuming they originated from the same instantaneous point source. We show that the multiple-observation probability density function is the normalized product of the single-observation PDFs. The additional information available from multiple observations reduces the variances of the source location and travel time probability density functions and improves the characterization of the contamination source. We apply the backward probability model to a trichloroethylene (TCE) plume at the Massachusetts Military Reservation (MMR). We use four TCE samples distributed throughout the plume to obtain single-observation and multiple-observation location and travel time PDFs in three dimensions. These PDFs provide information about the possible sources of contamination. Under assumptions that the existing MMR model is properly calibrated and the conceptual model is correct the results confirm the two suspected sources of contamination and reveal that one or more additional sources is likely.
机译:向后的位置和行进时间概率密度函数描述了在含水层中观察到的污染的可能的先前位置(或源位置)。对于观察到的污染物颗粒,后向位置概率密度函数(PDF)描述了采样之前固定时间的位置,而后向移动时间概率密度函数描述了粒子从采样点移动到采样位置所需的时间量。固定的升级位置。已经建立了向后概率模型来对污染进行单一观察(例如,Neupauer和Wilson,1999)。在实际情况下,在多个位置和多个时间对污染物进行采样,这些附加数据提供了可用于更好地表征先前污染位置的信息。通过贝叶斯定理,我们将每个观察值的单个PDF组合在一起,以获取用于多个观察值的PDF,这些PDF描述了所有观察到的污染物颗粒的可能源位置或释放时间(假定它们源自同一瞬时点源)。我们表明,多次观测概率密度函数是单次观测PDF的归一化乘积。可从多个观测获得的附加信息减少了污染源位置和传播时间概率密度函数的方差,并改善了污染源的特性。我们将后向概率模型应用于马萨诸塞州军事保留区(MMR)的三氯乙烯(TCE)羽流。我们使用分布在整个羽流中的四个TCE样本来获得三维的单观测和多观测位置以及传播时间PDF。这些PDF提供有关可能的污染源的信息。在假设现有MMR模型已正确校准且概念模型正确的前提下,结果确认了两个可疑污染源,并揭示了一个或多个其他污染源的可能性。

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