Bai Chunmei, Li Yusong
Department of Civil Engineering, University of Nebraska - Lincoln, 362R Whittier Building, 2200 Vine Street, Lincoln, NE 68583, United States.
Department of Civil Engineering, University of Nebraska - Lincoln, 362R Whittier Building, 2200 Vine Street, Lincoln, NE 68583, United States.
J Contam Hydrol. 2014 Aug;164:153-62. doi: 10.1016/j.jconhyd.2014.06.002. Epub 2014 Jun 10.
Accurately predicting the transport of contaminants in the field is subject to multiple sources of uncertainty due to the variability of geological settings, the complexity of field measurements, and the scarcity of data. Such uncertainties can be amplified when modeling some emerging contaminants, such as engineered nanomaterials, when a fundamental understanding of their fate and transport is lacking. Typical field work includes collecting concentration at a certain location for an extended period of time, or measuring the movement of plume for an extended period time, which would result in a time series of observation data. This work presents an effort to evaluate the possibility of applying time series analysis, particularly, autoregressive integrated moving average (ARIMA) models, to forecast contaminant transport and distribution in the subsurface environment. ARIMA modeling was first assessed in terms of its capability to forecast tracer transport at two field sites, which had different levels of heterogeneity. After that, this study evaluated the applicability of ARIMA modeling to predict the transport of engineered nanomaterials at field sites, including field measured data of nanoscale zero valent iron and (nZVI) and numerically generated data for the transport of nano-fullerene aggregates (nC60). This proof-of-concept effort demonstrates the possibility of applying ARIMA to predict the contaminant transport in the subsurface environment. Like many other statistical models, ARIMA modeling is only descriptive and not explanatory. The limitation and the challenge associated with applying ARIMA modeling to contaminant transport in the subsurface are also discussed.
由于地质环境的变异性、现场测量的复杂性以及数据的稀缺性,准确预测污染物在现场的运移存在多种不确定性来源。在对某些新兴污染物(如工程纳米材料)进行建模时,如果对其归宿和运移缺乏基本了解,这些不确定性可能会被放大。典型的现场工作包括在特定位置长时间收集浓度数据,或长时间测量羽流的移动,这将产生一系列观测数据的时间序列。这项工作致力于评估应用时间序列分析,特别是自回归积分移动平均(ARIMA)模型来预测地下环境中污染物运移和分布的可能性。首先,在两个具有不同非均质性水平的现场,根据ARIMA模型预测示踪剂运移的能力对其进行评估。之后,本研究评估了ARIMA模型在现场预测工程纳米材料运移的适用性,包括纳米零价铁(nZVI)的现场测量数据以及纳米富勒烯聚集体(nC60)运移的数值生成数据。这项概念验证工作证明了应用ARIMA模型预测地下环境中污染物运移的可能性。与许多其他统计模型一样,ARIMA建模只是描述性的,而非解释性的。文中还讨论了将ARIMA模型应用于地下污染物运移所存在的局限性和挑战。