Uncertainty in Predicting the Rate of Mass Removal Created by Soil Vapor Extraction Systems

D. Barnes, D. McWhorter
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引用次数: 3

Abstract

Recently, several soil gas flow and vapor transport numerical models have been developed for use in designing soil vapor extraction (SVE) systems. This article examines how uncertainties in soil properties, specifically permeability, corresponds to uncertainties in the prediction of mass removal rates by numerical models. Scaling equations were first derived for both relevant geometric and nongeometric modeling parameters to enable the examination of the impact of uncertainties associated with spatial variations in soil properties on the prediction of mass removal rates in a somewhat general manner. Monte Carlo analyses of volatile organic compound removal from a hypothetical contaminated soil by SVE were then used to investigate the effect of system operation time and permeability variance on the uncertainty in mass removal rates as predicted by a numerical model. Results showed that uncertainty in the predicted mass removal rate increases as both mass removal increases and as the assumed permeability variance increases. These results indicate that the design of SVE system using deterministic modeling methods may not always correlate to an effective SVE system.
预测土壤蒸汽萃取系统产生的质量去除率的不确定性
近年来,建立了几种土壤气体流动和蒸汽输运数值模型,用于设计土壤蒸汽抽提系统。本文研究了土壤性质的不确定性,特别是渗透性,如何对应于数值模型预测质量去除率的不确定性。首先推导了相关几何和非几何建模参数的标度方程,以便以某种一般的方式检查与土壤性质空间变化相关的不确定性对质量去除率预测的影响。通过蒙特卡罗分析,研究了系统运行时间和渗透率变化对数值模型预测的质量去除率不确定性的影响。结果表明,预测质量去除率的不确定性随着质量去除率的增加和假设渗透率方差的增加而增加。这些结果表明,采用确定性建模方法设计的SVE系统可能并不总是与有效的SVE系统相关。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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