An Approach for Selecting a Model for the Assessment of Potentially Contaminated Sites

Research output: Contribution to journalResearch articleContributedpeer-review

Contributors

Abstract

Assessment of potentially contaminated sites (PCS) can be expensive; hence, simple and less demanding methods and models are required. This work attempts to provide an approach that can aid in selecting the most appropriate model for the PCS. The developed method uses over 100 field site data to evaluate four test models (analytical/empirical) that provide the maximum plume length (L-max), which is used as a principal model ranking quantity in this work. Analysis of site data shows that field plume length (L-f) follows a log-normal distribution. Subsequently, L-max is delineated with respect to L-f using a threshold probability as underestimating, overestimating, and overly-overestimating. Akaike information criterion (AIC) and analytical hierarchy process (AHP) are considered to support the threshold approach results. The classical AIC is modified (to AIC(mod)) to fit the term represented by the difference between L-f and L-max. Additionally, the threshold factors as a product of subjective weights are added to the AIC(mod). Using L-f and L-max, the AIC(mod) provides a distinct ranking of the test models. For the AHP approach, the goodness of fit, underestimation, overly overestimation, and model complexity are the four chosen criteria. Similar to AIC(mod), the AHP approach provides a distinct ranking of the test models. The final decision on the best fitting model can be made on user criteria following the scheme developed in this work.

Details

Original languageEnglish
Pages (from-to)757-773
Number of pages17
JournalGroundwater
Volume60
Issue number6
Publication statusPublished - 24 Apr 2022
Peer-reviewedYes

External IDs

PubMed 35462424
WOS 000799371100001
Mendeley 645a5be8-0000-3281-96da-4ed0da6895ed

Keywords