Validation and sensitivity of the FINE Bayesian network for forecasting aquatic exposure to nano-silver

TitleValidation and sensitivity of the FINE Bayesian network for forecasting aquatic exposure to nano-silver
Publication TypeJournal Article
Year of Publication2014
AuthorsMoney, ES, Barton, LE, Dawson, J, Reckhow, KH, Wiesner, MR
JournalScience of The Total Environment
Volume473-474
Pagination685 - 691
Date Published03/2014
ISSN00489697
Abstract

The adaptive nature of the Forecasting the Impacts of Nanomaterials in the Environment (FINE) Bayesian network is explored. We create an updated FINE model (FINEAgNP-2) for predicting aquatic exposure concentrations of silver nanoparticles (AgNP) by combining the expert-based parameters from the baseline model established in previous work with literature data related to particle behavior, exposure, and nano-ecotoxicology via parameter learning. We validate the AgNP forecast from the updated model using mesocosm-scale field data and determine the sensitivity of several key variables to changes in environmental conditions, particle characteristics, and particle fate. Results show that the prediction accuracy of the FINEAgNP-2 model increased approximately 70% over the baseline model, with an error rate of only 20%, suggesting that FINE is a reliable tool to predict aquatic concentrations of nano-silver. Sensitivity analysis suggests that fractal dimension, particle diameter, conductivity, time, and particle fate have the most influence on aquatic exposure given the current knowledge; however, numerous knowledge gaps can be identified to suggest further research efforts that will reduce the uncertainty in subsequent exposure and risk forecasts.

DOI10.1016/j.scitotenv.2013.12.100
Short TitleScience of The Total Environment