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Predicting recreational water quality advisories: A comparison of statistical methods

January 4, 2016

Epidemiological studies indicate that fecal indicator bacteria (FIB) in beach water are associated with illnesses among people having contact with the water. In order to mitigate public health impacts, many beaches are posted with an advisory when the concentration of FIB exceeds a beach action value. The most commonly used method of measuring FIB concentration takes 18–24 h before returning a result. In order to avoid the 24 h lag, it has become common to ”nowcast” the FIB concentration using statistical regressions on environmental surrogate variables. Most commonly, nowcast models are estimated using ordinary least squares regression, but other regression methods from the statistical and machine learning literature are sometimes used. This study compares 14 regression methods across 7 Wisconsin beaches to identify which consistently produces the most accurate predictions. A random forest model is identified as the most accurate, followed by multiple regression fit using the adaptive LASSO.

Publication Year 2016
Title Predicting recreational water quality advisories: A comparison of statistical methods
DOI 10.1016/j.envsoft.2015.10.012
Authors Wesley R. Brooks, Steven R. Corsi, Michael N. Fienen, Rebecca B. Carvin
Publication Type Article
Publication Subtype Journal Article
Series Title Environmental Modelling and Software
Index ID 70160875
Record Source USGS Publications Warehouse
USGS Organization Wisconsin Water Science Center