• AWWA JAW53268
Provide PDF Format

Learn More

AWWA JAW53268

  • Journal AWWA - Using Neural Networks to Predict Peak Cryptosporidium Concentrations
  • Journal Article by American Water Works Association, 01/01/2001
  • Publisher: AWWA

$15.00$30.00


Neural network modeling was used to examine the relationships between multipleinterrelated water quality and quantity parameters at the intake to a water treatment facility located on the Delaware River. The relationships were used to train a neural network model to predict peak concentrations of Cryptosporidium oocysts at the intake of a New Jersey water treatment facility. Input parameters to the model were selected based on their correlation with oocyst concentrations and stepwise evaluation of neural network training. The final trained neural network model predicted two conditions of input Cryptosporidium concentrations,background and above background (assigned as 1 and 0, respectively), from eight other water quality parameters. Clostridium perfringens concentrations were the most significant input parameter in predicting the final model's performance. Turbidity was the least significant parameter. Furthermore, a site-specific, linear relationship between the numbers of full oocysts and the total number of oocysts recovered by the Information Collection Rule method at the water treatment plant intake was noted (full oocysts = 0.595 x total oocysts, R2 = 0.9011). Includes 15 references, tables, figures.

Related Products

AWWA WQTC65928

AWWA WQTC65928

Low Cost Ceramic Membrane Filtration for Application in Developing Countries: The Ceramic Silver-Imp..

$12.00 $24.00

AWWA WQTC71420

AWWA WQTC71420

Characterization of a Highly Fouling Fraction of Algogenic Organic Matter in Low- and High-Pressure ..

$12.00 $24.00

AWWA ACE94085

AWWA ACE94085

Well Head Protection - A Cost Effective Way of Protecting Our Ground Water Resources..

$12.00 $24.00

AWWA JAW34118

AWWA JAW34118

Journal AWWA - An Analysis of Low-Level Turbidity Measurements..

$15.00 $30.00