• Corpus ID: 15111502

Development of a neural network model for dissolved oxygen in seawater

@article{Palani2009DevelopmentOA,
  title={Development of a neural network model for dissolved oxygen in seawater},
  author={Sundarambal Palani and Shie-Yui Liong and Pavel Tkalich and Jegathambal Palanichamy},
  journal={Indian Journal of Marine Sciences},
  year={2009},
  volume={38},
  pages={151-159}
}
Present paper consists the results from a study conducted to test the adequacy of artificial neural networks in modelling of dissolved oxygen (DO) in seawater. The input variables for ANN DO models are selected by statistical analysis. The ranking of important inputs and their mode of action on the output DO are obtained based on the expert’s opinion. The calibrated neural network models predict the DO concentration with satisfactory accuracy, producing high correlations between measured and… 

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