: a novel hybrid quasi-fuzzy artificial neural network (ANN) model for estimation of reference evapotranspiration.

Journal: PeerJ
Published Date:

Abstract

Reference evapotranspiration ( ) is a significant parameter for efficient irrigation scheduling and groundwater conservation. Different machine learning models have been designed for estimation for specific combinations of available meteorological parameters. However, no single model has been suggested so far that can handle diverse combinations of available meteorological parameters for the estimation of . This article suggests a novel architecture of an improved hybrid quasi-fuzzy artificial neural network (ANN) model () for this purpose. yielded superior results when compared with the other three popular models, decision trees, artificial neural networks, and adaptive neuro-fuzzy inference systems, irrespective of study locations and the combinations of input parameters. For real-field case studies, it was applied in the groundwater-stressed area of the Terai agro-climatic region of North Bengal, India, and trained and tested with the daily meteorological data available from the National Centres for Environmental Prediction from 2000 to 2014. The precision of the model was compared with the standard Penman-Monteith model (FAO56PM). Empirical results depicted that the model performances remarkably varied under different data-limited situations. When the complete set of input parameters was available, resulted in the best values of coefficient of determination ( = 0.988), degree of agreement ( = 0.997), root mean square error ( = 0.183), and root mean square relative error ( = 0.034).

Authors

  • Gouravmoy Banerjee
    Department of Computer Science, Ananda Chandra College, Jalpaiguri, West Bengal, India.
  • Uditendu Sarkar
    National Informatics Centre, Ministry of Electronics & Information Technology, Government of India, Kolkata, West Bengal, India.
  • Sanway Sarkar
    Ernst & Young LLP, Bengaluru, Karnataka, India.
  • Indrajit Ghosh
    Department of Computer Science, Ananda Chandra College, Jalpaiguri, West Bengal, India.