• Title of article

    DAMP: A protocol for contextualising goodness-of-fit statistics in sediment-discharge data-driven modelling

  • Author/Authors

    Robert J. Abrahart، نويسنده , , Nick J. Mount، نويسنده , , Ngahzaifa Ab Ghani، نويسنده , , Nicholas J. Clifford، نويسنده , , Christian W. Dawson، نويسنده ,

  • Issue Information
    روزنامه با شماره پیاپی سال 2011
  • Pages
    16
  • From page
    596
  • To page
    611
  • Abstract
    The decision sequence which guides the selection of a preferred data-driven modelling solution is usually based solely on statistical assessment of fit to a test dataset, and lacks the incorporation of essential contextual knowledge and understanding included in the evaluation of conventional empirical models. This paper demonstrates how hydrologic insight and knowledge of data quality issues can be better incorporated into the sediment-discharge data-driven model assessment procedure: by the plotting of datasets and modelled relationships; and from an understanding and appreciation of the hydrologic context of the catchment being modelled. DAMP: a four-point protocol for evaluating the hydrologic soundness of data-driven single-input single-output sediment rating curve solutions is presented. The approach is adopted and exemplified in an evaluation of seven explicit sediment-discharge models that are used to predict daily suspended sediment concentration values for a small tropical catchment on the island of Puerto Rico. Four neurocomputing counterparts are compared and contrasted against a set of traditional log–log linear sediment rating curve solutions and a simple linear regression model. The statistical assessment procedure provides one indication of the best model, whilst graphical and hydrologic interpretation of the depicted datasets and models challenge this overly-simplistic interpretation. Traditional log–log sediment rating curves, in terms of soundness and robustness, are found to deliver a superior overall product – irrespective of their poorer global goodness-of-fit statistics.
  • Keywords
    Data-driven model , Suspended sediment , Modelling protocol , Tropical catchment , Hydrologic context , Rating curve
  • Journal title
    Journal of Hydrology
  • Serial Year
    2011
  • Journal title
    Journal of Hydrology
  • Record number

    1102340