• Title of article

    Calibration of conceptual hydrological models revisited: 2. Improving optimisation and analysis

  • Author/Authors

    Dmitri Kavetski، نويسنده , , George Kuczera، نويسنده , , Stewart W. Franks، نويسنده ,

  • Issue Information
    روزنامه با شماره پیاپی سال 2006
  • Pages
    15
  • From page
    187
  • To page
    201
  • Abstract
    Conceptual hydrological modelling has under-utilised classical parameter analysis techniques (for both optimisation and uncertainty assessment) due to the prohibitively complicated nonsmooth geometry of typical parameter distributions. In the companion paper, a numerically robust model implementation framework was developed, based on stable time stepping schemes and careful threshold smoothing to eliminate the roughness of parameter surfaces. Here, this framework is exploited to enable parameter estimation using powerful and well-established techniques including: (i) Newton-type optimisation and (ii) principal-component-type (Hessian-based) uncertainty analysis. A case study using a representative rainfall-runoff-snow model illustrates the advantages of these previously unavailable methods, contrasting them with slower and less informative current approaches designed for nonsmooth functions. In addition to boosting the computational efficiency, the methods advocated in the paper yield more insight into improved model formulation and parameterisation (e.g., reducing model nonlinearity, detecting ill-conditioning and handling parameter multi-optimality). The impact of extreme model nonlinearity on model and parameter stability is also discussed, focusing on model identification aspects.
  • Keywords
    Parameter uncertainty , ODE optimisation , Model nonlinearity , Parameter calibration and estimation , Model stability , Hessian-covariance analysis , Newton optimisation , Rainfall-runoff-snow models , Least squares methods
  • Journal title
    Journal of Hydrology
  • Serial Year
    2006
  • Journal title
    Journal of Hydrology
  • Record number

    1098816