• DocumentCode
    1023810
  • Title

    An adaptive neural network approach to one-week ahead load forecasting

  • Author

    Peng, T.M. ; Hubele, N.E. ; Karady, G.G.

  • Author_Institution
    Pacific Gas & Electr. Co., San Francisco, CA, USA
  • Volume
    8
  • Issue
    3
  • fYear
    1993
  • fDate
    8/1/1993 12:00:00 AM
  • Firstpage
    1195
  • Lastpage
    1203
  • Abstract
    A neural network approach is proposed for one-week ahead load forecasting. This approach uses a linear adaptive neuron or adaptive linear combiner called Adaline. An energy spectrum is used to analyze the periodic components in a load sequence. The load sequence mainly consists of three components: base load component, and low and high frequency load components. Each load component has a unique frequency range. A load decomposition is made for the load sequence using digital filters with different passband frequencies. After load decomposition, each load component can be forecasted by an Adaline. Each Adaline has an input sequence, an output sequence, and a desired response-signal sequence. It also has a set of adjustable parameters called the weight vector. In load forecasting, the weight vector is designed to make the output sequence, the forecasted load, follow the actual load sequence; it also has a minimized least mean square error. This approach is useful in forecasting unit scheduling commitments. Mean absolute percentage errors of less than 3.4% are presented from five months of utility data, thus demonstrating the high degree of accuracy that can be obtained without dependence on weather forecasts
  • Keywords
    load forecasting; neural nets; power system analysis computing; scheduling; Adaline; adaptive linear combiner; adaptive neural network; base load component; digital filters; energy spectrum; high frequency load components; linear adaptive neuron; load sequence; low frequency load component; minimized least mean square error; one-week ahead load forecasting; unit scheduling commitments; Adaptive systems; Digital filters; Frequency; Input variables; Load forecasting; Neural networks; Parameter estimation; Power system modeling; Predictive models; Weather forecasting;
  • fLanguage
    English
  • Journal_Title
    Power Systems, IEEE Transactions on
  • Publisher
    ieee
  • ISSN
    0885-8950
  • Type

    jour

  • DOI
    10.1109/59.260877
  • Filename
    260877