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Electrical Load Forecasting using Back Propagation in Artificial Neural Networks.

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Figure

Fig. 1:  Block diagram for training using  Levenberg–Marquardt algorithm  The  following  table  depicts  the  comparison of three algorithms:
Fig. 3: (a) db-10 Wavelet (b) Sinewave  What mother wavelet does is that for high  frequency  components  the  time  durations  could  be  short  whereas  for  low  frequency  additives  time  durations  would  be  longer
Fig. 5: Wavelet Decomposition Tree  A  significant  potential  problem  with  the  DWT  is  that  it  is  a  shift  version  remodel
Fig. 8: Comparison between the predicted  and actual load employing the proposed
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