A hybrid approach utilizing a fuzzy system and artificial neural network fo
r bus load forecasting is proposed in this paper. This approach models the
behavior of load on those areas where it is primarily a function of tempera
ture. Load sequences were broken down into a non-weather sensitive, normal
load sequence and a pure weather sensitive load sequence.
It has been shown that normal load has a stationary characteristic and can
be modeled by back propagation neural networks. The weather sensitive load
has been modeled by a set of three fuzzy logic systems trained by least squ
are estimation of an optimal fuzzy basis function coefficient.
The model was tested with 1994 historical data from the town of Hinton,West
Virgina (part of the Appalachian Power Company). The results show an avera
ge MAPE (mean absolute percentage error) of 2%! which is comparable with sy
stem load forecasting methods reported in the literature.