Pa. Mastorocostas et al., Fuzzy modeling for short term load forecasting using the orthogonal least squares method, IEEE POW SY, 14(1), 1999, pp. 29-36
A fuzzy modeling method is developed in this paper for short term load fore
casting. According to this method, identification of the premise part and c
onsequent part is separately accomplished via the Orthogonal Least Squares
(OLS) technique. Particularly, the OLS is first employed to partition the i
nput space and determine the number of fuzzy rules and the premise paramete
rs. In the sequel, a second orthogonal estimator determines the input terms
which should be included in the consequent part of each fuzzy rule and cal
culate its parameters. Input selection is automatically performed given an
input candidate set of arbitrary size, formulated by an expert. A satisfact
ory prediction performance is attained as shown in the test results, showin
g the effectiveness of the suggested method.