Resumen
Electricity price data is often non-linear and highly
volatile. Under a weather and climate disaster event, price forecasting
represents a challenging task. Noise in electricity price
data is commonly affected by several factors such as season, weekend
or workday, critical event, etc. In this study, the proposed
model uses a de-noised wavelet as a pre-processing algorithm to
reduce price noise characteristics and a Non-linear Auto-Regression
eXogenous (NARX) Neural Network (NN) for the data analytic
approach. To test price forecasting, a seasonal week-ahead
(168 hrs.) window is used. The forecasting models are evaluated
using the Mean Absolute Percentage Error (MAPE). The model
and methodology proposed show a remarkable improvement over
standard methodologies, complemented by data visualization.