Abstract:
Due to inaccurate demand forecasts in Sri Lanka, especially during the peak times,
the authorities use high cost electricity generation options needlessly. This causes a
considerable economic loss, which can be avoided with accurate forecasts. To address
this national issue, this research developed a short term load forecasting system with
high accuracies and named it as “Two Level Neuro-Functional Load Forecasted.
Thus, this method could facilitate the decision making process of the Ceylon Electricity
Board when scheduling and managing available electricity generation options for the
next day. Accuracy levels were high, even with scares data. This method is generalized
and can be customized to suit other applicable contexts.
The hourly electricity demand from 2008 - 2012 was considered for this research.
Through a comprehensive cluster analysis process, similar day types were identified as
clusters, where the results obtained were used in making the forecast more accurate as
well as to make the training processes more efficient. Literature revealed that
temperature is highly correlated with electricity demand and it was decided to
incorporate temperature to the models to capture weather sensitive load. To address the
scarcity of the hourly temperature data, a novel methodology named as “MinMax Cos-
LEA estimation” was implemented to estimate hourly temperature readings using daily
maximum and minimum temperatures. This method outperformed the existing methods
in the literature for the Sri Lankan context which is a significant contribution of this
research. This method was further improved with the inclusion of the influential
variable rainfall, and was named as “RATE' (Rainfall Adjusted Temperature
Estimation). No published work was found incorporating influential factors, when
estimating hourly temperatures. A general methodology named as “MinMax Curve
Estimation” has also been presented to customize and used in other similar
applications.
The final load predictive model, Two Level Neuro-Functional Load Forecaster, is
a novel hybrid model, combining functional principal component regression approach
with a neural network approach using data at daily and hourly levels. This model is
capable of accommodating more recent data, with a moving window, bringing a
dynamism to the model. The novelty of the model is due to its unique combination of
a statistical and a neural network approach and its dynamism. When forecasting
electricity demand of the next day, temperature values required were forecasted using
a neural network