Use of Available Daylight to Improve Short-Term Load Forecasting Accuracy
Miguel López *, Sergio Valero, Carlos Sans and Carolina Senabre
Energies  (26 December 2020)
Ed. Forecasting Accuracy. Energies  ISSN:1996-1073  DOI:https://dx.doi.org/10.3390/en14010095  - 14

Abstract:


This paper introduces a new methodology to include daylight information in short-term


load forecasting (STLF) models. The relation between daylight and power consumption is obvious


due to the use of electricity in lighting in general. Nevertheless, very few STLF systems include


this variable as an input. In addition, an analysis of one of the current STLF models at the Spanish


Transmission System Operator (TSO), shows two humps in its error profile, occurring at sunrise


and sunset times. The new methodology includes properly treated daylight information in STLF


models in order to reduce the forecasting error during sunrise and sunset, especially when daylight


savings time (DST) one-hour time shifts occur. This paper describes the raw information and the


linearization method needed. The forecasting model used as the benchmark is currently used at


the TSO’s headquarters and it uses both autoregressive (AR) and neural network (NN) components.


The method has been designed with data from the Spanish electric system from 2011 to 2017 and


tested over 2018 data. The results include a justification to use the proposed linearization over other


techniques as well as a thorough analysis of the forecast results yielding an error reduction in sunset


hours from 1.56% to 1.38% for the AR model and from 1.37% to 1.30% for the combined forecast.


In addition, during the weeks in which DST shifts are implemented, sunset error drops from 2.53%


to 2.09%.