Title :
An investigation into using neuro-evolution of Augmenting Topologies (NEAT) for short term load forecasting (STFL)
Author :
Özveren, C.S. ; Sapeluk, A.T. ; Birch, A.
Author_Institution :
Abertay Univ., Dundee, UK
Abstract :
Different ANN architectures using back propagation can forecast the electricity demand at half-hourly intervals for up to 24 hours ahead with various degrees of success that is highly dependent on mainly trial and error heuristic tailoring of the architecture and the various learning parameters to cover the solution space. This paper presents the results of an investigation of an approach in the neuro-evolution technique to the short term electricity forecasting (STFL) problem. This algorithm is called Neuro-Evolution through Augmenting Topologies (NEAT). We have chosen the methodology in the paper to be a simple, generic, adaptive, robust, and easy to implement approach, requiring modest computing resources, for the prediction of the electricity demand.
Keywords :
backpropagation; heuristic programming; load forecasting; neural nets; power engineering computing; ANN architecture heuristic tailoring; back propagation; electricity demand prediction; neuroevolution through augmenting topology; short term electricity demand forecasting; short term load forecasting; ANN; Artificial Neural Networks; Electric Load Forecasting; Forecasting; NEAT; Neuro-Evolution; Neuro-Evolution of Augmenting Topologies; Power Systems; Python; STFL;
Conference_Titel :
Power Engineering Conference (UPEC), 2014 49th International Universities
Conference_Location :
Cluj-Napoca
Print_ISBN :
978-1-4799-6556-4
DOI :
10.1109/UPEC.2014.6934819