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Construction of neural network-based prediction intervals for short-term electrical load forecasting

conference contribution
posted on 2013-01-01, 00:00 authored by H Quan, D Srinivasan, Abbas KhosraviAbbas Khosravi, Saeid Nahavandi, Douglas CreightonDouglas Creighton
Short-term load forecasting (STLF) is of great importance for control and scheduling of electrical power systems. The uncertainty of power systems increases due to the random nature of climate and the penetration of the renewable energies such as wind and solar power. Traditional methods for generating point forecasts of load demands cannot properly handle uncertainties in datasets. To quantify these potential uncertainties associated with forecasts, this paper implements a neural network (NN)-based method for construction of prediction intervals (PIs). A newly proposed method, called lower upper bound estimation (LUBE), is applied to develop PIs using NN models. The primary multi-objective problem is firstly transformed into a constrained single-objective problem. This new problem formulation is closer to the original problem and has fewer parameters than the cost function. Particle swarm optimization (PSO) integrated with the mutation operator is used to solve the problem. Two case studies from Singapore and New South Wales (Australia) historical load datasets are used to validate the PSO-based LUBE method. Demonstrated results show that the proposed method can construct high quality PIs for load forecasting applications.

History

Event

IEEE Computational Intelligence Applications in Smart Grid (2013 : Singapore)

Pagination

66 - 72

Publisher

IEEE

Location

Singapore

Place of publication

Piscataway, N. J.

Start date

2013-04-16

End date

2013-04-19

ISBN-13

9781467360029

ISBN-10

1467360023

Language

eng

Publication classification

E1 Full written paper - refereed

Copyright notice

2013, IEEE

Title of proceedings

CIASG 2013 : Proceedings of the 2013 IEEE Computational Intelligence Applications in Smart Grid