Title :
On accuracy of demand forecasting and its extension to demand composition forecasting using artificial intelligence based methods
Author :
Yizheng Xu ; Jingyi Cai ; Milanovic, Jovica V.
Author_Institution :
Univ. of Manchester, Manchester, UK
Abstract :
Accurate prediction of the load plays an indispensable role in power system planning and electricity market analysis. Load forecasting based on artificial intelligence (AI) techniques received a significant attention in the past and it is rapidly developing because of its high accuracy. Some of the AI based methodologies for load forecasting have already been adopted and widely used by the industry. This paper presents for the first time comparative analysis of the state of the art artificial neural network (ANN) based and adaptive neuro-based fuzzy inference system (ANFIS) based load forecasting methodologies in the same operation environment. Furthermore, the paper implements the extension of forecasting tools to forecast hourly load composition in addition to overall load at a bus. It is confirmed that either approach is very effective in load forecasting and that they have comparable performance providing appropriate setting of relevant parameters. It also proves that the approach can be successfully extended to hourly load composition forecasting and the load composition forecasting error is less than 10% at most of the time during the day.
Keywords :
artificial intelligence; demand forecasting; electricity supply industry; fuzzy neural nets; fuzzy reasoning; load forecasting; power engineering computing; power markets; power system planning; AI based methodology; ANFIS; ANN; adaptive neuro-based fuzzy inference system; artificial intelligence based method; artificial intelligence technique; artificial neural network; demand composition forecasting; demand forecasting accuracy; electricity market analysis; load accurate prediction; load composition forecasting error; load forecasting; power industry; power system planning; Accuracy; Artificial intelligence; Artificial neural networks; Forecasting; Load forecasting; Load management; Training; Artificial intelligence techniques; load forecasting; parameter configuration; prediction of load composition;
Conference_Titel :
Innovative Smart Grid Technologies Conference Europe (ISGT-Europe), 2014 IEEE PES
Conference_Location :
Istanbul
DOI :
10.1109/ISGTEurope.2014.7028865