Short Term Load Forecasting Using Semi-Parametric Method and Support Vector Machines

Accurate short term load forecasting plays a very important role in power system management. As electrical load data is highly non-linear in nature, in the proposed approach, we first separate out the linear and the non-linear parts, and then forecast the load using the non-linear part only. The Sem...

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Main Authors: Jordaan, JA, Ukil, A
Format: Others
Language:en
Published: IEEE Africon 2009
Subjects:
Online Access:http://encore.tut.ac.za/iii/cpro/DigitalItemViewPage.external?sp=1000836
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spelling ndltd-netd.ac.za-oai-union.ndltd.org-tut-oai-encore.tut.ac.za-d10008362015-11-27T03:53:05Z Short Term Load Forecasting Using Semi-Parametric Method and Support Vector Machines Jordaan, JA Ukil, A Short Term Load Forecasting Semi-Parametric Method Accurate short term load forecasting plays a very important role in power system management. As electrical load data is highly non-linear in nature, in the proposed approach, we first separate out the linear and the non-linear parts, and then forecast the load using the non-linear part only. The Semiparametric spectral estimation method is used to decompose a load data signal into a harmonic linear signal model and a nonlinear trend. A support vector machine is then used to predict the non-linear trend. The final predicted signal is then found by adding the support vector machine predicted trend and the linear signal part. With careful determination of the linear component, the performance of the proposed method seems to be more robust than using only the raw load data, and in many cases the predicted signal of the proposed method is more accurate when we have only a small training set. IEEE Africon 2009-09-23 Text Pdf en ©2009 IEEE http://encore.tut.ac.za/iii/cpro/DigitalItemViewPage.external?sp=1000836
collection NDLTD
language en
format Others
sources NDLTD
topic Short Term Load Forecasting
Semi-Parametric Method
spellingShingle Short Term Load Forecasting
Semi-Parametric Method
Jordaan, JA
Ukil, A
Short Term Load Forecasting Using Semi-Parametric Method and Support Vector Machines
description Accurate short term load forecasting plays a very important role in power system management. As electrical load data is highly non-linear in nature, in the proposed approach, we first separate out the linear and the non-linear parts, and then forecast the load using the non-linear part only. The Semiparametric spectral estimation method is used to decompose a load data signal into a harmonic linear signal model and a nonlinear trend. A support vector machine is then used to predict the non-linear trend. The final predicted signal is then found by adding the support vector machine predicted trend and the linear signal part. With careful determination of the linear component, the performance of the proposed method seems to be more robust than using only the raw load data, and in many cases the predicted signal of the proposed method is more accurate when we have only a small training set.
author Jordaan, JA
Ukil, A
author_facet Jordaan, JA
Ukil, A
author_sort Jordaan, JA
title Short Term Load Forecasting Using Semi-Parametric Method and Support Vector Machines
title_short Short Term Load Forecasting Using Semi-Parametric Method and Support Vector Machines
title_full Short Term Load Forecasting Using Semi-Parametric Method and Support Vector Machines
title_fullStr Short Term Load Forecasting Using Semi-Parametric Method and Support Vector Machines
title_full_unstemmed Short Term Load Forecasting Using Semi-Parametric Method and Support Vector Machines
title_sort short term load forecasting using semi-parametric method and support vector machines
publisher IEEE Africon
publishDate 2009
url http://encore.tut.ac.za/iii/cpro/DigitalItemViewPage.external?sp=1000836
work_keys_str_mv AT jordaanja shorttermloadforecastingusingsemiparametricmethodandsupportvectormachines
AT ukila shorttermloadforecastingusingsemiparametricmethodandsupportvectormachines
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