Enhancing the Performance of Building Load Forecasting Using Hybrid of GLSSVM – ABC Model

In conducting load forecasting, the accuracy of forecasting is an important aspect in planning and managing electricity. Thus, a new hybrid model is presented in this paper, which combines the Group Method of Data Handling, Least Square Support Vector Machine and Artificial Bee Colony (GLSSVM- ABC)...

Full description

Bibliographic Details
Main Authors: Mat Daut Mohammad Azhar, Ahmad Ahmad Sukri, Hassan Mohammad Yusri, Abdullah Hayati, Abdullah Md Pauzi, Husin Faridah
Format: Article
Language:English
Published: EDP Sciences 2016-01-01
Series:MATEC Web of Conferences
Online Access:http://dx.doi.org/10.1051/matecconf/20167010010
id doaj-fd87fd558f3c4373b603aaaff06c2027
record_format Article
spelling doaj-fd87fd558f3c4373b603aaaff06c20272021-02-02T03:16:22ZengEDP SciencesMATEC Web of Conferences2261-236X2016-01-01701001010.1051/matecconf/20167010010matecconf_icmit2016_10010Enhancing the Performance of Building Load Forecasting Using Hybrid of GLSSVM – ABC ModelMat Daut Mohammad AzharAhmad Ahmad SukriHassan Mohammad YusriAbdullah HayatiAbdullah Md PauziHusin FaridahIn conducting load forecasting, the accuracy of forecasting is an important aspect in planning and managing electricity. Thus, a new hybrid model is presented in this paper, which combines the Group Method of Data Handling, Least Square Support Vector Machine and Artificial Bee Colony (GLSSVM- ABC) for building load forecasting. Its performance accuracy has been compared with other methods by using the Mean Absolute Percentage Error (MAPE) and Root Means Square Error (RMSE). It was found that the proposed method has resulted in better performance accuracy in terms of both MAPE and RMSE. The MAPE analysis showed an increase in performance accuracy of more than 7 percent when compared to other methods. The RMSE analysis showed an increase in performance accuracy of more than 5 percent when compared to other methods. The results in this study showed that the proposed method is proven to be effective and has great potential for accurate building load forecasting.http://dx.doi.org/10.1051/matecconf/20167010010
collection DOAJ
language English
format Article
sources DOAJ
author Mat Daut Mohammad Azhar
Ahmad Ahmad Sukri
Hassan Mohammad Yusri
Abdullah Hayati
Abdullah Md Pauzi
Husin Faridah
spellingShingle Mat Daut Mohammad Azhar
Ahmad Ahmad Sukri
Hassan Mohammad Yusri
Abdullah Hayati
Abdullah Md Pauzi
Husin Faridah
Enhancing the Performance of Building Load Forecasting Using Hybrid of GLSSVM – ABC Model
MATEC Web of Conferences
author_facet Mat Daut Mohammad Azhar
Ahmad Ahmad Sukri
Hassan Mohammad Yusri
Abdullah Hayati
Abdullah Md Pauzi
Husin Faridah
author_sort Mat Daut Mohammad Azhar
title Enhancing the Performance of Building Load Forecasting Using Hybrid of GLSSVM – ABC Model
title_short Enhancing the Performance of Building Load Forecasting Using Hybrid of GLSSVM – ABC Model
title_full Enhancing the Performance of Building Load Forecasting Using Hybrid of GLSSVM – ABC Model
title_fullStr Enhancing the Performance of Building Load Forecasting Using Hybrid of GLSSVM – ABC Model
title_full_unstemmed Enhancing the Performance of Building Load Forecasting Using Hybrid of GLSSVM – ABC Model
title_sort enhancing the performance of building load forecasting using hybrid of glssvm – abc model
publisher EDP Sciences
series MATEC Web of Conferences
issn 2261-236X
publishDate 2016-01-01
description In conducting load forecasting, the accuracy of forecasting is an important aspect in planning and managing electricity. Thus, a new hybrid model is presented in this paper, which combines the Group Method of Data Handling, Least Square Support Vector Machine and Artificial Bee Colony (GLSSVM- ABC) for building load forecasting. Its performance accuracy has been compared with other methods by using the Mean Absolute Percentage Error (MAPE) and Root Means Square Error (RMSE). It was found that the proposed method has resulted in better performance accuracy in terms of both MAPE and RMSE. The MAPE analysis showed an increase in performance accuracy of more than 7 percent when compared to other methods. The RMSE analysis showed an increase in performance accuracy of more than 5 percent when compared to other methods. The results in this study showed that the proposed method is proven to be effective and has great potential for accurate building load forecasting.
url http://dx.doi.org/10.1051/matecconf/20167010010
work_keys_str_mv AT matdautmohammadazhar enhancingtheperformanceofbuildingloadforecastingusinghybridofglssvmabcmodel
AT ahmadahmadsukri enhancingtheperformanceofbuildingloadforecastingusinghybridofglssvmabcmodel
AT hassanmohammadyusri enhancingtheperformanceofbuildingloadforecastingusinghybridofglssvmabcmodel
AT abdullahhayati enhancingtheperformanceofbuildingloadforecastingusinghybridofglssvmabcmodel
AT abdullahmdpauzi enhancingtheperformanceofbuildingloadforecastingusinghybridofglssvmabcmodel
AT husinfaridah enhancingtheperformanceofbuildingloadforecastingusinghybridofglssvmabcmodel
_version_ 1724308324878385152