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A Hybrid clustering and classification technique for forecasting short‐term energy consumption

Mehrnoosh TorabiHormozgan Regional Electric Co Bandarabbas IranSattar HashemiFaculty of Computer Engineering Shiraz University Shiraz IranMahmoud Reza SaybaniMarkaz‐e Elmi Karbordi Bandar Abbas, University of Applied Science and Technology Farahani Boulevard Bandar Abbas 7919933153 IranShahaboddin ShamshirbandDepartment for Management of Science and Technology Development Ton Duc Thang University Ho Chi Minh City VietnamAmir MosaviInstitute of Automation, Kando Kalman Faculty of Electrical Engineering, Obuda University 1431 Budapest Hungary
2018en
ABI

Аннотация

This paper presents a hybrid approach to predict the electric energy usage of weather‐sensitive loads. The presented method utilizes the clustering paradigm along with ANN and SVM approaches for accurate short‐term prediction of electric energy usage, using weather data. Since the methodology being invoked in this research is based on CRISP data mining, data preparation has received a great deal of attention in this research. Once data pre‐processing was done, the underlying pattern of electric energy consumption was extracted by the means of machine learning methods to precisely forecast short‐term energy consumption. The proposed approach (CBA‐ANN‐SVM) was applied to real load data and resulting higher accuracy comparing to the existing models. © 2018 American Institute of Chemical Engineers Environ Prog, 38: 66–76, 2019

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Цитирований: 2Использованных источников: 0