• Medientyp: Bericht; E-Book
  • Titel: A Hybrid Clustering and Classification Technique for Forecasting Short-Term Energy Consumption
  • Beteiligte: Mosavi, Amir (Postdoc) [VerfasserIn]; Torabi, Mehrnoosh (Professor) [VerfasserIn]; Hashemi, Sattar (Prof) [VerfasserIn]; Saybani, Mahmoud Reza (Prof) [VerfasserIn]; Shamshirband, Shahaboddin (Prof) [VerfasserIn]
  • Erschienen: Publication Server of Weimar Bauhaus-University / Online-Publikations-System der Bauhaus-Universität Weimar, 2018-06-27
  • Sprache: Englisch
  • Schlagwörter: forecasting ; bk:54 ; artificial neural networks (ANN) ; support vector machine (SVM) ; Data Mining ; clustering ; Electric Energy Consumption ; Prediction ; Machine Learning
  • Entstehung:
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  • Beschreibung: Electrical energy distributor companies in Iran have to announce their energy demand at least three 3-day ahead of the market opening. Therefore, an accurate load estimation is highly crucial. This research invoked methodology based on CRISP data mining and used SVM, ANN, and CBA-ANN-SVM (a novel hybrid model of clustering with both widely used ANN and SVM) to predict short-term electrical energy demand of Bandarabbas. In previous studies, researchers introduced few effective parameters with no reasonable error about Bandarabbas power consumption. In this research we tried to recognize all efficient parameters and with the use of CBA-ANN-SVM model, the rate of error has been minimized. After consulting with experts in the field of power consumption and plotting daily power consumption for each week, this research showed that official holidays and weekends have impact on the power consumption. When the weather gets warmer, the consumption of electrical energy increases due to turning on electrical air conditioner. Also, con-sumption patterns in warm and cold months are different. Analyzing power consumption of the same month for different years had shown high similarity in power consumption patterns. Factors with high impact on power consumption were identified and statistical methods were utilized to prove their impacts. Using SVM, ANN and CBA-ANN-SVM, the model was built. Sine the proposed method (CBA-ANN-SVM) has low MAPE 5 1.474 (4 clusters) and MAPE 5 1.297 (3 clusters) in comparison with SVM (MAPE 5 2.015) and ANN (MAPE 5 1.790), this model was selected as the final model. The final model has the benefits from both models and the benefits of clustering. Clustering algorithm with discovering data structure, divides data into several clusters based on similarities and differences between them. Because data inside each cluster are more similar than entire data, modeling in each cluster will present better results. For future research, we suggest using fuzzy methods and genetic algorithm or a hybrid of both to forecast ...
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