Joint bagged-boosted artificial neural networks: Using ensemble machine learning to improve short-term electricity load forecasting

Author:

Khwaja A.S.,Anpalagan A.ORCID,Naeem M.,Venkatesh B.

Publisher

Elsevier BV

Subject

Electrical and Electronic Engineering,Energy Engineering and Power Technology

Reference34 articles.

1. Smart grid load forecasting using online support vector regression;Vrablecova;Comput. Electr. Eng.,2018

2. Load forecasting via deep neural networks;He;Proc. Comput. Sci.,2017

3. A permutation importance-based feature selection method for short-term electricity load forecasting using random forest;Huang;Energies,2016

4. Local Short Term Electricity Load Forecasting: Automatic Approaches;Dang-Ha,2017

5. Regression based peak load forecasting using a transformation technique;Haida;IEEE Trans. Power Syst.,1994

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