Empirical Mode Decomposition based ensemble deep learning for load demand time series forecasting

Applied Soft Computing - Tập 54 - Trang 246-255 - 2017
Xueheng Qiu1, Ye Ren1, Ponnuthurai Nagaratnam Suganthan1, G.A.J. Amaratunga2
1School of Electrical and Electronic Engineering, Nanyang Technological University, 50 Nanyang Avenue, 639798 Singapore, Singapore
2Centre for Advanced Photonics and Electronics, Electrical Engineering Division, Engineering Department, University of Cambridge, Cambridge CB3 0FA, UK

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