TY - JOUR ID - 104792 TI - Deep Learning Based Electricity Demand Forecasting in Different Domains JO - Iranica Journal of Energy & Environment JA - IJEE LA - en SN - 2079-2115 AU - Imani, M. AD - Faculty of Electrical and Computer Engineering, Tarbiat Modares University, Tehran, Iran Y1 - 2020 PY - 2020 VL - 11 IS - 1 SP - 33 EP - 39 KW - Frequency Domain KW - Load forecasting KW - Long-short Term Memory KW - Time Domain DO - 10.5829/ijee.2020.11.01.06 N2 - Electricity demand forecasting is an important task in power grids. Most of researches on electrical load forecasting have been done in the time domain. But, the electrical time series has a non-stationary inherence that makes hard load prediction. Moreover, valuable information is hidden in the electrical load sequence which is not open in the time domain. To deal with these difficulties, a new electricity demand forecasting framework is proposed in this work. In the proposed framework, at first, a new feature space of electrical load sequence is composed. The provided domain involves complementary information about shape and variations of electrical load sequence. Then, the obtained load features are integrated with the original load values in time domain to allow a rich input for predictor. Finally, a powerful deep learning technique from the family of recurrent neural networks, named long-short term memory, is used to learn electricity demand from the provided features in single and hybrid domains. The following domains are investigated in this work: frequency, cepstrum, spectral centroid, spectral roll-off, spectral flux, energy, time difference, frequency difference, Gabor and collaborative representation. The experiments show that the use of time difference domain decreases the mean absolute percent error from 0.0332 to 0.0056. UR - https://www.ijee.net/article_104792.html L1 - https://www.ijee.net/article_104792_fb260cac96de098700ac7195b24a58e7.pdf ER -