Predicting Household Electric Power Consumption Using Multi-step Time Series with Convolutional LSTM

Big Data Research - Tập 31 - Trang 100360 - 2023
Lucia Cascone1, Saima Sadiq2, Saleem Ullah2, Seyedali Mirjalili3,4, Hafeez Ur Rehman Siddiqui2, Muhammad Umer5
1University of Salerno, Via Giovanni Paolo II, 132, Fisciano 84084, Salerno, Italy
2Department of Computer Science, Khwaja Fareed University of Engineering and Information Technology, Rahim Yar Khan, Pakistan
3Center for Artificial Intelligence Research and Optimization, Torrens University Australia, Fortitude Valley, Brisbane, QLD 4006, Australia
4YFL (Yonsei Frontier Lab), Yonsei University, Seoul, Republic of Korea
5Department of Computer Science & Information Technology, The Islamia University of Bahawalpur, Bahawalpur 63100, Pakistan

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