1. Clustering Enabled Few-Shot Load Forecasting
- Author
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Wang, Qiyuan, Chen, Zhihui, and Wu, Chenye
- Subjects
Signal Processing (eess.SP) ,FOS: Computer and information sciences ,Computer Science - Machine Learning ,FOS: Electrical engineering, electronic engineering, information engineering ,Applications (stat.AP) ,Electrical Engineering and Systems Science - Signal Processing ,Statistics - Applications ,Machine Learning (cs.LG) - Abstract
While the advanced machine learning algorithms are effective in load forecasting, they often suffer from low data utilization, and hence their superior performance relies on massive datasets. This motivates us to design machine learning algorithms with improved data utilization. Specifically, we consider the load forecasting for a new user in the system by observing only few shots (data points) of its energy consumption. This task is challenging since the limited samples are insufficient to exploit the temporal characteristics, essential for load forecasting. Nonetheless, we notice that there are not too many temporal characteristics for residential loads due to the limited kinds of human lifestyle. Hence, we propose to utilize the historical load profile data from existing users to conduct effective clustering, which mitigates the challenges brought by the limited samples. Specifically, we first design a feature extraction clustering method for categorizing historical data. Then, inheriting the prior knowledge from the clustering results, we propose a two-phase Long Short Term Memory (LSTM) model to conduct load forecasting for new users. The proposed method outperforms the traditional LSTM model, especially when the training sample size fails to cover a whole period (i.e., 24 hours in our task). Extensive case studies on two real-world datasets and one synthetic dataset verify the effectiveness and efficiency of our method., Comment: *The first two authors contributed equally to this work, and hence are co-first authors of this work. C. Wu is the corresponding author. This work was supported in part by the Shenzhen Institute of Artificial Intelligence and Robotics for Society
- Published
- 2022
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