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Title: Short-term residential load forecasting based on K-shape clustering and domain adversarial transfer network
Authors: Zhu, J
Miao, Y
Dong, H
Li, S
Chen, Z
Zhang, D 
Issue Date: Jul-2024
Source: Journal of modern power systems and clean energy, July 2024, v. 12, no. 4, 1239
Abstract: In recent years, the expansion of the power grid has led to a continuous increase in the number of consumers within the distribution network. However, due to the scarcity of historical data for these new consumers, it has become a complex challenge to accurately forecast their electricity demands through traditional forecasting methods. This paper proposes an innovative short-term residential load forecasting method that harnesses advanced clustering, deep learning, and transfer learning technologies to address this issue. To begin, this paper leverages the domain adversarial transfer network. It employs limited data as target domain data and more abundant data as source domain data, thus enabling the utilization of source domain insights for the forecasting task of the target domain. Moreover, a K-shape clustering method is proposed, which effectively identifies source domain data that align optimally with the target domain, and enhances the forecasting accuracy. Subsequently, a composite architecture is devised, amalgamating attention mechanism, long short-term memory network, and seq2seq network. This composite structure is integrated into the domain adversarial transfer network, bolstering the performance of feature extractor and refining the forecasting capabilities. An illustrative analysis is conducted using the residential load dataset of the Independent System Operator to validate the proposed method empirically. In the case study, the relative mean square error of the proposed method is within 30 MW, and the mean absolute percentage error is within 2%. A significant improvement in accuracy, compared with other comparative experimental results, underscores the reliability of the proposed method. The findings unequivocally demonstrate that the proposed method advocated in this paper yields superior forecasting results compared with prevailing mainstream forecasting methods.
Keywords: Attention mechanism
Domain adversarial
K-shape clustering
Load forecasting
Long short-term memory network
Seq2seq network
Publisher: Institute of Electrical and Electronics Engineers
Journal: Journal of modern power systems and clean energy 
ISSN: 2196-5625
EISSN: 2196-5420
DOI: 10.35833/MPCE.2023.000646
Rights: This article is distributed under the terms of the Creative Commons Attribution 4.0 International License (http://creativecommons.org/licenses/by/4.0/).
The following publication J. Zhu, Y. Miao, H. Dong, S. Li, Z. Chen and D. Zhang, "Short-Term Residential Load Forecasting Based on K−shape Clustering and Domain Adversarial Transfer Network," in Journal of Modern Power Systems and Clean Energy, vol. 12, no. 4, pp. 1239-1249, July 2024 is available at https://doi.org/10.35833/MPCE.2023.000646.
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