Robust photovoltaic forecasting under severe data missingness via multi-domain collaboration and covariate interaction
Yan, Ke, Liu, Jian, Zhang, Jiazhen, Yang, Fan, Gao, Yuan, and Du, Yang (2025) Robust photovoltaic forecasting under severe data missingness via multi-domain collaboration and covariate interaction. Applied Energy, 401. 126771.
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Abstract
High-quality photovoltaic (PV) power forecasting is essential for efficient energy management and reliable grid integration, yet real-world data are often plagued by extensive missingness in both target and auxiliary variables. To address this challenge, we propose MDCTL-MCI, a missingness-aware forecasting framework that jointly leverages signal decomposition, multi-scale covariate interaction, and multi-domain collaborative transfer learning. First, multivariate singular spectrum analysis (MSSA) denoises and reconstructs incomplete time series, enhancing underlying temporal structures without explicit imputation. Next, a lightweight multiscale covariate interaction (MCI) module models interactions among reconstructed PV power, global horizontal irradiance, direct normal irradiance, and total solar irradiance at varying temporal resolutions, capturing both local fluctuations and global trends. Finally, a multi-source domain collaborative transfer learning strategy aggregates knowledge from multiple PV sites to form a global model, which is then fine-tuned on a small set of high-quality, MSSA-processed samples at each site. By freezing all but the output layer during fine-tuning, MDCTL-MCI adapts efficiently to local data heterogeneity. Extensive experiments on four Chinese PV installations reveal that, compared to baseline methods, the proposed method improves average accuracy by 10.5 % under complete data conditions and by 15.3 % under various missing data scenarios.
| Item ID: | 89193 |
|---|---|
| Item Type: | Article (Research - C1) |
| ISSN: | 0306-2619 |
| Keywords: | Covariate information, Multi-source domain collaboration, Photovoltaic forecasting, Shapley additive explanations, Transfer learning fine-tuning |
| Copyright Information: | © 2025 The Author(s). Published by Elsevier Ltd. This is an open access article under the CC BY license (http://creativecommons.org/licenses/by/4.0/). |
| Date Deposited: | 10 Jul 2026 05:02 |
| FoR Codes: | 40 ENGINEERING > 4008 Electrical engineering > 400808 Photovoltaic power systems @ 100% |
| SEO Codes: | 17 ENERGY > 1708 Renewable energy > 170804 Solar-photovoltaic energy @ 100% |
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