Temporal environment informed photovoltaic performance prediction framework with multi-spatial attention LSTM

Dou Hong, Fengze Li, Jieming Ma*, Ka Lok Man, Huiqing Wen, Prudence Wong

*Corresponding author for this work

Research output: Contribution to journalArticlepeer-review

Abstract

Predicting the performance of photovoltaic (PV) systems is crucial for optimizing renewable energy utilization. However, traditional time-series methods focus only on temporal patterns, overlooking environmental variations, while dynamic conditions such as partial shading further complicate power prediction. To address this shading-induced variability, we propose a Temporal and Environment-Informed Prediction (TEIP) framework, which enhances PV power prediction by dynamically structuring temporal and environmental data through a novel multi-spatial attention LSTM (MSAL) network. This framework utilizes the TE matrix to capture structured environmental conditions over time, including the variability caused by partial shading. A dual-branch MSAL model uniquely processes environmental data through spatial feature extraction, which is then sequentially processed by LSTM to capture temporal dependencies. This hierarchical spatial–temporal processing enables dynamic adaptation to changing environmental conditions. Experimental results show the framework achieves superior prediction accuracy with R2 of 0.952 under sunny conditions, significantly outperforming traditional approaches. The framework demonstrates exceptional robustness by maintaining consistent performance (R2 of 0.948) even under challenging cloudy conditions, validating its effectiveness for real-world applications.

Original languageEnglish
Article number113550
JournalSolar Energy
Volume296
DOIs
Publication statusPublished - Aug 2025

Keywords

  • Attention mechanisms
  • Photovoltaic systems
  • Power prediction
  • Spatial–temporal analysis
  • Temporal environment matrix

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