Energies, Vol. 19, Pages 1379: Short-Term Load Forecasting for a Renewable-Rich Power System Using an IMVMD-XLSTM

Energies, Vol. 19, Pages 1379: Short-Term Load Forecasting for a Renewable-Rich Power System Using an IMVMD-XLSTM

Energies doi: 10.3390/en19051379

Authors:
Qiujing Lin
Hongquan Zhu
Xiaolong Wang
Xiangang Peng

The high penetration of photovoltaic and wind power introduces strong non-stationarity and multi-scale fluctuations into power system load profiles, challenging the accuracy of short-term load forecasting (STLF). To address this, we propose a hybrid forecasting framework, IMVMD-XLSTM, which synergistically integrates an optimized multivariate decomposition with an advanced neural network. First, to address the critical issue that MVMD performance is highly sensitive to its parameter settings, which impacts decomposition quality, a multi-strategy Improved Fruit Fly Optimization Algorithm (IFOA) is developed to task-oriented adaptively tune the key parameters of MVMD, forming an Improved MVMD (IMVMD). This optimization aims to ensure decomposition stability and maximize the relevance for the subsequent forecasting task. Second, to fully leverage the characteristics of the frequency-aligned, multi-channel sub-sequences generated by IMVMD, an Extended LSTM (XLSTM) network is designed. Its serially arranged BisLSTM and mLSTM units are specifically tailored to capture the bidirectional long-term dependencies within each stable sub-sequence and the complex high-dimensional interactions across the aligned sub-sequences, respectively. Evaluated on 15 min resolution data from the Austrian grid, the proposed IMVMD-XLSTM framework achieves a day-ahead forecasting Mean Absolute Percentage Error (MAPE) of 2.45% (±1.41%). This study provides a verifiable and effective solution that couples data-adaptive signal processing with a purpose-built neural architecture to enhance forecasting reliability in renewable-rich power systems.

More From Author

Energies, Vol. 19, Pages 1380: Torrefaction of Biowastes for High-Performance Solid Biofuel Production: A Review

Energies, Vol. 19, Pages 1378: Mechanisms Shaping Greenhouse Gas Emission Intensity Through the Integration of Power Generation Availability Indicators and Energy Intensity Measures: Case Study of Poland

Leave a Reply

Your email address will not be published. Required fields are marked *