Using Crested Porcupine Optimizer Algorithm and CNN-LSTM-Attention Model Combined with Deep Learning Methods to Enhance Short-Term Power Forecasting in PV Generation

Energies Pub Date : 2024-07-12 DOI:10.3390/en17143435
Yiling Fan, Zhuang Ma, Wanwei Tang, Jing Liang, Pengfei Xu
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Abstract

Due to the inherent intermittency, variability, and randomness, photovoltaic (PV) power generation faces significant challenges in energy grid integration. To address these challenges, current research mainly focuses on developing more efficient energy management systems and prediction technologies. Through optimizing scheduling and integration in PV power generation, the stability and reliability of the power grid can be further improved. In this study, a new prediction model is introduced that combines the strengths of convolutional neural networks (CNNs), long short-term memory (LSTM) networks, and attention mechanisms, so we call this algorithm CNN-LSTM-Attention (CLA). In addition, the Crested Porcupine Optimizer (CPO) algorithm is utilized to solve the short-term prediction problem in photovoltaic power generation. This model is abbreviated as CPO-CLA. This is the first time that the CPO algorithm has been introduced into the LSTM algorithm for parameter optimization. To effectively capture univariate and multivariate time series patterns, multiple relevant and target variables prediction patterns (MRTPPs) are employed in the CPO-CLA model. The results show that the CPO-CLA model is superior to traditional methods and recent popular models in terms of prediction accuracy and stability, especially in the 13 h timestep. The integration of attention mechanisms enables the model to adaptively focus on the most relevant historical data for future power prediction. The CPO algorithm further optimizes the LSTM network parameters, which ensures the robust generalization ability of the model. The research results are of great significance for energy generation scheduling and establishing trust in the energy market. Ultimately, it will help integrate renewable energy into the grid more reliably and efficiently.
使用 Crested Porcupine 优化算法和 CNN-LSTM-Attention 模型与深度学习方法相结合,加强光伏发电的短期功率预测
由于光伏发电本身的间歇性、多变性和随机性,它在能源并网方面面临着巨大的挑战。为应对这些挑战,目前的研究主要集中在开发更高效的能源管理系统和预测技术上。通过优化光伏发电的调度和集成,可以进一步提高电网的稳定性和可靠性。本研究引入了一种新的预测模型,该模型结合了卷积神经网络(CNN)、长短期记忆(LSTM)网络和注意力机制的优势,因此我们称该算法为 CNN-LSTM-Attention (CLA)。此外,我们还利用凤头豪猪优化器(CPO)算法来解决光伏发电的短期预测问题。该模型简称为 CPO-CLA。这是 CPO 算法首次引入 LSTM 算法进行参数优化。为了有效捕捉单变量和多变量时间序列模式,CPO-CLA 模型采用了多个相关变量和目标变量预测模式(MRTPP)。结果表明,CPO-CLA 模型在预测准确性和稳定性方面优于传统方法和近期流行的模型,尤其是在 13 小时时间步长内。关注机制的集成使模型能够自适应地关注与未来功率预测最相关的历史数据。CPO 算法进一步优化了 LSTM 网络参数,从而确保了模型稳健的泛化能力。研究成果对能源发电调度和建立能源市场信任具有重要意义。最终,它将有助于更可靠、更高效地将可再生能源并入电网。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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