利用变压器网络和迁移学习开发可解释的风能预测系统

IF 9.9 1区 工程技术 Q1 ENERGY & FUELS Energy Conversion and Management Pub Date : 2024-11-18 DOI:10.1016/j.enconman.2024.119155
Chaonan Tian , Tong Niu , Tao Li
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引用次数: 0

摘要

准确的风电预测对于提高电网运行和调度的稳定性和安全性至关重要。然而,以往的研究主要集中在数据预处理或模型优化方面,往往忽视了在历史数据有限的情况下如何高效预测新建风电场的风力发电量这一难题。为解决这一问题,我们开发了一种新型风力发电预测系统,该系统由六个模块组成,利用变压器网络和参数共享转移学习策略,重点强调模型的可解释性。在这一预测系统中,特征选择模块和注意力机制协同工作,从输入集合中识别关键特征,并为每个选定特征分配重要性权重,而不是对所有特征一视同仁。为了验证我们提出的预测系统的有效性,我们使用来自中国两个风电场的十个多元数据集进行了三次模拟实验。实验结果与六个基准和各种特征选择方法进行了比较。我们的研究结果表明,所提出的风电预测系统优于所有基准。平均而言,在三个实验中,与表现最差的多层感知器相比,它的平均绝对误差和均方根误差分别提高了 46.29% 和 31.02%。此外,迁移学习策略的实施明显提高了预测系统的准确性,平均绝对误差和均方根误差分别降低了 13.84% 和 7.77%。
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Developing an interpretable wind power forecasting system using a transformer network and transfer learning
Accurate wind power forecasting is crucial for enhancing the stability and security of power grid operations and scheduling. However, previous studies have primarily focused on data preprocessing or model optimization, often neglecting the challenge of efficiently forecasting wind power for newly built wind farms with limited historical data. To address this issue, we developed a novel wind power forecasting system consisting of six modules that leverage a transformer network and a parameter-sharing transfer learning strategy, with a strong emphasis on model interpretability. In this forecasting system, the feature selection module and attention mechanism work together to identify key features from the input set and assign importance weights to each selected feature rather than treating all features equally. To validate the effectiveness of our proposed forecasting system, we conducted three simulation experiments using ten multivariate datasets from two wind farms in China. The results were compared against six benchmarks and various feature selection methods. Our findings demonstrate that the proposed wind power forecasting system outperforms all benchmarks. On average, across the three experiments, it achieved considerable performance improvements of 46.29% in mean absolute error and 31.02% in root mean square error compared to the worst-performing multi-layer perceptron. Additionally, the implementation of the transfer learning strategy markedly enhanced the forecasting system’s accuracy, leading to average reductions of 13.84% in mean absolute error and 7.77% in root mean square error.
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来源期刊
Energy Conversion and Management
Energy Conversion and Management 工程技术-力学
CiteScore
19.00
自引率
11.50%
发文量
1304
审稿时长
17 days
期刊介绍: The journal Energy Conversion and Management provides a forum for publishing original contributions and comprehensive technical review articles of interdisciplinary and original research on all important energy topics. The topics considered include energy generation, utilization, conversion, storage, transmission, conservation, management and sustainability. These topics typically involve various types of energy such as mechanical, thermal, nuclear, chemical, electromagnetic, magnetic and electric. These energy types cover all known energy resources, including renewable resources (e.g., solar, bio, hydro, wind, geothermal and ocean energy), fossil fuels and nuclear resources.
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