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<article xsi:noNamespaceSchemaLocation="http://jats.nlm.nih.gov/publishing/1.1/xsd/JATS-journalpublishing1-mathml3.xsd" dtd-version="1.1" xmlns:xlink="http://www.w3.org/1999/xlink" xmlns:mml="http://www.w3.org/1998/Math/MathML" xmlns:xsi="http://www.w3.org/2001/XMLSchema-instance"><front><journal-meta><journal-id journal-id-type="publisher-id">NPS</journal-id><journal-title-group><journal-title>Carbon Neutralization and New Power Systems</journal-title></journal-title-group><issn>2995-4436</issn><eissn>2995-4479</eissn><publisher><publisher-name>Art and Technology</publisher-name></publisher></journal-meta><article-meta><article-id pub-id-type="doi">10.61369/NPS.2025040002</article-id><article-categories><subj-group subj-group-type="heading"><subject>Article</subject></subj-group></article-categories><title>基于改进贝叶斯优化的TCN-GRU 风光功率预测</title><url>https://artdesignp.com/journal/NPS/3/4/10.61369/NPS.2025040002</url><author>楚子易,武雅慧,张亚刚</author><pub-date pub-type="publication-year"><year>2025</year></pub-date><volume>3</volume><issue>4</issue><history><date date-type="pub"><published-time>2025-12-20</published-time></date></history><abstract>【目的】 风能和太阳能因其清洁、可再生的特性，在能源转型中发挥着关键作用，但其出力受自然条件制约，兼具强随机性与波动性，导致功率预测难度显著提升。因此，提高二者的预测精度与效率成为亟待解决的问题。【方法】本文提出了一种基于改进自适应经验模态分解（improved complete ensemble empirical mode de- composition with adaptive noise，ICEEMDAN）和改进贝叶斯优化（surrogate safety-aware bayesian optimization，SSABO）的时域卷积网络- 门控循环单元（temporal con- volutional network - gated recurrent unit，TCN-GRU）风光功率综合预测模型，并结合自适应带宽核密度估计（adap- tive bandwidth kernel density estimation，ABKDE）实现区间预测，以量化出力波动的不确定性。其中，ICEEMDAN 算法通过自适应信号分解，有效抑制模态混叠问题，降低噪声干扰，充分提取数据特征。TCN-GRU 模型简化了模型结构并提高了计算效率；引入SSABO 优化关键参数，模型的收敛速度更快、寻优精度更高，显著提升了训练效率和预测精度。【结果】研究表明：ICEEMDAN 算法有效解决了伪模态问题，数据分解效果优于传统CEEMDAN；SSABO 优化后的TCN-GRU 模型在风电和光伏数据集上的预测误差较未优化模型均有较大幅度的降低；ABKDE 区间预测在不同置信水平下的覆盖率均优于理论值，验证了模型输出不确定性的可靠性。【结论】该模型适用于不同能源类型的预测，且具备较高的精度和效率，为风光功率预测提供了一种有效的解决方案。</abstract><keywords>风光互补发电系统,功率预测,CNN-GRU 模型, 贝叶斯优化,区间预测,预测误差,稳定性</keywords></article-meta></front><body/><back><ref-list><ref id="B1" content-type="article"><label>1</label><element-citation publication-type="journal"><p>[1] 周金涛,何山,王维庆,等.基于黑翅鸢算法和VMD的短期风电功率预测[J].太阳能学报,2025,46(12):762-773.ZHOU Jintao,HE Shan,WANG Weiqing,et al.Short- Term Wind Power Prediction based on Black-winged Kite Algorithm and Vmd[J].Acta Energiae Solaris Sinica,2025,46(12):762-773.
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