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用于稳健光伏发电功率预测的混合集成框架中的动态模型选择

Dynamic Model Selection in a Hybrid Ensemble Framework for Robust Photovoltaic Power Forecasting.

作者信息

Song Nakhun, Chang-Silva Roberto, Lee Kyungil, Park Seonyoung

机构信息

Department of Applied Artificial Intelligence, Seoul National University of Science and Technology, 232 Gongneung-ro, Nowon-gu, Seoul 01811, Republic of Korea.

出版信息

Sensors (Basel). 2025 Jul 19;25(14):4489. doi: 10.3390/s25144489.

DOI:10.3390/s25144489
PMID:40732617
原文链接:https://pmc.ncbi.nlm.nih.gov/articles/PMC12298117/
Abstract

As global electricity demand increases and concerns over fossil fuel usage intensify, renewable energy sources have gained significant attention. Solar energy stands out due to its low installation costs and suitability for deployment. However, solar power generation remains difficult to predict because of its dependence on weather conditions and decentralized infrastructure. To address this challenge, this study proposes a flexible hybrid ensemble (FHE) framework that dynamically selects the most appropriate base model based on prediction error patterns. Unlike traditional ensemble methods that aggregate all base model outputs, the FHE employs a meta-model to leverage the strengths of individual models while mitigating their weaknesses. The FHE is evaluated using data from four solar power plants and is benchmarked against several state-of-the-art models and conventional hybrid ensemble techniques. Experimental results demonstrate that the FHE framework achieves superior predictive performance, improving the Mean Absolute Percentage Error by 30% compared to the SVR model. Moreover, the FHE model maintains high accuracy across diverse weather conditions and eliminates the need for preliminary validation of base and ensemble models, streamlining the deployment process. These findings highlight the FHE framework's potential as a robust and scalable solution for forecasting in small-scale distributed solar power systems.

摘要

随着全球电力需求的增加以及对化石燃料使用的担忧加剧,可再生能源受到了广泛关注。太阳能因其较低的安装成本和适合部署的特性而脱颖而出。然而,由于太阳能发电依赖天气条件和分散的基础设施,其发电量仍然难以预测。为应对这一挑战,本研究提出了一种灵活混合集成(FHE)框架,该框架基于预测误差模式动态选择最合适的基础模型。与传统的集成方法不同,传统方法是汇总所有基础模型的输出,而FHE采用元模型来利用各个模型的优势,同时减轻其劣势。使用来自四个太阳能发电厂的数据对FHE进行评估,并与几种先进模型和传统混合集成技术进行基准测试。实验结果表明,FHE框架具有卓越的预测性能,与支持向量回归(SVR)模型相比,平均绝对百分比误差降低了30%。此外,FHE模型在各种天气条件下都能保持高精度,并且无需对基础模型和集成模型进行初步验证,简化了部署过程。这些发现凸显了FHE框架作为一种强大且可扩展的解决方案,在小规模分布式太阳能发电系统预测中的潜力。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/c0d8/12298117/9524006eb3f3/sensors-25-04489-g005.jpg
https://cdn.ncbi.nlm.nih.gov/pmc/blobs/c0d8/12298117/df6163e791cb/sensors-25-04489-g001.jpg
https://cdn.ncbi.nlm.nih.gov/pmc/blobs/c0d8/12298117/082d4b0a6867/sensors-25-04489-g002.jpg
https://cdn.ncbi.nlm.nih.gov/pmc/blobs/c0d8/12298117/dc42252b3170/sensors-25-04489-g003.jpg
https://cdn.ncbi.nlm.nih.gov/pmc/blobs/c0d8/12298117/1492e0f46c20/sensors-25-04489-g004.jpg
https://cdn.ncbi.nlm.nih.gov/pmc/blobs/c0d8/12298117/9524006eb3f3/sensors-25-04489-g005.jpg
https://cdn.ncbi.nlm.nih.gov/pmc/blobs/c0d8/12298117/df6163e791cb/sensors-25-04489-g001.jpg
https://cdn.ncbi.nlm.nih.gov/pmc/blobs/c0d8/12298117/082d4b0a6867/sensors-25-04489-g002.jpg
https://cdn.ncbi.nlm.nih.gov/pmc/blobs/c0d8/12298117/dc42252b3170/sensors-25-04489-g003.jpg
https://cdn.ncbi.nlm.nih.gov/pmc/blobs/c0d8/12298117/1492e0f46c20/sensors-25-04489-g004.jpg
https://cdn.ncbi.nlm.nih.gov/pmc/blobs/c0d8/12298117/9524006eb3f3/sensors-25-04489-g005.jpg

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