Digital Twin Integration With Data Fusion for Enhanced Photovoltaic System Management: A Systematic Literature Review

IF 5 Q1 ENGINEERING, ELECTRICAL & ELECTRONIC
Jiang Yuan;Jieming Ma;Zhongbei Tian;Ka Lok Man
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Abstract

The integration of Digital Twin (DT) technology into the photovoltaic (PV) sector represents a significant advancement in energy management, optimization, servicing, and maintenance. This comprehensive literature review aims to enhance understanding, categorization, and adoption of DT and data fusion technologies within the PV industry to guide future research endeavors. The review categorizes PV models into three types: digital models, digital shadows, and digital twins, based on their data connection and integration attributes. It recognizes data fusion as the critical enabling technology for the development of complex DT models and proposes a framework for integrating data fusion with DT systems. A detailed examination of prevalent PV modeling methodologies is conducted to delineate their advantages and limitations, serving as a valuable resource for industry practitioners. The paper concludes that digital models and digital shadows are effective for initial PV system forecast and monitoring, while fully integrated DT models offer significant advantages, including real-time analysis, predictive capabilities, and active system optimization. However, implementing and maintaining DT models require advanced data analytics, high computational costs, and robust system security, presenting important challenges to be addressed in future research endeavors.
数字孪生集成与数据融合用于增强光伏系统管理:系统性文献综述
数字孪生(DT)技术与光伏(PV)行业的融合代表着能源管理、优化、服务和维护方面的重大进步。本综合文献综述旨在加强光伏行业对数字孪生技术和数据融合技术的理解、分类和采用,以指导未来的研究工作。综述根据数据连接和集成属性,将光伏模型分为三种类型:数字模型、数字影子和数字双胞胎。报告认为数据融合是开发复杂数字电视模型的关键使能技术,并提出了将数据融合与数字电视系统集成的框架。论文详细分析了目前流行的光伏建模方法,指出了这些方法的优势和局限性,为行业从业人员提供了宝贵的资源。论文的结论是,数字模型和数字阴影对于初始光伏系统预测和监控非常有效,而完全集成的 DT 模型则具有显著优势,包括实时分析、预测能力和主动系统优化。然而,实施和维护 DT 模型需要先进的数据分析技术、高昂的计算成本和强大的系统安全性,这些都是未来研究工作需要解决的重要挑战。
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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来源期刊
CiteScore
8.60
自引率
0.00%
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0
审稿时长
8 weeks
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