利用物联网、数字孪生和机器学习进行办公大楼智能能源审计:系统的文献综述和建议

Ali Zaenal Abidin , I Ketut Agung Enriko , Aloysius Adya Pramudita
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引用次数: 0

摘要

能源审计在提高办公建筑的能源效率和减少碳排放方面发挥着关键作用。然而,传统的审计往往受到分散的见解、缺乏系统级监控、建立能源基线和对居住者行为的不充分结合的影响。为了应对这些挑战,本研究对物联网(IoT)、机器学习(ML)和数字孪生(DT)技术在能源审计领域的最新应用进行了系统的文献综述。该评估以PRISMA方法为指导,分析了2022年至2024年间发表的11项精选研究,结果显示,虽然机器学习在预测建模中占据主导地位,但物联网和DT在提供综合效率建议方面仍未得到充分利用。分析指出了三个关键的工程缺陷:乘员行为数据的有限使用,缺乏连续的能源基线建模,以及缺乏能够生成实时效率建议的系统。作为回应,本文提出了一种新的基于人工智能的能源审计框架,该框架将通过物联网进行的实时监控与机器学习驱动的分析和优化相结合,并可选择支持基于机器学习的模拟。拟议的框架旨在实现与ISO 50000标准一致的持续系统级审计,为建筑管理人员提供诊断效率低下和实施节能行动的实用途径。在真实办公环境中验证模型、扩展输入变量以及与楼宇自动化系统集成策略是实现智能和可扩展的能源审计解决方案的进一步重要研究。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Leveraging IoT, digital twin and machine learning for smart energy audit in office building: a systematic literature review and recommendations

Leveraging IoT, digital twin and machine learning for smart energy audit in office building: a systematic literature review and recommendations
Energy audits play a pivotal role in improving energy efficiency and reducing carbon emissions in office buildings. However, conventional audits often suffer from fragmented insights, lack of system-level monitoring, establishing energy baseline, and insufficient incorporation of occupant behavior. To address these challenges, this study conducts a systematic literature review of recent applications of Internet of Things (IoT), machine learning (ML), and digital twin (DT) technologies in the energy audit domain. The review, guided by PRISMA methodology, analyzes eleven selected studies published between 2022 and 2024, revealing that while ML dominates in predictive modeling, IoT and DT remain underutilized in delivering integrated, efficiency recommendations. The analysis identifies three key engineering gaps: limited use of occupant behavior data, absence of continuous energy baseline modeling, and lack of systems capable of generating real-time efficiency recommendations. In response, this paper proposes a novel AIoT-based energy audit framework that combines real-time monitoring via IoT with ML-driven analytics and optimization, supported optionally by DT-based simulation. The proposed framework aims to enable continuous, system-level audits aligned with ISO 50000 standards, offering practical pathways for building managers to diagnose inefficiencies and implement energy-saving actions. Validating the model in real-world office environments, expanding input variables, and integration strategy with building automation systems are further important study to realize intelligent and scalable energy audit solutions.
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