将基于机器学习的能源监测方法应用于意大利一家医疗机构的暖通空调系统用电需求

IF 5.4 Q2 ENERGY & FUELS
Marco Zini, Carlo Carcasci
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引用次数: 0

摘要

建筑能耗是欧洲整体能源需求的重要组成部分。开发能够在出现问题时(如系统组件性能轻度和逐步下降)及时向用户发出警报的诊断方法,对于楼宇的智能管理至关重要。基于机器学习的楼宇能源监测是识别楼宇能源需求行为中细微异常的可靠方法。本研究介绍了在机器学习预测模型的基础上开发可靠监测方法的系统性程序的应用情况,同时确保对用户知识的要求降至最低。所提出的方法适用于意大利一家实际医疗机构的供暖、通风和空调系统各组件的电力需求。利用获得的模型来应用建筑能源监测方法,评估其突出建筑能源需求行为轻微变化的能力。考虑到在特定系统组件上应用该方法意味着需要增加数据收集的技术和经济投入,目前的工作旨在评估此类应用的益处。由于其可重复性高,且相对简单地集成到集中式建筑能源管理系统中,所提出的方法为加强建筑能源系统的智能管理提供了一个实用的解决方案。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Machine learning-based energy monitoring method applied to the HVAC systems electricity demand of an Italian healthcare facility

Machine learning-based energy monitoring method applied to the HVAC systems electricity demand of an Italian healthcare facility

The buildings energy consumption is a great part of Europe's overall energy demand. The development of diagnostic methods capable of promptly alerting users in case of issues (e.g. mild and progressive decrease in systems components performance) is crucial for the smart management of buildings. Machine learning-based building energy monitoring is a reliable approach for identifying subtle anomalies in the building energy demand behaviour. This study presents the application of a systematic procedure to develop a reliable monitoring method based on machine learning predictive models, ensuring minimal user knowledge requirements. The proposed method applied to the electricity demand of various components of the heating, ventilation and air conditioning system of a real Italian healthcare facility. The obtained models are exploited to apply the building energy monitoring method, assessing its capability to highlight mild changes in building energy demand behaviour. Considering that its application on specific system components implies an increased technical and economic effort to carry out data collection, the present work is aimed at assessing the benefits of such applications. Because of its high reproducibility and relatively simple integration into centralized building energy management systems, the proposed method offers a practical solution to enhance the smart management of building energy systems.

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来源期刊
Smart Energy
Smart Energy Engineering-Mechanical Engineering
CiteScore
9.20
自引率
0.00%
发文量
29
审稿时长
73 days
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